Preprint
Review

Combining AI Tools with Non-destructive Technologies for Crop-based Food Safety: A Comprehensive Review

Altmetrics

Downloads

124

Views

74

Comments

0

A peer-reviewed article of this preprint also exists.

Submitted:

24 October 2023

Posted:

26 October 2023

You are already at the latest version

Alerts
Abstract
On a global scale, food safety and security aspects entail to be considered throughout the farm to fork continuum considering food’s supply chain. Generally, the agri-food system is a multiplex network of interconnected features and processes, with a hard predictive rate, where maintaining the food’s safety is an indispensable element and is part of the Sustainable Development Goals (SDGs). It has led the scientific community to develop advanced applied analytical methods, such as Machine learning (ML) and Deep Learning (DL) techniques applied for assessing foodborne diseases. The main objective of this paper is to contribute to the development of the consensus version of ongoing research about the application of artificial intelligence tools in the domain of food-crops safety from an analytical point of view. Writing a comprehensive review for a more specific topic can also be challenging, especially when searching within the literature. To our knowledge, this review is the first to address this issue. This work consisted of conducting a unique and exhaustive study of the literature, using our TriScope Keywords-based Synthesis methodology. All available literature related to our topic was investigated according to our criteria of Inclusion and Exclusion. The final count of data papers was subject to deep reading and analysis to extract the necessary information to answer our research questions. Although many studies have been conducted, limited attention has been paid to outlining the applications of AI tools combined with analytical strategies for crop-based food safety specifically.
Keywords: 
Subject: Biology and Life Sciences  -   Food Science and Technology

1. Introduction

The “One health” is a very distinct concept unifying soil, plant, and human health for a flourishing and sustainable ecosystem. This approach can also be applied on ensuring food safety and security. Ending hunger and ensuring access to safe, nutritious and sufficient food all year round by all people are part of the SDG3 and SDG2 goals to be achieved by 2030. Nonetheless, multiple challenges and issues are increasingly making this mission impossible to accomplish [1]. As a matter of fact and according to statistical studies, humanity is expecting an enormous increase in the global population, reaching 9.7 billion individuals by 2025. Surely, ensuring that they all have access to safe and nutritious food becomes more challenging. The increasing demand for crop-based Food in the market is due to multiple factors. Mainly, the propaganda of plant-based diets [2], the transition of human diets in society, also the factor of poor diversity in crop-food consumption while thousands of crops exist. These factors impacted diversity concerning crops, and lightly scientists have been shedding light on orphan crops, which are crops not traded internationally, but would have been important for regional food security [3].
In the concrete, it has always been a big challenge; food system dates back several decades, with a tendency to evolve continuously, depending on its economic, social, cultural, and environmental factors, along with several external and internal variables [4]. These complex interdependent and interconnected factors impact the global agrifood system, between the farm-to-fork continuum and various environmental and socioeconomic factors become increasingly more evident [5]. Hence, food security, quality, and safety, now more than ever, are depending on the entire food supply chain from early production to market accessibility. A food-borne disease is referred to as food contamination, on account of the presence of hazardous contaminants, that can cause human body illnesses. They are divided into three groups namely biological, chemical, and physical contaminants, based on the pollutant and the process by which they enter the food product [6]. For example, during crop cultivation, due to contaminated soil (animal manure or chemical fertilizers), as well as the water used for irrigation of produce (groundwater, recovered rainfall, surface water, or re-utilized wastewater) [7,8]. Food contamination represents a big challenge because of its large impact, being related to the whole food supply chain. In order to protect consumers from unsafe foods, standards are required to establish a monitoring system to reduce chemical and microbiological food contamination [9], including all food chain participants, such as farmers, processors, transporters, retailers, and consumers [4]. Even though there are many guidelines to follow, only a fraction of them is followed. In many cases, individuals neglect simple practices, such as proper hand-washing methods and the good use of gloves, which leads to serious food poisoning[10].
It was said that transmission of viruses through food matrices is unlikely, Covid-19 pandemic has forced us to think about the technological preparedness to use these smart technologies, which avoid human-to-human and human-to-food contact during food processing. Hence there is a need for technological innovation combining analytical strategies with AI tools, taking into consideration economic and feasibility challenges [11]. Artificial intelligence (AI) is primordial for technological advances, developing computational tools to provide sustainable solutions for food security and safety [12]. There is potential applications of machine vision systems in addition to analytical strategies for more accurate, and lower-cost techniques for contaminants detection in food [13].
The present work proposes a unique methodology that was developed after a careful investigation of the literature on how to conduct a high-quality comprehensive review. For the data collection, which is detailed later on, the search process is carried out in three major databases: Scopus, Web of Science, and IEEE Xplore. Notwithstanding the fewer databases implicated, the proposed approach is based on executing multiple query searches in each one, leading to an in-depth and exhaustive investigation. The remainder of this paper is organized as follows. In Section 2, we start by investigating related and/or similar works to our topic of research. Section 3 holds the experimental setup, in which experiments, procedures, and parameter settings are described. Section 4 present and discuss relevant information extracted from collected papers. In Section 5, we highlight further details concerning gaps in research and challenges. Finally, Section 6 draws conclusions, final remarks and our suggested future research directions.

2. Background

Recent Advances have been emerging in chemical analytical strategies depending on the variety of the studied food matrices and with a constant quest to find the most suitable technique to investigate certain aspects of a compound and ascertain its consistency or structure.

2.1. Spectroscopy for Food Safety and Quality

Spectroscopic methods serve as analytical tools to identify food’s composition, germs, pests, diseases, and adulteration [14]. The following listing presents the most common techniques within the literature: 1.Infrared Spectroscopy, 2.Raman Spectroscopy, 3.Nuclear Magnetic Resonance (NMR) spectroscopy,4.Ultraviolet–Visible Spectroscopy (UV-vis). Infrared spectroscopy using the Fourier-transform infrared (FTIR) is often employed. The Mid-infrared (MIR) region covers an area between 4000 and 400 cm-1 [15]. A soil’s composition, characteristics, and organic matter may all be found via MIR spectroscopy. Also, The diffuse reflectance infrared Fourier transform (DRIFT) method may identify the chemical characteristics of humus and soil. Besides Attenuated total reflectance (ATR), which can identify organic materials in soil [16]. Anisidine, which is produced during the oxidation of food, is frequently measured using UV-visible spectroscopy to assess the quality of oil [17]. Moreover, fluorescence is a property shared by a large number of microorganisms, including their colonies, making it simple to identify any bacteria by looking at their fluorescence spectra [18,19]. Tryptophan, riboflavin, and lumichrome are three different forms of fluorophores found in yogurt, and their presence enables fluorescence spectroscopy to assess the yogurt’s quality [20]. Honey is a substance produced by bees from floral nectar, containing phenolic chemicals that are byproducts of the phenolic acid found in the flower and as it is packaged and transported, its qualities alter [21]. Fluorescence spectroscopy can quantify the concentration of phenolic chemicals. During processing and storage, mycotoxins and fungus are found in grains using MIR spectroscopy [22]. On the other hand, carbohydrates’ structure can change during storage, especially in the presence of water, which can be identified using Raman spectroscopy. This technique characterizes and quantifies the lipid content of foods [23]. NMR spectroscopy can monitor the ripening, drying, and adulteration of food components as well as determine the genotype responsible for a certain phenotype of the grapes used to create wine. As a result, NMR spectroscopy may offer information on mixtures of metabolites [24]. Infrared or Raman fingerprint, are the outcomes of observations made on a large number of objects or samples with a wide variety of characteristics (variables, like the absorbance at various wave-numbers or wave-number shifts) from a monochromatic light source for FTIR and Raman, respectively [25]. Therefore, since the exponential rise in computing power and the capacity to gather, store, and analyze enormous volumes of data, Machine learning (ML) systems can improve the potential to extrapolate information from complicated spectrum data.

2.2. Integrating AI Tools for Food Safety and Quality Analysis

The development of analytical strategies for food and beverage assessments is a crucial step in ensuring food safety and public health. To this end, many methodological procedures and technologies have been developed, including imaging, odour, taste, electromagnetic sensing [26]. For microorganisms detection, spectroscopic and spectral imaging techniques that apply infrared spectroscopy, surface-enhanced Raman spectroscopy, terahertz time-domain spectroscopy, laser-induced breakdown spectroscopy, hyperspectral imaging, and multispectral imaging, have proven to be rapid and nondestructive [27]. Magnetic surface-enhanced Raman scattering (SERS) nanoprobes achieved high specifity when dealing with separation and detection of multiple pathogens in complex food matrices [28]. Furthermore, the usage of electronic nose to ensure the safety of processed products have been widely inspected. For example, ensuring the originality of saffron products using the electronic nose. Although, this technique wouldn’t have reach good success rate (around 87 % and 100 %) if not coupled with the sensor data collected from a data acquisition card, also the usage of classification methods, PCA and Backpropagation Neural Network algorithms [26]. The integration of more effective algorithms should be used for spectral data processing and microorganism reference database building. Employing new algorithms to select informative wavelengths across the whole wavelength range is important [27]. In fact, the technology integration generally outperforms independent systems in terms of classification and quality evaluation [26]. For example, when dealing with pathogenic microbes’ detection and identification in food samples, the inclusion of mi-crofluidic platform is important, such as antibodies and aptamers on the lab-on-a-chip device. Consequently, the resultant sensors might reduce the interference from food matrices and provide the selective and sensitive detection of the target microorganism in situ [27]. On the other hand, Computer Vision System (CVS) have been widely applied in the food industry for their quick, prudent, steady, precise and non-intrusive usage. CVSs are able to extract various characteristics, such as colour, image texture, shape and scale, and can be assessed directly by non-destructive frameworks [26].
The implementation of hyperspectral imaging (HSI) systems covers various food processes phases and during all manufacturing phases, with the ability to control the quality and safety of these processed foods [29]. Imaging and spectroscopic-based techniques are non-destructive approaches ensuring high potential in the quality and safety inspection of many agri-food products, but the challenges resides within the classification, especially for crops within the same family, also their high cost compared to other conventional analytical methods and their high dimensional nature where most studies concentrate more on hyperspectral information than spatial information [29]. More work should be done on the algorithms and chemometric methods directed towards reducing the dimensionality of these types of data, and speed up the computation process while improving both the performance and robustness [29]. THz spectroscopy techniques, such as terahertz time-domain spectroscopy (THz-TDS), terahertz time-resolved spectroscopy (TRTS), and terahertz emission spectroscopy (TES), ensure both quality and security inspection of agricultural products and food. Along with these technologies, adding ML tools serve as tools for image preprocessing and for qualitative and quantitative multivariate data analysis, also for image super-resolution, signal reconstruction and compressive sensing in order to improve signal-to-noise ratio and reduce the dimensionality of data, hence accuracy improvement [30]. Some extensively used classical methods of spectral pre-processing include smoothing/derivative, standard normal variate (SNV), multiplicative scatter correction (MSC), Fourier transformation (FT), wavelet transform (WT), orthogonal signal correction (OSC), and net analyte signal (NAS). The literature suggests that building an ensemble method, by integrating these pre-processing techniques into multivariate calibration steps, for example partial least squares (PLS), is rather a more efficient approach [31]. In many case studies for the quantification of honey adulteration, spectroscopy and hyperspectral imaging provided fast and nondestructive detection with no need for sample preparation once coupled with ML models, also with effective low-cost optic fiber sensors [32].
In food contamination, imaging and spectroscopic techniques are the optimal alternative tools to wet chemistry methods for their non-destructive nature while working with fungi and toxins. Near infrared spectroscopy (NIRS), mid-infrared spectroscopy (MIRS), colour imaging (CI), hyperspectral imaging (HSI) and fluorescence spectroscopy/imaging (FS/FI), provide datasets that can be further investigated for classification and determination (static and on/in-line real-time detection) [33]. Analytical chemistry-based and biology-based methods are majorly used for the detection and quantification of mycotoxins and mycotoxigenic fungi. However, these methods face some challenges being time-consuming, expensive and laborious. Developing modern approaches that are rapid, non-destructive and more efficient especially in applications within the food industry, is highly recommended. Hence, recent studies are calling for the combination between hyperspectral imaging (HSI), Raman spectroscopy, Fourier transform infrared spectroscopy and AI tools [34]. These methods have been widely used for the inspection of contaminated nuts and dried fruits. Although, the treatment and calibration of large data sets using these methods can be time-consuming, due to low-speed HSI and MSI to assess whole samples. Consequently, improving their accuracy, reliability, and detection speed, present a need for developing novel and effective chemometrics algorithms [33]. Chemometric methods are in fact becoming the main focus in many fields, especially in spectral analysis applications. Chemometrics are very useful in extracting informative features from the spectral data, while maintaining robustness and accuracy [31]. HSI systems will hopefully find more valuable applications in the future evaluation of food processes [29]. Furthermore, higher performance of terahertz technology can be achieved when combined with machine learning approaches [30].
AI development in data mining made interesting breakthroughs especially with DL being applied in analyzing spectral data of food and agricultural products. In fact, deep learning approaches allow for less-laborious work with improved precision [35]. IRS and HSI techniques combined with AI tools have potential in promoting the development of quality evaluation of cereals, which are one of the top consumed crops globally [36]. The integration of convolutional neural networks (CNNs) in the qualitative and quantitative analysis of spectra by extracting the micro- and macro features through multiple convolution and pooling layers. DL-spectroscopic sensing techniques have shown promising results for quality evaluation of food and agro-products, in identification, geographical origin detection, adulteration recognition, bruise detection, and component content prediction for crops [35]. Applying CNNS helps in avoiding secondary workload, although related problems still need further explorations, such as network scale, optimal selection of parameters, overfitting, and model interpretability, which represent a dilemma in today’s AI topics [31]. Table 1 highlights the most recent and quality papers coupling the usage of analytical strategies with ML approaches for a diversity of food safety and quality purposes.

3. Materials and Methods

Writing a quality review paper is a very important step in ones research project, it helps in clarifying the state of knowledge, explaining apparent contradictions, identifying needed research, and creating a consensus where none existed before [44]. In literature, there are three major types of review papers, comprehensive(including systematic reviews), semi-systematic and integrative, depending on its purpose, research questions, search strategy and data analysis. However, they all generally aim at resolving conceptual ambiguities, by providing an integrated, synthesized overview of the current state of the art, also presenting research insights, existing gaps, and future research directions [45]. A good literature review must offer both depth and rigor, hence demonstrating an appropriate strategy for selecting articles and capturing data and insights is crucial [46]. Hence we propose our own methodology for for a comprehensive review: TriScope Keywords-based Synthesis, which can be further generalized to a MultiScope Keywords-based Synthesis methodology as represented in Figure 1. To this end, the following section describes in detail the process and methodology that we developed to execute this study, taking into consideration the guidelines of writing a Review paper [45,46].

3.1. Topic Formulation

This study reviews the state of the art regarding the incorporation of AI tools in solving problematics related to analytical procedures and advanced chemical methods applied to ensure food contamination prevention within the food supply chain. For this matter, we propose the following questions:
  • What are the analytical strategies that are mainly used for crop-food safety and which techniques were dominantly incorporated?
  • What are the AI-based tools that were embodied to ensure crop-food safety?
  • Did these AI-based systems prove to be beneficial in research and industry? To what degree they proved to be explainable or/and interpretable ?
Depending on the type of questions and the targeted scientific audience, the collected papers are analyzed in different manners, either pursuing a qualitative or quantitative analysis. In our case, and while this topic combines three different fields of research, we focused on both quantitative and qualitative analysis, in order to allow people from either fields to comprehend the general outline of this work. In order to answer these questions, an efficient and in depth analysis of the available literature regarding the addressed topic has been generated and fully explained in the following section.

3.2. Study Design

Academic articles are available through a plethora of scholarly databases. Web Of Science (WOS), Scopus and IEEE Xplore contain, combined, over 254 million records with a variety of influential academic journals, and highly recognized by the international academic community. They cover a wide variety of topics, where many papers from different publishers are visible, also they allow access to diverse databases, with the possibility of filtering the search based on personalized search criteria. This paper combines the above three databases as the main source of articles. In order to answer our proposed questions related to our topic of research, we followed a thorough search methodology as visualized in Figure 2, considering the three above-mentioned databases for paper retrieval. The whole process of data collection, including key words identification, search strings generation, and inclusion/exclusion, was performed from October 2022 to January 2023.
These processes were conducted using two approaches, one for WOS and IEEE Xplore databases which depended mainly on manual search, and an API-based approach for Scopus database, (see Figure 2 and Figure 3). Figure 2 summarizes the whole process of data collection for all three databases. All searches targeted papers of the same timeline, which is from January 1st, 2000 to September 30th, 2022. We targeted a larger time lapse in order to investigate thoroughly the problematic and explore the development of interest towards it.

3.2.1. WOS and IEEE Xplore Data Collection

The first step is the pre-search phase. Firstly, we collected the most convenient and in-domain concepts and technical words to describe this topic by investigating the most relevant literature and executing manual preliminary searches on the Google Scholar database, in order to define our keywords. The List of keywords that were used during our search process, divided into three groups:
  • Food: food, foodborne, crop, cereal and toxin.
  • Analytical Strategies: analytical strategies, biochemistry, chemical analysis, spectroscopy, omics, immunosensor and biosensor.
  • AI tools: artificial intelligence, machine learning, deep learning, neural networks and computer vision.
These keywords were then divided into three columns which represent the three main parts of this research problematic. The first one for AI, the second one for analytical strategies, and the third one for food safety, keywords. Secondly, we organized and ran a simple algorithm on Python, which was able to produce all possible combinations between these words from the three columns, to have as an out-put a three-word search string entry, stored in a xlxs. format file. The order of these words isn’t important in this case, and the final query string is a combination of three words from three lists of keywords corresponding to food, AI tools and chemical analytical strategies. The final count of these generated search string was 175 query string, written as follows:
S e a r c h S t r i n g   1 = " A r t i f i c i a l i n t e l l i g e n c e " + " A n a l y t i c a l s t r a t e g i e s " + " c e r e a l " S e a r c h S t r i n g   2 = " A r t i f i c i a l i n t e l l i g e n c e " + " A n a l y t i c a l s t r a t e g i e s " + " c r o p " S e a r c h S t r i n g   3 = " A r t i f i c i a l i n t e l l i g e n c e " + " A n a l y t i c a l s t r a t e g i e s " + " f o o d " S e a r c h S t r i n g   4 = " A r t i f i c i a l i n t e l l i g e n c e " + " A n a l y t i c a l s t r a t e g i e s " + " f o o d b o r n e " S e a r c h S t r i n g   5 = " A r t i f i c i a l i n t e l l i g e n c e " + " A n a l y t i c a l s t r a t e g i e s " + " t o x i n " S e a r c h S t r i n g   6 = " A r t i f i c i a l i n t e l l i g e n c e " + " B i o c h e m i s t r y " + " c e r e a l " S e a r c h S t r i n g   175 = " N e u r a l n e t w o r k s " + " s p e c t r o s c o p y " + " t o x i n "
These search queries were inserted as described previously for each search in the WOS database, but they were converted to another form using the and Boolean operator and the All Metadata filter in order to execute the manual search in IEEE Xplore, which leads to:
S e a r c h S t r i n g 1 = ( " A l l M e t a d a t a " : A r t i f i c i a l i n t e l l i g e n c e ) A N D ( " A l l M e t a d a t a " : A n a l y t i c a l s t r a t e g i e s ) A N D ( " A l l M e t a d a t a " : c e r e a l )
Along with these specific key-words combinations, we used databases filters to display results based on some specific criteria, which are : the timeline (2000-2022) and papers status (only published papers).
In both databases a total of 175 searches were executed manually between the 30-th of October 2022 and the 4-th of November 2022 (Figure 3). The outcome of each search resulted in a number of results ranging between 0-63 results for IEEE Xplore, and 0-235 results for WOS. Each search outcome was stored as a link in a xls. format file with its according search string, sorted from the highest to the lowest, in order to eliminate search strings that didn’t generate any results. These links needed to be briefly inspected on a short period to avoid any research papers being added on the databases. Table 2 highlights the six search strings that provided the highest numbers of results for both databases (more than 30 results).

3.2.2. Scopus Data Collection

To retrieve data from Scopus database, an open access Application Protocol Interface (API) was used in Python. Three string lists were defined, corresponding to Food, Chemical Analytical strategies and AI tools keywords as mentioned before. Subsequently, a list of four subjects is considered, containing Engineering (ENG), Chemistry (CHEM), Biology (BIO) and Agriculture (AGRI). To formulate one specific query, we loop over all possible combinations of keywords formatted in accordance to the standard Scopus advanced search. Then, we retrieve corresponding data for each query in the four considered subjects. Then, we store the obtained metadata in four .xlsx files corresponding to the considered subjects (Figure 3).

3.2.3. Inclusion and Exclusion Process

The three databases resulted in a total number of 3166 results as raw data, that went through the same scanning process. The inclusion/exclusion (Inc/Exc) phase consisted of three major sub-phases, each one bases its outcome on distinguished and precise criteria of selection:
  • Inc/Exc 1: A first selection based on the relevance of these papers to the topic, after thoroughly reading the titles, key words, and abstracts. The number of papers included were 30, 166 and 242, for IEEE Xplore, WOS and Scopus databases respectively, based on these criteria.
  • Inc/Exc 2: A further evaluation of these collected papers was conducted based on their original language and availability online, also removing duplicates, which ended with a total of 109 papers included.
  • Inc/Exc 3: A full reading process was thoroughly executed to decide which of these papers are the most relevant to our topic of research, leaving 69 papers.
The final count is 69 research papers that have met all the search criteria, and were further organized in Mendeley. This software will serve as a tool for storing and analyzing these papers. The Inc/Exc process is represented in details in Figure 4.

4. Data Description and Analysis

As discussed in the previous Section 3, our methodology output is 69 papers, including articles and reviews, as detailed in Table 3. The Figure 5 also showcases a map of these papers with possible connections and links, highlighting first authors and the according year of publication, also numbers of citations for each one. This map was produced using the free-online tool ConnectedPapers, after manually uploading our collected papers. The following data results representation will focus on quantity and quality analysis, as set forth in the upcoming parts.
Table 3. This table represents all collected 69 papers, where A stands for Articles and R stands for Reviews.
Table 3. This table represents all collected 69 papers, where A stands for Articles and R stands for Reviews.
Type Year Title & Ref. First Author Publisher
A 2001 [47]Detection of defects on selected apple cultivars using hyperspectral and multispectral image analysis Mehl ASABE
A 2002 [48]Differentiation and detection of microorganisms using Fourier Transform infrared photoacoustic spectroscopy Irudayaraj Elsevier
A 2003 [49]Rapid detection of foodborne microorganisms on food surface using Fourier transform Raman spectroscopy Yang Elsevier
A 2005 [50]Differentiation of food pathogens using FTIR and artificial neural networks Gupta ASABE
A 2006 [51]Identification and quantification of foodborne pathogens in different food matrices using FTIR spectroscopy and artificial neural networks Gupta ASABE
R 2007 [52]Applications of Artificial Neural Networks (ANNs) in Food Science Huang Taylor & Francis
R 2007 [53]Supervised pattern recognition in food analysis Berrueta Elsevier
A 2008 [54]Cortical Networks Grown on Microelectrode Arrays As a Biosensor for Botulinum Toxin Scarlatos Wiley-Blackwell
A 2008 [55]Detecting single Bacillus spores by surface enhanced Raman spectroscopy He Springer
A 2008 [56]Self-organizing algorithm for classification of packaged fresh vegetable potentially contaminated with foodborne pathogens Siripatrawan Elsevier
A 2010 [57]Raman Spectroscopy-Compatible Inactivation Method for Pathogenic Endospores Stöckel American society for Microbiology
R 2012 [58]Application of Hyperspectral Imaging in Food Safety Inspection and Control: A Review Feng Taylor & Francis
A 2013 [59]Characterization of food spoilage fungi by FTIR spectroscopy Shapaval Wiley-Blackwell
A 2013 [60]Detection of aflatoxin contaminated figs using Near-Infrared (NIR) reflectance spectroscopy Güneş IEEE
R 2013 [61]Hyperspectral and multispectral imaging for evaluating food safety and quality Qin Elsevier
R 2015 [62]Analytical techniques combined with chemometrics for authentication and determination of contaminants in condiments: A review Reinholds Elsevier
R 2016 [63]Applications of computer vision for assessing quality of agri-food products: a review of recent research advances Ma Taylor & Francis
R 2016 [64]Data mining derived from food analyses using non-invasive/non- destructive analytical techniques; determination of food authenticity, quality & safety in tandem with computer science disciplines Ropodi Elsevier
R 2016 [65]Image analysis operations applied to hyperspectral images for non-invasive sensing of food quality - A comprehensive review ElMasry Science Direct
A 2017 [66]Early Warning Modeling and Application based on Analytic Hierarchy Process Integrated Extreme Learning Machine Geng IEEE
A 2017 [67]Feasibility of Non-Destructive Internal Quality Analysis of Pears by Using Near-Infrared Diffuse Reflectance Spectroscopy Shen IEEE
A 2018 [68]FT-IR Hyperspectral Imaging and Artificial Neural Network Analysis for Rapid Identification of Pathogenic Bacteria Lasch American Chemical Society
Table 4. Continuity of Table 3.
Table 4. Continuity of Table 3.
Type Year Title & Ref. First Author Publisher
A 2019 [69]An Approach for the Development of a Sensing System to Monitor Contamination in Stored Grain Kaushik IEEE
R 2019 [70]Application of Deep Learning in Food: A Review Zhou Wiley-Blackwell
A 2019 [71]Machine learning algorithms for the automated classification of contaminated maize at regulatory limits via infrared attenuated total reflection spectroscopy Öner Wageningen Academic publishers
A 2019 [72]Quantitative assessment of zearalenone in maize using multivariate algorithms coupled to Raman spectroscopy Guo Elsevier
A 2019 [73]Raman Spectroscopy Classification of Foodborne Pathogenic Bacteria Based on PCA-Stacking Model Wan-dan IEEE
A 2019 [74]Rapid determination of aflatoxin B1 concentration in soybean oil using terahertz spectroscopy with chemometric methods Liu Elsevier
A 2019 [75]Terahertz Spectroscopy Determination of Benzoic Acid Additive in Wheat Flour by Machine Learning Sun Springer
R 2020 [76]An Overview on the Applications of Typical Non-linear Algorithms Coupled With NIR Spectroscopy in Food Analysis Zareef Springer
A 2020 [77]Application of deep learning and near infrared spectroscopy in cereal analysis Le Elsevier
A 2020 [78]Arcobacter Identification and Species Determination Using Raman Spectroscopy Combined with Neural Networks Wang American Society for Microbiology
A 2020 [79]Deep learning networks for the recognition and quantitation of surface-enhanced Raman Spectroscopy Weng The Royal Society of Chemistry
A 2020 [80]Development of Machine Learning & Edge IoT Based Non-destructive Food Quality Monitoring System using Raspberry Pi Sahu IEEE
R 2020 [81]Emerging techniques for determining the quality and safety of tea products: A review Yu Wiley-Blackwell
R 2020 [82]Machine learning applications to non-destructive defect detection in horticultural products Nturambirwe Science Direct
A 2020 [83]Multi-view Learning for Subsurface Defect Detection in Composite Products: a Challenge on Thermographic Data Analysis Wu IEEE
A 2020 [84]On-line prediction of hazardous fungal contamination in stored maize by integrating Vis/NIR spectroscopy and computer vision Shen Elsevier
A 2020 [85]Optical detection of aflatoxins B in grained almonds using fluorescence spectroscopy and machine learning algorithms Bertania Elsevier
A 2021 [86]Achieving a robust Vis/NIR model for microbial contamination detection of Persian leek by spectral analysis based on genetic, iPLS algorithms and VIP scores Rahi Elsevier
R 2021 [87]Application of Artificial Intelligence in Food Industry—a Guideline Mavani Springer
R 2021 [88]Applications of THz Spectral Imaging in the Detection of Agricultural Products Ge MDPI
R 2021 [89]Bioimpedance data statistical modelling for food quality classification and prediction Rivola IEEE
A 2021 [90]Characterisation and Classification of Foodborne Bacteria Using Reflectance FTIR Microscopic Imaging Xu MDPI
A 2021 [91]Combining optical spectroscopy and machine learning to improve food classification Magnus Elsevier
Table 5. Continuity of Table 3.
Table 5. Continuity of Table 3.
Type Year Title & Ref. First Author Publisher
A 2021 [92]Deep Learning for Rapid Identification of Microbes Using Metabolomics Profiles Wang MDPI
A 2021 [93]Hyperspectral image processing for the identification and quantification of lentiviral particles in fluid samples Gómez-González Nature Publishing Group
A 2021 [94]Identification of the apple spoilage causative fungi and prediction of the spoilage degree using electronic nose Guo Wiley-Blackwell
A 2021 [95]Investigation of nonlinear relationship of surface enhanced Raman scattering signal for robust prediction of thiabendazole in apple Li Elsevier
A 2021 [96]Metaheuristic Optimization to Improve Machine Learning in Raman Spectroscopic based Detection of Foodborne Pathogens Vakilian IEEE
A 2021 [97]Microwave Sensing for Food Safety: a Neural Network Implementation Ricci IEEE
A 2021 [98]Non-destructive detection of foreign contaminants in toast bread with near infrared spectroscopy and computer vision techniques Yin Springer
A 2021 [99]Raman spectroscopy combined with machine learning for rapid detection of food-borne pathogens at the single-cell level Yan Elsevier
R 2021 [100]Recent advances in assessing qualitative and quantitative aspects of cereals using nondestructive techniques: A review Zareef Elsevier
A 2021 [101]Trace Identification and Visualization of Multiple Benzimidazole Pesticide Residues on Toona sinensis Leaves Using Terahertz Imaging Combined with Deep Learning Nie MDPI
A 2022 [102]A Novel Method for Carbendazim High-Sensitivity Detection Based on the Combination of Metamaterial Sensor and Machine Learning Yang MDPI
R 2022 [103]Advances in Machine Learning and Hyperspectral Imaging in the Food Supply Chain Kang Springer
A 2022 [104]Component spectra extraction and quantitative analysis for preservative mixtures by combining terahertz spectroscopy and machine learning Yan Elsevier
R 2022 [105]Design of Food Safety Supervision System in the Background of Big Data Zhang IEEE
A 2022 [106]Detection and quantification of peanut contamination in garlic powder using NIR sensors and machine learning Rady Academic Press Inc.
A 2022 [107]Domain Adaptation for In-Line Allergen Classification of Agri-Food Powders Using Near-Infrared Spectroscopy Bowler MDPI
A 2022 [108]Investigation of reflectance, fluorescence, and Raman hyperspectral imaging techniques for rapid detection of aflatoxins in ground maize Kim Elsevier
A 2022 [109]Low-Resolution Raman Spectroscopy for the detection of contaminant species in algal bioreactors Adejimi Elsevier
A 2022 [110]Machine learning-based typing of Salmonella enterica O-serogroups by the Fourier-Transform Infrared (FTIR) Spectroscopy-based IR Biotyper system Cordovana Elsevier
A 2022 [111]Markov Transition Field Combined with Convolutional Neural Network Improved the Predictive Performance of Near-Infrared Spectroscopy Models for Determination of Aflatoxin B1 in Maize Wang MDPI
Table 6. Continuity of Table 3.
Table 6. Continuity of Table 3.
Type Year Title & Ref. First Author Publisher
R 2022 [112]Potential application of hyperspectral imaging in food grain quality inspection, evaluation and control during bulk storage Aviara Elsevier
R 2022 [113]Recent Advances and Applications of Rapid Microbial Assessment from a Food Safety Perspective Pampoukis MDPI
R 2022 [114]Recent Progress in Spectroscopic Methods for the Detection of Foodborne Pathogenic Bacteria Hussain MDPI
A 2022 [115]Spectroscopy and imaging technologies coupled with machine learning for the assessment of the microbiological spoilage associated to ready-to-eat leafy vegetables Manthou Elsevier

4.1. Quantitative Analysis

Although we explored a larger period of time, from January 1st 2000 to September 30th 2022, most of our collected papers were between 2019 and 2022. These papers were generally published in 14 different publishers, which are well classified globally and highly recognised, as in Figure 6.
Most of the journals are highly ranked with a quartile of 1 (Q1), which are divided as article papers and review papers, some of these papers mainly published by IEEE are conference papers as in Figure 7.
On the other hand, Figure 8 highlights the distribution of articles papers only, in a color-coded format, each color refers to a field of study. Although, our keywords were mainly extracted from three different fields of research, after the papers collection, another distribution emerged. These fields are: Artificial Intelligence (including computer vision, machine learning, etc.), Analytical Strategies, Biological Sciences, and Food Sciences.
We will discuss these papers’ contents while trying to answer our Research questions(RQs), which are considered as the qualitative analysis of our results. Firstly, We divide the discussion into two parts, one for review papers and all related types, and the second one for article papers with experiments and applications. Then, the outcome from discussing these review papers will help as a reference while discussing the articles.

4.2. Qualitative Analysis

Over the last decade, there has been a rapid development of Artificial Intelligence (AI) tools for nondestructive evaluation of food and agricultural products. However, a key aspect of the emerging AI tools is the pre-processing phase, where acquired data is adequately prepared for further analysis and decision-making using, generally, Machine Learning models. Through our analysis process of our data papers, new keywords and concepts emerged, for a diversity of techniques and technologies, regarding analytical strategies where Spectroscopy and chemometrics were the most either used in articles or discussed in reviews as technologies in all different journals (Figure 9). The commonality among these collected papers is their focus on exploring innovative approaches and technologies applied to food sciences. Their aim is to solve problematics related to food safety, quality assessment, authenticity verification, and inspection processes. In the following sections, we will discuss articles and review papers separately, following the five RQs defined in the methodology section.

4.3. Review Papers

The review papers report recent advances regarding the application of various AI technologies and methodologies in the field of food sciences. These papers discuss the use of different techniques in AI, such as artificial neural networks (ANNs), computer vision, data mining, deep learning machine learning and statistical modelling combined with recent analytical strategies, such as hyperspectral imaging, chemometrics, non-destructive analytical techniques, THz spectral imaging, bioimpedance and spectroscopic methods for food analysis, quality assessment, safety inspection, authenticity determination, and defect detection. Assessments of food products are divided into two pillars, safety and quality parameters, and since our concern is on safety, we focused on extracting information related to this matter, specifically for crop-based food.

4.3.1. Analytical Strategies and AI as Non-Destructive Tools for Crop-Food Safety

These review papers are commonly discussing the usage of analytical techniques and consider them as revolutionary, mostly for being non-Destructive Techniques in food analysis, were the key word non-destructive was stated plainly in these works [62,63,64,76,82,88,89,100,112]. These techniques allow for the assessment of crop-based food safety without structural damage. The overall focus of these papers focuses on both aspects of food analysis, safety and quality [52,61,70,112]. Nonetheless, we will inspect only technologies and methodologies that have been implemented in food safety analysis, hence, detecting contaminants, assessing microbial risks, determining the presence of pathogens, and evaluating their safety and readiness to be manufactured, stored, transported or directly consumed. Many examples emerged, such as reviewing methods for determination of contaminants in spices and herbs [62], such as biological contaminants [113,114], caused by foodborne pathogenic microorganisms. These samples, either the contaminants or contaminated food, are subject to analytical analysis which then depending on the objective of the study and which aspect of food safety to tackle, will produce data.
The most referred to as analytical strategies in solving this matter, were Spectral Imaging technologies for once [61,113], and spectroscopy-based technologies [52,61,63,64,76,81,82,88,89,100,113,114].
Different techniques have emerged in spectral imaging, like Hyperspectral Imaging [58,61,65,70,82,103,112], for example Near-Infrared Hyperspectral Imaging [112], also Multispectral Imaging [58,61,64,65,113], and THz spectral Imaging [88]. In spectroscopy, we list Ultraviolet-visible spectroscopy (UV-vis), Near-infrared spectroscopy, Fourier transform infrared (FT-IR), Raman spectroscopy, THz Spectroscopy, THz time-domain spectroscopy(THz-TDS), laser-induced breakdown spectroscopy(LIBS), Surface-enhanced Raman spectroscopy sensor (SERS), nanoenzymes and modified chromatographic techniques that were mostly coupled with AI tools [76,81,88,100,112,113,114]. On the other hand, electro-analytical methods have risen to mimic the human senses by using sensor arrays and pattern recognition systems, known as E-nose, E-tongue, and E-eye [81]. They are often combined with other spectral techniques for real-time detection and higher accuracy results, such as near infrared spectroscopy (NIRS) [87]. The E-nose is destined to emulate the human olfactory system, hence avoiding exposure to dangerous chemical and biological hazards, due to inhaling or skin leisure [82]. Many applications have been studied, like evaluating shelf life by detecting grain off-odor due to microbial spoilage for wheat and barley-based foods [52]. Furthermore, Electrochemical Impedance Spectroscopy (EIS) has been getting more attention research lately, especially when applied on biological tissues, such as crop-based foods membranes. EIS or bioimpedance technology is optimal for surface contaminants detection, with its capacity to detect defects [89].
Several papers discuss the importance of data analysis and processing for food safety. Chemometrics [81,100], machine learning [87,88], computer vision [63,113] and data mining [64,70] which are applied to extract meaningful information, detect patterns, and make predictions based on the collected data. Machine learning techniques are summarized in Table ?? with the most common techniques gathered from some relevant review papers related to crop-food safety.
The best description of what is the purpose of chemometrics was in a recent work by Yu et al. [81], quoting exactly “Chemometrics, the art of extracting chemically relevant information from data produced in chemical experiments”. We can also distinguish between Chemometrics and sensometrics, respectively, studying the relationship between the measured chemical parameters and the state of the object by statistical or mathematical methods or studying the link between sensory parameters and the internal characteristics of the object via similar approaches as the first one [70]. Spectra processing and model establishment are two main aspects of chemometrics, each contains multiple analysis methods [100]. These systems that are based on sensors equipped with chemosensitive materials for molecular recognition [113] can also be joined with other techniques for data analysis in electronic sensing [81]. Chemometrics were usually incorporated within data analysis in electronic, E-nose, E-tongue, and E-eye [100] and within, spectra processing and model establishment when combining AI tools with spectroscopic techniques. Application Potential of Deep Learning in Chemometrics and sensometrics toward Food [70]. For example real-time toxins quantification and detection in cereals by combining non-destructive techniques with chemometrics, such as spectroscopy-based techniques [100]. They were also joined when applied in condiment analysis Methods for determination of contaminants in spices and herbs [62]. Final data acquired by HSI systems were described as “hypercube” for their 3D characteristics, two for spatial coordinates and one for spectral values [58].

4.3.2. Interdisciplinary Approaches in Crop-Food Safety

The review papers often involve interdisciplinary approaches, combining knowledge and techniques from fields such as food science, computer science, spectroscopy, image analysis, and statistical modeling. These collaborations aim to leverage the strengths of different disciplines to address complex challenges in food analysis and safety. Firstly, image correction before implementing chemometric algorithms is necessary to reduce the noise to enhance the signal-to-noise ratio by either spectral or image analysis, Secondly, data preparation and pre-processing using chemometric methods, such as principal component analysis(PCA) and partial least square regression (PLSR), to be fed for model application[58]. In microbiological applications, for Mycotoxins detection for example, combining non-destructive methods with statistical methods such as PLS at different stages of the food supply chain, harvesting and transporting, due to many climate conditions and agricultural processes [62], also detection of the total aflatoxin content using fluorescence fingerprint (FF) in combination with PLS r [62]. FT-NIR data were often analyzed using the PLS regression with various pre-processing techniques, such as straight-line subtraction(SLS), constant offset elimination(COE), and minimum-maximum normalization (MMN). classification of hyperspectral images of possibly contaminated chili was proposed by using PCA and SANN as a classifier [62]. Supervised ML approaches (classification and regression) used for the detection of endogenous component content, pesticide residue, microplastic, and heavy metal contamination in crops [103]. THz-TDS can be combined with SVMs for classification purposes scoring good results [81]. However, this work can be criticized for mentioning various spectral Dimensionality reduction techniques for feature extraction and selection like LLE, LE, ISOMAP, and MDS in addition to SNE and t-SNE. Whereas those techniques are not mentioned in the literature in any shape or form [103]. PCR, PLS, and MLR are best to check the linearity, while qualitative techniques are best for Non-linearity Detection, such as partial residual plot PRP, residual plot RP, e-PC (AVP/PaRP), and by mallows augmented partial residual plot (APaRP). On the other hand, quantitative techniques are mostly referred to for statistical methods such as ANOVA for lack of fit (LOF) for univariate calibration mode, or the most basic tests to assess serial correlation: Durbin-Watson test and run test [103]. Fuzzy Logic Technique in the Food Industry, in food modeling, control, and classification, and in addressing food-related problems by managing human reasoning in linguistic terms. FL has been proven to successfully maintain the quality of the foods, and it acts as a prediction tool and control system for food production processes [87]. Deep learning has been introduced into the food field by analyzing RGB images and spectra images of food, as the data analysis tool to solve the problems and challenges in the food domain. Food recognition and classification such as CNN, and image analysis, which has been the most commonly used pattern in food recognition and classification. Numerous popular CNN architectures for image processing were cited including AlexNet, visual geometry group network (VGG), GoogLeNet, and residual neural network(ResNet). Also, the usage of hybrid models, such as Radial Basis Function (RBF) kernel-based SVM with ResNet-152, coupling fine-tuned AlexNet with a binary SVM classifier [70].

4.3.3. Analytical Strategies and Recent Technologies for Food Safety

Some papers highlight the use of automation and advanced technologies to streamline food analysis processes, improve efficiency, and enable rapid assessment. This includes the integration of computer vision, machine learning, and artificial intelligence techniques for automated defect detection and quality evaluation. Table 7), highlights some relevant reviews reporting chemometrics and ML applications for food safety and quality.
Analytical strategies deploying AI tools can be described as knowledge-based systems with computer programs using knowledge from different sources for food safety problems, such as expert systems, knowledge-based artificial intelligence, and knowledge-based engineering [87]. Integrating various sensors with AI-based methods has been increasing in food industries over the past few years, for example, E-nose-based systems to detect defects and contamination in crop foods. Classification and differentiation of different fruits have also been determined by using e-nose. CVS usage can be a handful for image processing and pattern recognition combined with Near-infrared spectroscopy (NIRS) in the food industry for accurate and precise results [87]. Combining ANNs-sensors in real-time applications, like E-nose and E-tongue for real-time detection to score faster and higher accuracy results [87]. Fecal Contamination on Fruits and Vegetables, apples for example using reflectance-fluorescence, coupled with Band ratio, threshold, separation algorithms, and PCA. Defects like bruises and lesions are considered symptoms of possible contamination if caused by a biological agent. hyperspectral imaging is then used to inspect defects coupled with many tools such as PLSDA, ANN, LDA, and PCA [58].
Overall, the common points among these review papers revolve around the application of emerging technologies, non-destructive techniques, data analysis, food safety, quality assessment, automation, and interdisciplinary approaches within the field of food science.

4.4. Article Papers

As depicted in Figure 8, the obtained 49 research papers focus on the identification, and in some cases quantification, of food-borne pathogens, be it bacteria, fungi, or yeast. The employed Machine Learning (ML) workflow mostly consists of two major steps, namely data preparation, including data acquisition, data cleaning, and data transformation; and decision making including, tuning, training, and testing of one or multiple machine learning models.
Table 7. Chemometrics and ML applications for crop-based food safety and quality in some relevant review papers.
Table 7. Chemometrics and ML applications for crop-based food safety and quality in some relevant review papers.
Ref. Crop-food Pre-processing steps Decision model
[81] Tea Standard normal variate (SNV) and multiplica-tive scatter corrections PCA, KNN, KPCA, ANN, HCA, BPNN, PLS, CPNN, SPA, PNN, ELM, LDA, SVM, S-LDA, LVQ, KLDA, MLP, RBF, RF.
[103] Apple, Wolfberry, Lettuce, Pear, Green plum, Peach, Strawberry, Brassica, Jujube, Lettuce and Chives LLE, LE, ISOMAP and MDS, SNE and t-SNE PLSR, KNN, LDA, NB, DT, SVR, SVM, RF, LSSVM, LWR, FNN, ResNet, CNN and DNN
[76] Grain products, forages, oil, fruits, vegetables, sugarcane seeds, coffee, tea, spices, black/green tea, grapes, apples, wheat flour, rice and barley multivariate calibration of spectral data, standard normal variate transformation (SNV), multiplicative scatter correction (MSC), smoothing, derivative, wavelet transforms (WT), and orthogonal signal correction (OSC) ANN, BP-ANN, GA-ANN, RBFNN, AdaBoost, SVM, LA, ELM,SLFN, LS-SVR, SVM, linear, radial basis function (RBF), normalized polynomial, sigmoid, GaussiansRBF, and string kernels
[62] Condiments, spices and herbs PCA, HCA, parallel factor analysis(PARAFAC), MPLS, PLS, ANOVA, t-test, straight line subtraction(SLS), constant offset elimination(COE), and minimum-maximum normalization (MMN) ANN, kNN, PLS regression, PLS-DA, HCA, PCA, LDA, k-means cluster analysis (KM-CA) and DA
[87] Fruits computer vision systems Adaptive Neuro Fuzzy Inference System (ANFIS)
[70] Vegetables CNN ResNet-152, AlexNet-SVM classifier and hybrid CNN-SSAE
[58] Apples, cucumbers, spinach and wheat PCA, PLSR PLSDA, ANN, LD and PCA
Figure 10. Statistics about evaluation metrics and the use of K-fold Cross Validation in the research papers.
Figure 10. Statistics about evaluation metrics and the use of K-fold Cross Validation in the research papers.
Preprints 88646 g010
The results are best categorized by how data was gathered. However, in most cases, data acquisition stems from a chemical analytical approach, mostly spectroscopy-based approaches, resulting in structured data in the form of numerical values or unstructured data in the form of images. Thus, the results are reported following the taxonomy outlined in Section 2.1. Each subsection that follows, gathers the research papers that use the specific spectroscopic approach, and its variants if any, combined with various ML methods for food safety purposes.

4.4.1. Raman Spectroscopy

In earlier studies, Raman spectroscopy was used in combination with classical machine learning approaches to enhance food pathogens’ detection. In [57], Principle Component Analysis (PCA) was applied in combination with Linear discriminate analysis (LDA), Support Vector Machines (SVM) and a simple Artificial Neural Network (ANN) architecture for classification of Bacillus anthracis endospores and their products. Also, Raman Spectroscopy spectra was preprocessed using first derivative (D1) and Savitzky–Golay smoothing function and second ( 2 ) order polynomial to enhance spectra resolution and eliminate baseline and linear slope effects, respectively [72]. The resulting signal was used as input for Partial least squares (PLS), Synergy interval partial least squares (siPLS), Ant colony optimization-siPLS (ACO-siPLS) to quantify the level of maize contamination by zearalenone. On the other hand, after applying Savitzky–Golay smoothing function on the spectral information, a stacking approach combined with K-nearest neighbors (KNN) and Support Vector Machines (SVM) was proposed in [116], to distinguish between Escherichia coli and Brucellasuis vaccine. Later studies investigated the use of complex ANN-based models to enhance classification and quantification performances. In [78], a simple PCA approach was used to categorize three genera (Arcobacter, Campylobacter and Helicobacter), then a one-dimensional Convolution Neural Network (1D-CNN) and a fully connected Artificial Neural Networks (ANN) were used to classify 18 of Arcobacter species and quantify their ratio in the bacterial mixture [78]. In another study, raw Raman spectroscopy was used as an input to fully connected ANN, Genetic Algorithm-ANN (GA-ANN), Particle Swarm Optimization-ANN (PSO-ANN) to distinguish between 12 strains of five bacteria genera, including (Escherichia, Listeria, Vibrio, Shigella, and Salmonella) [96].
In addition, in the cases where faster sampling, higher resolution and better signal-to-noise ration are needed, Fourier Transform (FT)-Raman is often used with promising results. In an older work [49], proposed a first attempt to use FT-Raman for a non-destructive characterization and differentiation of six different microorganisms, including the pathogen Escherichia coli on whole apples. PCA and Canonical Variate (CV) to plot and cluster the data in two-dimensional scatter-plot.
Furthermore, a more sensitive version of Raman spectroscopy, namely surface-enhanced Raman Spectroscopy (SERS) can be used in the cases where sensitivity, selectivity and rapid analysis is needed. In an older work [55], SERS was used to detect and discriminate among five Bacillus spores (B. cereus ATCC 13061, B. cereus ATCC 10876, B. cereus sp., B. subtilis sp., and B. stearothermophilus sp.). Standard data preparation techniques were conducted, such as normalization, binning, smoothing, and second-derivative transformation, before using PCA and Hierarchical Cluster Analysis (HCA) to cluster the data into three groups. However, a recent comparative study [79], demonstrates the benefit of using Deep learning models such as CNNs, fully convolutional network (FCN) and Principal Component Analysis Network (PCANet) to determine their abilities to measure pirimiphos-methyl in wheat extract in the two input forms of one-dimensional vector or two-dimensional matrix. As opposed to classical ML methods such as Random Forests (RF), KNN and SVM.
On the other hand, Single-cell Raman spectroscopy (SCRS) has also been used in a recent work [99] to discriminate between 23 common strains from 7 genera of foodborn bacteria (Escherichia, Listeria, Staphylococcus, Cronobacter, Vibrio, Shigella and Salmonella) at the single cell level. Kernel PCA (KPCA) was used for nonlinear feature extractino followed by a Decision Tree (DT) algorithm with promising results.
In addition, Low Resolution Raman spectroscopy (LRRS) also been used in combination with SVM Discriminate Analysis to rapidly identify harmful cyanobacterial species and quantify their presence, demonstrating the potential of LRRS technology for real-time detection of contaminant species within microalgal bioreactors.

4.4.2. visibe/Near-Infrared Spectroscopy

Visibe/near-infrared spectroscopy (Vis/NIR) is of valuable usage for food safety, especially when a broad spectral range analysis is needed., It has been used in combination with LDA and Partial Least Square Regression (PLSR) for on-line detection of Aspergillus spp. and Fusarium spp. contamination in stored maize [86]. LDA was used for classification results of maize samples according to specie of infected fungal strain and infection level. PLSR was used for the respective determination of colony counts. Also, in [84], Vis/NIR was considered with PCA in combination with various data pre-processing techniques such as, of moving average (MA), multiplicative scatter correction (MSC), standard normal variate (SNV), first derivative (D1), second derivative (D2), savitzky-golay (SG) and their combination were considered based on PCA results. The prepared data was the input to PLS-DA algorithm, as well as three of variable selection-based variants (iPLSDA, GA-PLSDA and VIP-PLSDA) to detect contaminants in Persian leek.
On the other hand, Recent studies explored the usage of Near-Infrared Spectroscopy (NIR) coupled with computer vision in food safety applications. In [106], they used a low-cost NIR sensors (NIRONE S2 and S2.5) to acquire spectral with wavelength 1550–1950 nm and 2000–2450 nm. Standard preprocessing approaches were applied such as auto scaling, mean centring, Savitzky-Golay, Standard Normal Variate (SNV), 1st and 2nd derivatives. The objective is garlic powder contamination, especially allergen contamination such as peanut powder. Thus five classification models were used (KNN, SVM, LDA, PLS-DA and DT) to, first, detecting the presence of peanut powder in garlic powder, then identifying whether the present is high (2-20%) or low (0.01-1%). In the latter both cases, a PLSR-based regression model was developed to quantify the presence concentration. Similarly, a Deep Learning-based approach was proposed in [107] for in-line allergen classification of agri-food powders, combining domain-adversarial neural networks (DANN) and semi-supervised generative adversarial neural networks (SGANN). In addition, two DL approaches were proposed in [98,111]. Namely, two-dimensional Markov transition field -CNN (2D-MTF-CNN) and a modified version of FCN (U-net) to monitor the aflatoxin B1 (AFB1) content in maize and identify food foreign contaminants (metallic iron, polypropylene plastic, and hair) on the surface of bread, respectively.
NIR spectroscopy in the diffuse reflectance mode has been used [67] for soluble solid content and total acid content analysis of fruits. After reducing the dimension of the acquired data to the leading three principal components, Back Propagation Neural Network (BPNN) and Generalized Regression Neural Network (GRNN) were proposed and compared in predicting the values of SSC and TAC in 3 cultivars of pears.
Furthermore, earlier works [50,51] investigate the usage of Fourier Transform Infrared spectroscopy (FTIR) coupled with complex ANN methods to identify five pathogenic bacteria (Enterococcus faecium, Salmonella enteritidis, Bacillus cereus, Yersinia enterocolitis, and Shigella)[50], as well as to quantify four food pathogens (E. coli O26, Salmonella typhimurium, Yersinia enterocolitis, and Shigella boydii) [51]. In both works, Probabilistic Neural Networks (PNNs) were developed and tested. FTIR has been used for aflatoxin contamination detection in figs [60]. Forward feature selection (FFS) method was used to reduce features in spectra space, followed by three linear classifers, namely Linear Discriminant Classifier (LDC), Logarithmic Linear Classifier (LOGLC) and Quadratic Discriminant Classifier (QDC). Also, it was coupled with smoothing and standard normal variate (SNV) for noise removal, followed by SVM and PLSDA to characterize and differentiate between Bacillus subtilis and Escherichia coli cell suspensions, in food spoilage context [90]. The work [71] have also showed the benefits of using FTIR combined with five classification approaches, namely Adaptive boosting (AdaBoost), Random Forests (RF), SVM, Multilayer perceptrons (MLPs) for the automated classification of contaminated maize. In a latter study [110], FTIR spectroscopy-based IR biotyper system was used to successfully classifying a total of 958 characterized Salmonella enterica isolates (25 serogroups and 138 serovars). PCA and LDA were applied for visualization porpuses, followed by SVM and ANNs for classification. Also, an earlier attempt to combine FTIR photoacoustic spectroscopy (FTIR-PAS) with unsupervised analysis (PCA and canonical variate analysis) was explored in [48] to identify various bacteria (Lactobacillus casei, Bacillus cereus, and Escherichia coli), fungi (Aspergillus niger and Fusarium verticilliodes) and yeast (Saccharomyces cerevisiae) on apple surface, with promising results. However, to the knowledge of the authors, not subsequent research was conducted using this technique.

4.4.3. Time-Domain Spectroscopy (THz–TDS)

Time-domain spectroscopy (THz–TDS) system can also be used in conjunction with ML approaches for food safety. Due to its spectral range, sensitivity and chemical specificity, it is an appealing alternative for data acquisition. In [102], they proposed a novel metamaterial sensor to analyse multi-resonance dips in spectra obtained using time-domain spectroscopy (THz–TDS) coupled with Mean Shift (MS) to investigate the presence of Carbendazim’s residue in crops. Also, Soybean oil contamination by aflatoxin B1 (AFB1) was investigated using the same spectroscopic method [74]. Student Stochastic Neighborhood Embedding (t-SNE) Dimensionality Reduction (DR) methods were applied, followed by Back Propagation Neural Network (BPNN), Least Squares SVM (LS-SVM) and RF for classification purposes. As opposed to identification and classification problems, time-domain spectroscopy (THz–TDS) systems was used in tandem Multiple Linear Regressions (MLR), PLS and LS-SVM for measuring benzoic acid (BA) additive in wheat flour [75]. In a recent study [104], used TPS systems with Singular value decomposition (SVD), Non-negative matrix factorization (NMF), Self-modeling mixture analysis (SMMA) and Support vector machine for regression (SVR), as preventative measure. That is to identify and quantify the right components of preservatives (sorbic acid, potassium sorbate and sodium benzoate) to precisely enhance antimicrobial effect for merchandise safety.

4.4.4. Fluorescence Spectroscopy

Fluorescence spectroscopy, which focuses on the measurement of the emitted light (fluorescence) from a sample after it has been excited by an external energy source, can also be used to acquire data for food contamination analysis. A recent work [85], presents a methodology for the analysis of fluorescence spectra of slurred almonds under 375 nm wavelength excitation for optical detection of Aflatoxins B in grained almonds. This application is different than conventional classification framework, in the sense that sample labels for contaminated or not contaminated are generated based on multiple threshold values, thus a single sample could have a vector of labels corresponding to each threshold value. This is refereed to as multi-expert learning [117]. In this context, Support vector Machines (SVM) was used with majority vote. On the other hand, other techniques of analyzing materials have been used, particularly, based on the interaction of microwaves with samples. Unlike spectroscopy, Microwave Sensing Systems operates in the microwave frequency range, typically from hundreds of MHz to tens of GHz. Recently, a microwave sensing approach coupled with ANNs for food safety has been proposed in [97], exploiting the dielectric contrast between the potential intrusion and the surrounding matter of packaged food. In addition, nuclear magnetic resonance (NMR) spectroscopy, which is a prominent analytical approach, was applied in a recent work [92] to distinguish between pathogenic and non-pathogenic, using PCA and ANNs.

4.4.5. Nuclear Magnetic Resonance (NMR)

Nuclear Magnetic Resonance (NMR) can be of great importance in food safety context due to its ability to provide detailed molecular information in non-destructive manner. However, compared to the above categories, NMR is somewhat less used in the literature. Only one study [92] explored the use of NMR spectra in combination with Artificial Neural Networks to distinguish between 10 different microbial strains such as Bacillus, Salmonella and Yersinia, among others in food based on metabolite profiles. For this type of data, prior preparation is necessary, like scaling spectra to the internal concentration standard (TSP), removing noise bins, standardization, and PCA for visualization. The proposed ANNs model, with hidden layers of 800 neurons, ReLu functions, and two dense layers, was compared with two classical Machine Learning algorithms (RF and SVM) with slight differences in performance.

4.4.6. Hyper-Spectral Imaging

Optical spectroscopic techniques have been recently exploited for food safety as an advanced promising tool. Due to the enhanced spectral resolution and improved spacial information Hyper-spectral imaging, combined with AI tools, is increasingly appealing for food safety application. The first application was as early as 2002 [47], where hyperspectral imaging was used to characterize spectral features, and multispectral imaging combined with PCA for detection of defects on three apple cultivars, namely Golden Delicious, Red Delicious, and Gala. Recently, an ANN-based method using FTIR-hyperspectral data was proposed in 2018, for rapid and cost effective diagnosis of pathogenic bacteria [68]. Also, In [83] active thermography and infrared camera were used to capture thermal images for analysis using a multi-view learning-based autoencoder (MVAE) for defect detection.
On the other hand, a study used Visible and NIR (VNIR) hyperspectral imaging to determine the presence of viral particles in a fluid suspension as well as on a surface upon complete evaporation of its water content [93]. In contrast with the previous studies which proved the effectiveness of using HSI to detect the presence of fungi or bacteria, detecting the presence of virus, which is two orders magnitude bellow bellow fungi and bacteria, can be crucial to prevent the spread of plant diseases. The acquired VNIR-HSI data was used in combination with PLSDR and FFNN to detect the presence of viruses in addition to the analysis of averaged spectra for quantifcation of the viral load [93].

4.4.7. Comparative Studies

In the light of recent developments and applications of Machine learning in food safety, comparative studies are of great importance to understand and assess the viability of the techniques. In [108], a thorough comparative study was conducted using four different Hyper-spectral imaging techniques (Fluorescence, VNIR, SWIR and Raman) combined with five classification approaches (LDA, LSVM, QDA, and QSVM), in addition to four simple pre-processing techniques. On the, the study in [115] provides a comparative assessment of spectroscopy-based techniques and machine learning approaches for evaluating the microbiological spoilage of ready-to eat leafy vegetables (baby spinach and rocket). In this study Fourier-transform infrared (FTIR), near-infrared (NIR), visible (VIS) spectroscopy and multispectral imaging (MSI) were used, with only two ML algorithms (SVR and PLSR).

4.4.8. Electro-Analytical Methods

The data used in [80] is gathered using the daily inspection of food safety obtained from the Analysis and Testing Institute of one province in China, which include information about manufacturers information, origin information, product information, production date, inspection items, inspection results, among others. The aim of this study is to: first build a AHP-ELM model to distinguish between three types of food safety risks, namely heavy metal pollution, chemical contaminant pollution and pathogenic bacteria pollution. Then, constructing a AHP-ELM-based model for food safety warning. In an earlier study [54], Microelectrode arrays (MEAs) obtained from Multichannel Systems GmBH were used to measure electrical activity of cortical networks grown in a controlled environment (in vitro). The MEAs measure the electrical spikes of Lyophilized Botulism toxin (BoNT A) group for further statistical analysis in contrast with a controlled group without toxins. Furthermore, the use of cortical networks as a biosensor for botulinum toxin offers several advantages. First, the networks can be grown in a controlled environment, allowing for reproducible experiments. Second, the networks can be easily manipulated and modified to study different aspects of toxin detection. Third, the electrical signals from the network can be recorded non-invasively, minimizing the potential harm to the tissue. This approach provides a promising tool for potential applications in toxin detection in food safety research.
On the other hand, few studies explore the potential for real time monitoring sensing system to provide early means to assess food safety [69,80]. A brief study [69] proposed a real time environment monitoring sensing system to monitor stored grain condition, and potentially increase its shelf-life. At first, sensors record the values of temperature, moisture content, C O 2 among others, and store the data in Ardinuo data logger periodically. Consequently, the stored data is communicated to a web server using WI-FI. Second, pre-processing techniques are applied in the microprocessor to reduce the inevitable noise generated by the different environment sensors. This is due to long term drifts, temporary electrical errors and effects of nearby sensors. Finally, a classification approach can be used to distinguish between 4 classes namely, no spoilage, early spoilage, severe spoilage and early insect infestation. A more recent study [80] proposed an edge IoT and machine learning based approach for food quality monitoring system to avoid food waste, which reaches 50% for root crops, fruits, and vegetables. First, three sensors are in place to gather environmental data, namely gas, temperature and humidity sensors, after which any missing entry is replaced with the median value of the feature. Then, Four classification algorithms are considered to categorize the results into three classes (fresh, semi-fresh, and spoiled), namely linear SVM, RBF-SVM, logistic regression and Random Forests (RF). To ensure real-time monitoring, the results are communicated to the user through an android application.

5. Research Gaps and Challenges

Spectral imaging along with spectroscopy-based techniques can be considered as alternatives for conventional methods in order to solve food safety-related problems [58]. For instance, applying AI has been rising since 2015 and is expected to stay on the same path for the next 10 years. In fact, combining analytical technologies with AI and data analysis tools, along with developing sensing systems is expected to have great potential for the agriculture and food industry [64,88]. Although, many of these techniques are still at the research and development stages [81]. Sensors applications for example and developing robust algorithms is still an area for further exploration [64]. It appears that the driving factors to execute more innovation within a certain applied field, and if we are talking about AI in the food industry is mainly Industrial Revolution and the need for intelligent systems, hence smart factory development [87]. AI tools application in food industry has been intense in 2020 mostly, where researchers were regarded in carrying out more research work using the AI method, which might be linked to the recent pandemic situation due to the Covid-19 virus. Many industrial corporates are now open to AI applications, as an alternative for human workers, for cheaper and better outcomes.
There has been much confusion within the literature, especially when it comes to food safety and quality concepts, also concerning soilborne and foodborne infections in crop foods. These misconceptions were mostly present in papers classified as analytical techniques or AI-oriented journals. On the other hand, food technology and/or biology-oriented papers tend to the non-adequate referring to AI tools, maybe due to miscommunication between these research areas. Generally speaking, we may suggest that research-wise, this topic might stumble accross these challenges:
  • The complexity and diversity of food matrices, which may require different AI models and parameters for different food products and contaminants.
  • The lack of standardization and validation of AI methods and data, which may affect the accuracy, reliability and comparability of the results.
  • The potential risks and uncertainties of AI applications in agriculture, such as environmental impacts, socio-economic impacts, cyber-attacks, biases and errors, which may affect food security, sustainability and resilience.
  • The need for interdisciplinary collaboration and stakeholder engagement, which may involve challenges such as communication barriers, knowledge gaps, cultural differences and conflicting interests.

5.1. Big Data

The complexity of food matrices which represent samples in experiments (Figure 11), is an important challenge. Their diversity leads to a variety of data types, hence various protocols and methods. Contaminants detection for example, laboratory detection emphasizes on accuracy, while field detection emphasizes on efficiency and portability [81]. Spectral data can be very noisy and susceptible to continuous change [53]. The big data is a major challenge, where food safety relies on data analysis and processing of information coming from a variety of resources such as IoTs and information-based systems. At the macro level, data analysis impacts market operations and government policies, at the micro level, it’s called the smart supervision of food safety. Creating a food traceability system can establish a full correlation between all resources from different stages of the food supply chain. It can be represented as a food safety management platform based on big data, forming a data warehouse, with a unified and robust data management system, for digital food safety supervision [105]. In fact, large data is required to develop cutting-edge technologies, but difficulties arise, such as confusion between data fitting and modeling, and inadequate decision making. Also, the curse of dimensionality, data leakage, limited real datasets to experiment on, and low productivity [113].

5.2. Learning Methods, XAI and Interpretability

Limited model performances is also a major problematic, along with the need for combining this analytical methods with robust non-linear algorithms [76]. Also, various general guidelines are in place to objectively assess a machine learning model performance. In particular, the use of Cross-Validation approaches (also known as K-fold Cross-validation) to avoid different problems such as over-fitting. However, as depicted in Figure 10c, only 33% of the article papers used cross-validation technique with number of folds ranging between 4 and 10 (see Figure 10d). Also, the evaluation metrics used to validate the model performance is of upmost importance. As shown in Figure 10a, Accuracy is the most used metric. In addition, over 42% of research papers only use one metric and an additional 27% only uses two metrics to assess the model performance.
Non-destructive techniques in food safety, especially when it comes to spectral imaging, are objective detection of defects in plant. However many challenges arise, such as being restricted to a limited number of attributes, there is a need for more efficient image acquisition and processing, in HSI or NIR for example. The challenge that remains is that of standardization of techniques; each reported study is more or less limited to a specific instrumental parameter, studying a single food item and particular defect, while using a different learning algorithm or a different validation process [82]. Limitations and challenges of rapid methods are mainly technical but sometimes are depending on the right choice of data analysis techniques including most studied features without losing information [113]. In most cases of spectral data analysis, it is hard to acknowledge the effect of variable combinations and adding interpretability in decision making.

5.3. Real World Applications

The robustness and transferability of models is one of the main challenges and one of the limitations that restrict the wide-scale application of spectroscopic techniques [69,80,81]. Most of these research papers are only investigations of the feasibility of applications of these approaches. More research should be conducted in routine analysis and real-time implementation [62]. Practical application of emerging techniques, such as the E-nose, still needs to overcome a series of problems, such as the robustness and transitivity of models [81]. Not every mentioned technology seems to be at the same development level in theory as much as in laboratories of the food industry, many are still at the infancy level [113], for example in safety cereal processing which needs to be further investigated [100]. There should also be more focus on establishing open-source databases and accessible analytical methods for more applications [81].
To our knowledge, there are only a few published papers involving spectral sensing coupled with AI tools, especially for crop-based food safety, although many pieces of research related to food safety and quality, in general, have been executed. Additionally, most studies combing analytical methods with AI tools were from contributors who were mainly scholars of computer sciences and/or related fields, where in-depth safety problem solving isn’t the main objective of the study, but rather general or specific features engineering [69,70,80].

6. Conclusions and Future Work

This work conducts a qualitative as well a quantitative evaluation of research works regarding our research topic. Furthermore, it proposes a unique methodology to search the literature exhaustively and come up with relevant conclusions and suggestions for further research. This methodology can be further applied in upcoming comprehensive review papers or for searching the literature in emerging areas of research. We executed many searches with many keywords which was necessary to do an exhaustive search in the literature to get as many papers as possible. Nonetheless, we remarked that most papers were majorly discussing quality assessment problematics, mostly, food origins and/or adulteration, using classification and/or regression methods. Also, there was a high tendency to confuse safety and quality measures, which are clearly separate. Since we opted to accept reviews that are remotely related to our specific topic, these review papers were discussing a diversity of points, including our target problem, with more details directed towards meat products, and quality assessment measures, more than safety matters. Food safety like any other real-life problem has either been a principal topic in research projects or simply an application to test decision-making tools. It is apparent that there are few applications and even studies directed towards food safety when it comes to its contamination prevention, where most studies focused mainly on animal products, like milk and meat, hence very few studies were regarding crop-based food. To this end, Machine Learning methods are of crucial importance. Analytical techniques and analytical strategies are completely different concepts, the first one is related to one field of studies involving for example spectral techniques. The second one represents an intersection between many areas of research, hence diverse technologies, as it was discussed and referred to in many case studies papers also review papers, like systems for detecting food defects involving spectral imaging, chemometrics for pre-processing, computer vision for image analysis and decision making.
There have been many gaps while searching the literature. We at this moment encourage more works to be done regarding this problem for a variety of reasons. First, Food safety-security is a global call into question congregating multiple areas of research and industry. In our study, we investigated crop-food safety while considering all steps of the food supply chain. There are many challenges in optimizing the whole process, where employing AI tools would be highly beneficial. Food contamination prevention is a real-world challenge, with multiple hazards at stake. Our focus was mainly on crop-based foods, regarding the whole process, starting from healthy soil and fresh seeds to grow these crop foods to the marketed food product.
As discussed previously, different contaminants present serious problems, particularly biological contaminants. The first step in ensuring both food security and food safety is growing a healthy crop. On one hand, crop diseases have multiple impacts, decreasing the yield which leads to insufficient food staples, defecting yield products causing unsafe food for both humans and animals. Also, farm animals, once they ingest diseased foods, all animal-based foods are susceptible to being unsafe for consumption. Furthermore, there is an apparent gap between AI studies development and their applications, not only at the industrial level but at the research level as well, particularly in crop and agricultural sciences. Henceforward, upcoming research should be directed towards developing cutting-edge technologies in Precision Agriculture, by executing more studies in the fields of Crop Sciences combined with Machine learning and Computer Vision tools. Our future work will be focusing mainly on solving problems related to inspecting resistant crops to biological contaminants in arid and semi-arid regions, as an important aspect of food safety. Working on drought-resistant crops and combining AI tools is one of the major challenges facing research globally, and African countries specifically. This problem falls within the area of phytopathology, crop improvement, and machine learning. Our quest is to work on tasks related to crop classification while adding interpretability in deep learning and complex ML techniques based on image processing.

Author Contributions

Conceptualization, H.R.; Methodology, H.R.; Software, H.R. and Y.A.; Validation, D.P.; formal analysis, H.R. and Y.A.; Writing—Original draft preparation, H.R., Y.A. and A.T.; Data curation, H.R.; Visualization, H.R.; writing—review and editing, H.R. and Y.A.; Supervision, D.P. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Acknowledgments

We are deeply grateful to all those who played a role in the success of this paper. We would like to thank Mrs. Kaoutar Benghzial, Mr. Sami Bamansour, Mr. Mouad Elhamdi and Mr. Leandro Lorente for their invaluable input and support throughout the research process. Their insights and expertise were instrumental in shaping the direction of this paper. We are also greatful for the continous support of the SDAS research group.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Garcia, S.N.; Osburn, B.I.; Jay-Russell, M.T. One health for food safety, food security, and sustainable food production. Frontiers in Sustainable Food Systems 2020, p. 1.
  2. Hargreaves, S.M.; Rosenfeld, D.L.; Moreira, A.V.B.; Zandonadi, R.P. Plant-based and vegetarian diets: An overview and definition of these dietary patterns. European journal of nutrition 2023, 62, 1109–1121. [Google Scholar] [CrossRef] [PubMed]
  3. Matthews, P.J.; Ghanem, M.E. Perception gaps that may explain the status of taro (Colocasia esculenta) as an “orphan crop”. Plants, People, Planet 2021, 3, 99–112. [Google Scholar] [CrossRef]
  4. Neufeld, L.M.; Hendriks, S.; Hugas, M. Healthy Diet: A Definition for the United Nations Food Systems Summit 2021. A Paper from the Scientific Group of the UN Food Systems Summit 2021. [Google Scholar]
  5. FAO. Thinking about the future of food safety – A foresight report, 2022. [CrossRef]
  6. Kamala, K.; Kumar, V.P. Food products and food contamination. In Microbial Contamination and Food Degradation; Elsevier, 2018; pp. 1–19.
  7. Bintsis, T. Microbial pollution and food safety. AIMS microbiology 2018, 4, 377. [Google Scholar] [CrossRef] [PubMed]
  8. Turek, C.; Stintzing, F.C. Stability of essential oils: a review. Comprehensive reviews in food science and food safety 2013, 12, 40–53. [Google Scholar] [CrossRef]
  9. Clapp, J.; Moseley, W.G.; Burlingame, B.; Termine, P. The case for a six-dimensional food security framework. Food Policy 2021, p. 102164.
  10. Chatterjee, A.; Abraham, J. Microbial contamination, prevention, and early detection in food industry. In Microbial Contamination and Food Degradation; Elsevier, 2018; pp. 21–47.
  11. Chitrakar, B.; Zhang, M.; Bhandari, B. Improvement strategies of food supply chain through novel food processing technologies during COVID-19 pandemic. Food Control 2021, 125, 108010. [Google Scholar] [CrossRef]
  12. Surampalli, R.Y.; Zhang, T.C.; Goyal, M.K.; Brar, S.K.; Tyagi, R. Sustainability: Fundamentals and applications; John Wiley & Sons, 2020.
  13. Teena, M.; Manickavasagan, A.; Mothershaw, A.; El Hadi, S.; Jayas, D. Potential of machine vision techniques for detecting fecal and microbial contamination of food products: a review. Food and Bioprocess Technology 2013, 6, 1621–1634. [Google Scholar] [CrossRef]
  14. Craig, A.P.; Franca, A.S.; Irudayaraj, J. Surface-enhanced Raman spectroscopy applied to food safety. Annual review of food science and technology 2013, 4, 369–380. [Google Scholar] [CrossRef] [PubMed]
  15. Brousseau, J.L.; Vidon, S.; Leblanc, R. Investigation of the chemical nature of two-dimensional polymerized octadecyltrimethoxysilane Langmuir films by inelastic electron tunneling spectroscopy. The Journal of chemical physics 1998, 108, 7391–7396. [Google Scholar] [CrossRef]
  16. Ojanen, P.; Mäkiranta, P.; Penttilä, T.; Minkkinen, K. Do logging residue piles trigger extra decomposition of soil organic matter? Forest Ecology and Management 2017, 405, 367–380. [Google Scholar] [CrossRef]
  17. Świeca, M.; Sęczyk, Ł.; Gawlik-Dziki, U.; Dziki, D. Bread enriched with quinoa leaves–The influence of protein–phenolics interactions on the nutritional and antioxidant quality. Food chemistry 2014, 162, 54–62. [CrossRef]
  18. Aghayee, S.; Benadiba, C.; Notz, J.; Kasas, S.; Dietler, G.; Longo, G. Combination of fluorescence microscopy and nanomotion detection to characterize bacteria. Journal of Molecular Recognition 2013, 26, 590–595. [Google Scholar] [CrossRef]
  19. Guo, R.; McGoverin, C.; Swift, S.; Vanholsbeeck, F. A rapid and low-cost estimation of bacteria counts in solution using fluorescence spectroscopy. Analytical and bioanalytical chemistry 2017, 409, 3959–3967. [Google Scholar] [CrossRef]
  20. Christensen, J.; Becker, E.M.; Frederiksen, C. Fluorescence spectroscopy and PARAFAC in the analysis of yogurt. Chemometrics and Intelligent Laboratory Systems 2005, 75, 201–208. [Google Scholar] [CrossRef]
  21. Gismondi, A.; De Rossi, S.; Canuti, L.; Novelli, S.; Di Marco, G.; Fattorini, L.; Canini, A. From Robinia pseudoacacia L. nectar to Acacia monofloral honey: Biochemical changes and variation of biological properties. Journal of the Science of Food and Agriculture 2018, 98, 4312–4322. [Google Scholar] [CrossRef]
  22. Su, W.H.; He, H.J.; Sun, D.W. Non-destructive and rapid evaluation of staple foods quality by using spectroscopic techniques: a review. Critical reviews in food science and nutrition 2017, 57, 1039–1051. [Google Scholar] [CrossRef] [PubMed]
  23. Grundas, S.; Stępniewski, A. Advances in agrophysical research; BoD–Books on Demand, 2013.
  24. Kim, H.K.; Choi, Y.H.; Verpoorte, R. NMR-based metabolomic analysis of plants. Nature protocols 2010, 5, 536–549. [Google Scholar] [CrossRef] [PubMed]
  25. Lindgren, F.; Rännar, S. Alternative partial least-squares (PLS) algorithms. 3D QSAR in Drug Design: Recent Advances 1998, pp. 105–113.
  26. Tan, W.K.; Husin, Z.; Yasruddin, M.L.; Ismail, M.A.H. Recent technology for food and beverage quality assessment: a review. Journal of Food Science and Technology 2022, pp. 1–14.
  27. Wang, K.; Pu, H.; Sun, D.W. Emerging spectroscopic and spectral imaging techniques for the rapid detection of microorganisms: An overview. Comprehensive reviews in food science and food safety 2018, 17, 256–273. [Google Scholar] [CrossRef]
  28. Wang, Y.; Ravindranath, S.; Irudayaraj, J. Separation and detection of multiple pathogens in a food matrix by magnetic SERS nanoprobes. Analytical and bioanalytical chemistry 2011, 399, 1271–1278. [Google Scholar] [CrossRef]
  29. Liu, Y.; Pu, H.; Sun, D.W. Hyperspectral imaging technique for evaluating food quality and safety during various processes: A review of recent applications. Trends in food science & technology 2017, 69, 25–35. [Google Scholar]
  30. Jiang, Y.; Li, G.; Ge, H.; Wang, F.; Li, L.; Chen, X.; Lu, M.; Zhang, Y. Machine learning and application in terahertz technology: A review on achievements and future challenges. IEEE Access 2022, 10, 53761–53776. [Google Scholar] [CrossRef]
  31. Wang, H.P.; Chen, P.; Dai, J.W.; Liu, D.; Li, J.Y.; Xu, Y.P.; Chu, X.L. Recent advances of chemometric calibration methods in modern spectroscopy: Algorithms, strategy, and related issues. TrAC Trends in Analytical Chemistry 2022, p. 116648.
  32. Al-Awadhi, M.A.; Deshmukh, R.R. A Review on Modern Analytical Methods for Detecting and Quantifying Adulteration in Honey. 2021 International Conference of Modern Trends in Information and Communication Technology Industry (MTICTI). IEEE, 2021, pp. 1–6.
  33. Wu, Q.; Xie, L.; Xu, H. Determination of toxigenic fungi and aflatoxins in nuts and dried fruits using imaging and spectroscopic techniques. Food chemistry 2018, 252, 228–242. [Google Scholar] [CrossRef] [PubMed]
  34. Xing, F.; Yao, H.; Liu, Y.; Dai, X.; Brown, R.L.; Bhatnagar, D. Recent developments and applications of hyperspectral imaging for rapid detection of mycotoxins and mycotoxigenic fungi in food products. Critical reviews in food science and nutrition 2019, 59, 173–180. [Google Scholar] [CrossRef] [PubMed]
  35. Zhang, X.; Yang, J.; Lin, T.; Ying, Y. Food and agro-product quality evaluation based on spectroscopy and deep learning: A review. Trends in Food Science & Technology 2021, 112, 431–441. [Google Scholar]
  36. An, D.; Zhang, L.; Liu, Z.; Liu, J.; Wei, Y. Advances in infrared spectroscopy and hyperspectral imaging combined with artificial intelligence for the detection of cereals quality. Critical Reviews in Food Science and Nutrition 2022, pp. 1–31.
  37. Buzura, L.; Budileanu, M.L.; Potarniche, A.; Galatus, R. Python based portable system for fast characterisation of foods based on spectral analysis. 2021 IEEE 27th International Symposium for Design and Technology in Electronic Packaging (SIITME). IEEE, 2021, pp. 275–280.
  38. Pan, T.; Wu, C.; Chen, Q. Sparse Reconstruction Using Block Sparse Bayesian Learning With Fast Marginalized Likelihood Maximization for Near-Infrared Spectroscopy. IEEE Transactions on Instrumentation and Measurement 2021, 71, 1–10. [Google Scholar] [CrossRef]
  39. Nouri, H.; Guermazi, M.; Kallel, A.Y.; Hao, W.; Kanoun, O. Meat Freshness Assessment based on Impedance Spectroscopy and Distribution of Relaxation Times (DRT). 2022 International Workshop on Impedance Spectroscopy (IWIS). IEEE, 2022, pp. 41–45.
  40. Wei, X.; Zhu, S.; Zhou, S.; Zheng, W.; Li, S. Identification of soybean origin by terahertz spectroscopy and chemometrics. IEEE Access 2020, 8, 184988–184996. [Google Scholar] [CrossRef]
  41. Fengou, L.C.; Mporas, I.; Spyrelli, E.; Lianou, A.; Nychas, G.J. Estimation of the microbiological quality of meat using rapid and non-invasive spectroscopic sensors. IEEE Access 2020, 8, 106614–106628. [Google Scholar] [CrossRef]
  42. Shen, J.; Li, M.; Li, Z.; Zhang, Z.; Zhang, X. Single convolutional neural network model for multiple preprocessing of Raman spectra. Vibrational Spectroscopy 2022, 121, 103391. [Google Scholar] [CrossRef]
  43. Trigoso, T.C.; Cruz, J.O.; Miñano, H.A.; Silupu, W.C. Application of machine learning in the discrimination of citrus fruit juices: Uses of dielectric spectroscopy. 2020 IEEE Engineering International Research Conference (EIRCON). IEEE, 2020, pp. 1–4.
  44. Suter, G.W. Review papers are important and worth writing. Environmental Toxicology and Chemistry 2013, 32, 1929–1930. [Google Scholar] [CrossRef]
  45. Palmatier, R.W.; Houston, M.B.; Hulland, J. Review articles: Purpose, process, and structure, 2018.
  46. Snyder, H. Literature review as a research methodology: An overview and guidelines. Journal of business research 2019, 104, 333–339. [Google Scholar] [CrossRef]
  47. Mehl, P.; Chao, K.; Kim, M.; Chen, Y. Detection of defects on selected apple cultivars using hyperspectral and multispectral image analysis. Applied engineering in agriculture 2002, 18, 219. [Google Scholar]
  48. Irudayaraj, J.; Yang, H.; Sakhamuri, S. Differentiation and detection of microorganisms using Fourier transform infrared photoacoustic spectroscopy. Journal of Molecular Structure 2002, 606, 181–188. [Google Scholar] [CrossRef]
  49. Yang, H.; Irudayaraj, J. Rapid detection of foodborne microorganisms on food surface using Fourier transform Raman spectroscopy. Journal of Molecular Structure 2003, 646, 35–43. [Google Scholar] [CrossRef]
  50. Gupta, M.J.; Irudayaraj, J.M.; Debroy, C.; Schmilovitch, Z.; Mizrach, A. Differentiation of food pathogens using FTIR and artificial neural networks. Transactions of the ASAE 2005, 48, 1889–1892. [Google Scholar] [CrossRef]
  51. Gupta, M.J.; Irudayaraj, J.M.; Schmilovitch, Z.; Mizrach, A. Identification and quantification of foodborne pathogens in different food matrices using FTIR spectroscopy and artificial neural networks. Transactions of the ASABE 2006, 49, 1249–1255. [Google Scholar] [CrossRef]
  52. Huang, Y.; Kangas, L.J.; Rasco, B.A. Applications of artificial neural networks (ANNs) in food science. Critical reviews in food science and nutrition 2007, 47, 113–126. [Google Scholar] [CrossRef]
  53. Berrueta, L.A.; Alonso-Salces, R.M.; Héberger, K. Supervised pattern recognition in food analysis. Journal of chromatography A 2007, 1158, 196–214. [Google Scholar] [CrossRef]
  54. Scarlatos, A.; Cadotte, A.; DeMarse, T.; Welt, B. Cortical networks grown on microelectrode arrays as a biosensor for botulinum toxin. Journal of Food Science 2008, 73, E129–E136. [Google Scholar] [CrossRef] [PubMed]
  55. He, L.; Liu, Y.; Lin, M.; Mustapha, A.; Wang, Y. Detecting single Bacillus spores by surface enhanced Raman spectroscopy. Sensing and Instrumentation for Food Quality and Safety 2008, 2, 247–253. [Google Scholar] [CrossRef]
  56. Siripatrawan, U. Self-organizing algorithm for classification of packaged fresh vegetable potentially contaminated with foodborne pathogens. Sensors and Actuators B: Chemical 2008, 128, 435–441. [Google Scholar] [CrossRef]
  57. Stockel, S.; Schumacher, W.; Meisel, S.; Elschner, M.; Rosch, P.; Popp, J. Raman spectroscopy-compatible inactivation method for pathogenic endospores. Applied and environmental microbiology 2010, 76, 2895–2907. [Google Scholar] [CrossRef] [PubMed]
  58. Feng, Y.Z.; Sun, D.W. Application of hyperspectral imaging in food safety inspection and control: a review. Critical reviews in food science and nutrition 2012, 52, 1039–1058. [Google Scholar] [CrossRef]
  59. Shapaval, V.; Schmitt, J.; Møretrø, T.; Suso, H.; Skaar, I.; Åsli, A.; Lillehaug, D.; Kohler, A. Characterization of food spoilage fungi by FTIR spectroscopy. Journal of applied microbiology 2013, 114, 788–796. [Google Scholar] [CrossRef] [PubMed]
  60. Güneş, A.; Kalkan, H.; Durmuş, E.; Bütükcan, M.B. Detection of aflatoxin contaminated figs using Near-Infrared (NIR) reflectance spectroscopy. 2013 International Conference on Electronics, Computer and Computation (ICECCO). IEEE, 2013, pp. 123–126.
  61. Qin, J.; Chao, K.; Kim, M.S.; Lu, R.; Burks, T.F. Hyperspectral and multispectral imaging for evaluating food safety and quality. Journal of Food Engineering 2013, 118, 157–171. [Google Scholar] [CrossRef]
  62. Reinholds, I.; Bartkevics, V.; Silvis, I.C.; van Ruth, S.M.; Esslinger, S. Analytical techniques combined with chemometrics for authentication and determination of contaminants in condiments: A review. Journal of Food Composition and Analysis 2015, 44, 56–72. [Google Scholar] [CrossRef]
  63. Ma, J.; Sun, D.W.; Qu, J.H.; Liu, D.; Pu, H.; Gao, W.H.; Zeng, X.A. Applications of computer vision for assessing quality of agri-food products: a review of recent research advances. Critical reviews in food science and nutrition 2016, 56, 113–127. [Google Scholar] [CrossRef]
  64. Ropodi, A.; Panagou, E.; Nychas, G.J. Data mining derived from food analyses using non-invasive/non-destructive analytical techniques; determination of food authenticity, quality & safety in tandem with computer science disciplines. Trends in Food Science & Technology 2016, 50, 11–25. [Google Scholar]
  65. ElMasry, G.M.; Nakauchi, S. Image analysis operations applied to hyperspectral images for non-invasive sensing of food quality–A comprehensive review. Biosystems engineering 2016, 142, 53–82. [Google Scholar] [CrossRef]
  66. Geng, Z.; Zhao, S.; Zhu, Q.; Han, Y.; Xu, Y.; He, Y. Early warning modeling and application based on analytic hierarchy process integrated extreme learning machine. 2017 Intelligent Systems Conference (IntelliSys). IEEE, 2017, pp. 738–743.
  67. Shen, Y.; Tian, J.; Li, L.; Wu, Y.; Li, L. Feasibility of non-destructive internal quality analysis of pears by using near-infrared diffuse reflectance spectroscopy. 2017 9th International Conference on Modelling, Identification and Control (ICMIC). IEEE, 2017, pp. 31–36.
  68. Lasch, P.; Stämmler, M.; Zhang, M.; Baranska, M.; Bosch, A.; Majzner, K. FT-IR hyperspectral imaging and artificial neural network analysis for identification of pathogenic bacteria. Analytical chemistry 2018, 90, 8896–8904. [Google Scholar] [CrossRef]
  69. Kaushik, R.; Singhai, J. An approach for the development of a sensing system to monitor contamination in stored grain. 2019 6th International Conference on Signal Processing and Integrated Networks (SPIN). IEEE, 2019, pp. 880–884.
  70. Zhou, L.; Zhang, C.; Liu, F.; Qiu, Z.; He, Y. Application of deep learning in food: a review. Comprehensive reviews in food science and food safety 2019, 18, 1793–1811. [Google Scholar] [CrossRef]
  71. Öner, T.; Thiam, P.; Kos, G.; Krska, R.; Schwenker, F.; Mizaikoff, B. Machine learning algorithms for the automated classification of contaminated maize at regulatory limits via infrared attenuated total reflection spectroscopy. World Mycotoxin Journal 2019, 12, 113–122. [Google Scholar] [CrossRef]
  72. Guo, Z.; Wang, M.; Wu, J.; Tao, F.; Chen, Q.; Wang, Q.; Ouyang, Q.; Shi, J.; Zou, X. Quantitative assessment of zearalenone in maize using multivariate algorithms coupled to Raman spectroscopy. Food chemistry 2019, 286, 282–288. [Google Scholar] [CrossRef]
  73. Wan-dan, Z.; Ru-jin, S.; Cheng-wei, W.; Qian-xue, L.; Zhi-ping, X. Raman Spectroscopy Classification of Foodborne Pathogenic Bacteria Based on PCA-Stacking Model. 2019 International Conference on Intelligent Informatics and Biomedical Sciences (ICIIBMS). IEEE, 2019, pp. 304–307.
  74. Liu, W.; Zhao, P.; Wu, C.; Liu, C.; Yang, J.; Zheng, L. Rapid determination of aflatoxin B1 concentration in soybean oil using terahertz spectroscopy with chemometric methods. Food Chemistry 2019, 293, 213–219. [Google Scholar] [CrossRef]
  75. Sun, X.; Zhu, K.; Liu, J.; Hu, J.; Jiang, X.; Liu, Y.; Gong, Z. Terahertz spectroscopy determination of benzoic acid additive in wheat flour by machine learning. Journal of Infrared, Millimeter, and Terahertz Waves 2019, 40, 466–475. [Google Scholar] [CrossRef]
  76. Zareef, M.; Chen, Q.; Hassan, M.M.; Arslan, M.; Hashim, M.M.; Ahmad, W.; Kutsanedzie, F.Y.; Agyekum, A.A. An overview on the applications of typical non-linear algorithms coupled with NIR spectroscopy in food analysis. Food Engineering Reviews 2020, 12, 173–190. [Google Scholar] [CrossRef]
  77. Le, B.T. Application of deep learning and near infrared spectroscopy in cereal analysis. Vibrational Spectroscopy 2020, 106, 103009. [Google Scholar] [CrossRef]
  78. Wang, K.; Chen, L.; Ma, X.; Ma, L.; Chou, K.C.; Cao, Y.; Khan, I.U.; Gölz, G.; Lu, X. Arcobacter identification and species determination using Raman spectroscopy combined with neural networks. Applied and environmental microbiology 2020, 86, e00924–20. [Google Scholar] [CrossRef]
  79. Weng, S.; Yuan, H.; Zhang, X.; Li, P.; Zheng, L.; Zhao, J.; Huang, L. Deep learning networks for the recognition and quantitation of surface-enhanced Raman spectroscopy. Analyst 2020, 145, 4827–4835. [Google Scholar] [CrossRef] [PubMed]
  80. Sahu, B.; Tiwari, A.; Raheja, J.; Kumar, S. Development of Machine Learning & Edge IoT Based Non-destructive Food Quality Monitoring System using Raspberry Pi. 2020 IEEE International Conference on Computing, Power and Communication Technologies (GUCON). IEEE, 2020, pp. 449–455.
  81. Yu, X.L.; Sun, D.W.; He, Y. Emerging techniques for determining the quality and safety of tea products: A review. Comprehensive Reviews in Food Science and Food Safety 2020, 19, 2613–2638. [Google Scholar] [CrossRef]
  82. Nturambirwe, J.F.I.; Opara, U.L. Machine learning applications to non-destructive defect detection in horticultural products. Biosystems engineering 2020, 189, 60–83. [Google Scholar] [CrossRef]
  83. Wu, H.; Zheng, K.; Sfarra, S.; Liu, Y.; Yao, Y. Multiview learning for subsurface defect detection in composite products: A challenge on thermographic data analysis. IEEE Transactions on Industrial Informatics 2020, 16, 5996–6003. [Google Scholar] [CrossRef]
  84. Shen, F.; Huang, Y.; Jiang, X.; Fang, Y.; Li, P.; Liu, Q.; Hu, Q.; Liu, X. On-line prediction of hazardous fungal contamination in stored maize by integrating Vis/NIR spectroscopy and computer vision. Spectrochimica Acta Part A: Molecular and Biomolecular Spectroscopy 2020, 229, 118012. [Google Scholar] [CrossRef] [PubMed]
  85. Bertani, F.; Businaro, L.; Gambacorta, L.; Mencattini, A.; Brenda, D.; Di Giuseppe, D.; De Ninno, A.; Solfrizzo, M.; Martinelli, E.; Gerardino, A. Optical detection of aflatoxins B in grained almonds using fluorescence spectroscopy and machine learning algorithms. Food Control 2020, 112, 107073. [Google Scholar] [CrossRef]
  86. Rahi, S.; Mobli, H.; Jamshidi, B.; Azizi, A.; Sharifi, M. Achieving a robust Vis/NIR model for microbial contamination detection of Persian leek by spectral analysis based on genetic, iPLS algorithms and VIP scores. Postharvest Biology and Technology 2021, 175, 111413. [Google Scholar] [CrossRef]
  87. Mavani, N.R.; Ali, J.M.; Othman, S.; Hussain, M.; Hashim, H.; Rahman, N.A. Application of artificial intelligence in food industry—A guideline. Food Engineering Reviews 2022, 14, 134–175. [Google Scholar] [CrossRef]
  88. Ge, H.; Lv, M.; Lu, X.; Jiang, Y.; Wu, G.; Li, G.; Li, L.; Li, Z.; Zhang, Y. Applications of THz spectral imaging in the detection of agricultural products. Photonics. Multidisciplinary Digital Publishing Institute, 2021, Vol. 8, p. 518.
  89. Rivola, M.; Ibba, P.; Lugli, P.; Petti, L. Bioimpedance data statistical modelling for food quality classification and prediction. 2021 IEEE International Symposium on Circuits and Systems (ISCAS). IEEE, 2021, pp. 1–5.
  90. Xu, J.L.; Herrero-Langreo, A.; Lamba, S.; Ferone, M.; Scannell, A.G.; Caponigro, V.; Gowen, A.A. Characterisation and classification of foodborne bacteria using reflectance FTIR microscopic imaging. Molecules 2021, 26, 6318. [Google Scholar] [CrossRef] [PubMed]
  91. Magnus, I.; Virte, M.; Thienpont, H.; Smeesters, L. Combining optical spectroscopy and machine learning to improve food classification. Food Control 2021, 130, 108342. [Google Scholar] [CrossRef]
  92. Wang, D.; Greenwood, P.; Klein, M.S. Deep Learning for Rapid Identification of Microbes Using Metabolomics Profiles. Metabolites 2021, 11, 863. [Google Scholar] [CrossRef] [PubMed]
  93. Gomez-Gonzalez, E.; Fernandez-Muñoz, B.; Barriga-Rivera, A.; Navas-Garcia, J.M.; Fernandez-Lizaranzu, I.; Munoz-Gonzalez, F.J.; Parrilla-Giraldez, R.; Requena-Lancharro, D.; Guerrero-Claro, M.; Gil-Gamboa, P.; others. Hyperspectral image processing for the identification and quantification of lentiviral particles in fluid samples. Scientific Reports 2021, 11, 1–12.
  94. Guo, Z.; Guo, C.; Sun, L.; Zuo, M.; Chen, Q.; El-Seedi, H.R.; Zou, X. Identification of the apple spoilage causative fungi and prediction of the spoilage degree using electronic nose. Journal of Food Process Engineering 2021, 44, e13816. [Google Scholar] [CrossRef]
  95. Li, H.; Hassan, M.M.; Wang, J.; Wei, W.; Zou, M.; Ouyang, Q.; Chen, Q. Investigation of nonlinear relationship of surface enhanced Raman scattering signal for robust prediction of thiabendazole in apple. Food chemistry 2021, 339, 127843. [Google Scholar] [CrossRef] [PubMed]
  96. Vakilian, K.A. Metaheuristic Optimization to Improve Machine Learning in Raman Spectroscopic-based Detection of Foodborne Pathogens. 2021 7th International Conference on Signal Processing and Intelligent Systems (ICSPIS). IEEE, 2021, pp. 1–5.
  97. Ricci, M.; Vasquez, J.A.T.; Turvani, G.; Sirena, I.; Casu, M.R.; Vipiana, F. Microwave Sensing for Food Safety: a Neural Network Implementation. 2021 IEEE Conference on Antenna Measurements & Applications (CAMA). IEEE, 2021, pp. 444–447.
  98. Yin, J.; Hameed, S.; Xie, L.; Ying, Y. Non-destructive detection of foreign contaminants in toast bread with near infrared spectroscopy and computer vision techniques. Journal of Food Measurement and Characterization 2021, 15, 189–198. [Google Scholar] [CrossRef]
  99. Yan, S.; Wang, S.; Qiu, J.; Li, M.; Li, D.; Xu, D.; Li, D.; Liu, Q. Raman spectroscopy combined with machine learning for rapid detection of food-borne pathogens at the single-cell level. Talanta 2021, 226, 122195. [Google Scholar] [CrossRef] [PubMed]
  100. Zareef, M.; Arslan, M.; Hassan, M.M.; Ahmad, W.; Ali, S.; Li, H.; Ouyang, Q.; Wu, X.; Hashim, M.M.; Chen, Q. Recent advances in assessing qualitative and quantitative aspects of cereals using nondestructive techniques: A review. Trends in Food Science & Technology 2021, 116, 815–828. [Google Scholar]
  101. Nie, P.; Qu, F.; Lin, L.; He, Y.; Feng, X.; Yang, L.; Gao, H.; Zhao, L.; Huang, L. Trace identification and visualization of multiple benzimidazole pesticide residues on toona sinensis leaves using terahertz imaging combined with deep learning. International Journal of Molecular Sciences 2021, 22, 3425. [Google Scholar] [CrossRef] [PubMed]
  102. Yang, R.; Li, Y.; Zheng, J.; Qiu, J.; Song, J.; Xu, F.; Qin, B. A Novel Method for Carbendazim High-Sensitivity Detection Based on the Combination of Metamaterial Sensor and Machine Learning. Materials 2022, 15, 6093. [Google Scholar] [CrossRef] [PubMed]
  103. Kang, Z.; Zhao, Y.; Chen, L.; Guo, Y.; Mu, Q.; Wang, S. Advances in Machine Learning and Hyperspectral Imaging in the Food Supply Chain. Food Engineering Reviews 2022, 14, 596–616. [Google Scholar] [CrossRef]
  104. Yan, H.; Fan, W.; Chen, X.; Wang, H.; Qin, C.; Jiang, X. Component spectra extraction and quantitative analysis for preservative mixtures by combining terahertz spectroscopy and machine learning. Spectrochimica Acta Part A: Molecular and Biomolecular Spectroscopy 2022, 271, 120908. [Google Scholar] [CrossRef]
  105. Zhang, C.; Zhao, W.; Dong, L. Design of Food Safety Supervision System in the Background of Big Data. 2022 International Conference on Artificial Intelligence in Everything (AIE). IEEE, 2022, pp. 413–418.
  106. Rady, A.; Watson, N. Detection and quantification of peanut contamination in garlic powder using NIR sensors and machine learning. Journal of Food Composition and Analysis 2022, 114, 104820. [Google Scholar] [CrossRef]
  107. Bowler, A.L.; Ozturk, S.; Rady, A.; Watson, N. Domain Adaptation for In-Line Allergen Classification of Agri-Food Powders Using Near-Infrared Spectroscopy. Sensors 2022, 22, 7239. [Google Scholar] [CrossRef]
  108. Kim, Y.K.; Baek, I.; Lee, K.M.; Qin, J.; Kim, G.; Shin, B.K.; Chan, D.E.; Herrman, T.J.; Cho, S.k.; Kim, M.S. Investigation of reflectance, fluorescence, and Raman hyperspectral imaging techniques for rapid detection of aflatoxins in ground maize. Food Control 2022, 132, 108479. [Google Scholar] [CrossRef]
  109. Adejimi, O.E.; Ignat, T.; Sadhasivam, G.; Zakin, V.; Schmilovitch, Z.; Shapiro, O.H. Low-Resolution Raman Spectroscopy for the detection of contaminant species in algal bioreactors. Science of The Total Environment 2022, 809, 151138. [Google Scholar] [CrossRef] [PubMed]
  110. Cordovana, M.; Mauder, N.; Join-Lambert, O.; Gravey, F.; LeHello, S.; Auzou, M.; Pitti, M.; Zoppi, S.; Buhl, M.; Steinmann, J.; others. Machine learning-based typing of Salmonella enterica O-serogroups by the Fourier-Transform Infrared (FTIR) Spectroscopy-based IR Biotyper system. Journal of microbiological methods 2022, 201, 106564.
  111. Wang, B.; Deng, J.; Jiang, H. Markov Transition Field Combined with Convolutional Neural Network Improved the Predictive Performance of Near-Infrared Spectroscopy Models for Determination of Aflatoxin B1 in Maize. Foods 2022, 11, 2210. [Google Scholar] [CrossRef] [PubMed]
  112. Aviara, N.A.; Liberty, J.T.; Olatunbosun, O.S.; Shoyombo, H.A.; Oyeniyi, S.K. Potential application of hyperspectral imaging in food grain quality inspection, evaluation and control during bulk storage. Journal of Agriculture and Food Research 2022, p. 100288.
  113. Pampoukis, G.; Lytou, A.E.; Argyri, A.A.; Panagou, E.Z.; Nychas, G.J.E. Recent advances and applications of rapid microbial assessment from a food safety perspective. Sensors 2022, 22, 2800. [Google Scholar] [CrossRef]
  114. Hussain, M.; Zou, J.; Zhang, H.; Zhang, R.; Chen, Z.; Tang, Y. Recent Progress in Spectroscopic Methods for the Detection of Foodborne Pathogenic Bacteria. Biosensors 2022, 12, 869. [Google Scholar] [CrossRef] [PubMed]
  115. Manthou, E.; Karnavas, A.; Fengou, L.C.; Bakali, A.; Lianou, A.; Tsakanikas, P.; Nychas, G.J.E. Spectroscopy and imaging technologies coupled with machine learning for the assessment of the microbiological spoilage associated to ready-to-eat leafy vegetables. International Journal of Food Microbiology 2022, 361, 109458. [Google Scholar] [CrossRef]
  116. Shi, R.; Xia, F.; Zeng, W.; Qu, H. Raman spectroscopic classification of foodborne pathogenic bacteria based on PCA-Stacking model. Laser & Optoelectronics Progress 2019, 56, 043003. [Google Scholar]
  117. Umaquinga-Criollo, A.C.; Tamayo-Quintero, J.D.; Moreno-García, M.N.; Aalaila, Y.; Peluffo-Ordóñez, D.H. Developments on Support Vector Machines for Multiple-Expert Learning. Intelligent Data Engineering and Automated Learning–IDEAL 2021: 22nd International Conference, IDEAL 2021, Manchester, UK, November 25–27, 2021, Proceedings 22. Springer, 2021, pp. 587–598.
Figure 1. Generalized representation of our MultiScope Keywords-based Synthesis methodology.
Figure 1. Generalized representation of our MultiScope Keywords-based Synthesis methodology.
Preprints 88646 g001
Figure 2. The general workflow of our developed TriScope Keywords-based Synthesis for conducting this comprehensive review.
Figure 2. The general workflow of our developed TriScope Keywords-based Synthesis for conducting this comprehensive review.
Preprints 88646 g002
Figure 3. Data Collection process, using API for the Scopus databse and manual searching for Web of Science and IEEE Xplore databases.
Figure 3. Data Collection process, using API for the Scopus databse and manual searching for Web of Science and IEEE Xplore databases.
Preprints 88646 g003
Figure 4. the inclusion-exclusion process and criteria of selection.
Figure 4. the inclusion-exclusion process and criteria of selection.
Preprints 88646 g004
Figure 5. A map of all our collected papers. Each node represents a paper with its first author and year of publication. The size of a node represents the number of citations.
Figure 5. A map of all our collected papers. Each node represents a paper with its first author and year of publication. The size of a node represents the number of citations.
Preprints 88646 g005
Figure 6. This histogram represents the count of publishers for all papers.
Figure 6. This histogram represents the count of publishers for all papers.
Preprints 88646 g006
Figure 7. This table chart represents the count of journals for all papers.
Figure 7. This table chart represents the count of journals for all papers.
Preprints 88646 g007
Figure 8. This diagram is a chronological representation of our articles and their distribution over time, from 2001 to 2022. Each data-point represents an article, the colors are according to which field of study, and the lines are related to the decision-making objective.
Figure 8. This diagram is a chronological representation of our articles and their distribution over time, from 2001 to 2022. Each data-point represents an article, the colors are according to which field of study, and the lines are related to the decision-making objective.
Preprints 88646 g008
Figure 9. A map highlighting subject-related words and concepts that were strongly present within the literature, such as Spectroscopy (Graphical design generated using free-online tool Wordart).
Figure 9. A map highlighting subject-related words and concepts that were strongly present within the literature, such as Spectroscopy (Graphical design generated using free-online tool Wordart).
Preprints 88646 g009
Figure 11. Information and data workflow according to case studies within our collected papers.
Figure 11. Information and data workflow according to case studies within our collected papers.
Preprints 88646 g011
Table 1. Latest applications combining AI tools with analytical analysis for food safety and quality.
Table 1. Latest applications combining AI tools with analytical analysis for food safety and quality.
Ref. Analytical Approach AI Tool Problematic
[37] Spectroscopy Python-based portable system using Jetson TX2 Module Food classification four classes of coffee and purées
[38] Near-Infrared Spectroscopy Block Sparse Bayesian Learning (BSBL) With Fast Marginalized Likelihood Maximization (FMLM) Computational cost reduction for calculating the inverse of a large matrix containing absorption peak information
[39] Impedance spectroscopy A fuzzy logic model applied on the parameters extracted from Distribution of Relaxation Times (DRT) Meat-based food classification according to its freshness for different types of muscles
[40] TeraHertz (THz) spectroscopy and chemometrics Interval partial least squares (iPLS) for optimizing the THz frequency and other pre-processing techniques combined with extreme learning machine (ELM), genetic algorithm support vector machine (GA-SVM) and artificial bee colony algorithm support vector machine (ABC-SVM) for decision making Three typical Soybean origins identification
[41] Fourier transform infrared (FTIR) spectroscopy FTIR and multispectral imaging (MSI) coupled with Support Vector Machines (SVM) for regression Meat quality assessment, specifically minced pork patties stored under modified atmosphere packaging (MAP) conditions, by estimating the microbial population
[42] Raman spectroscopy A single Convolutional neural network (CNN) model development where hyper-parameters, activity functions, and loss functions were optimized Spectral data pre-processing simplification
[43] Dielectric spectroscopy Principal Component Analysis (PCA) for pre-processing and four models, namely, Support Vector Machine - SVM, K-nearest neighbor-KNN, Linear Discriminat -LD and Quadratic Discriminat-QD, for classification purposes Discrimination between three citrus juices in order to develop new technologies to identify adulteration
Table 2. Search strings with the highest number of results for Web of Science and IEEE Xplore.
Table 2. Search strings with the highest number of results for Web of Science and IEEE Xplore.
IEEE Xplore WOS
"neural networks"+"spectroscopy"+"food" :63 "Machine learning"+"spectroscopy"+"food" :235
"neural networks"+"chemical analysis"+"food" :58 "neural networks"+"spectroscopy"+"food" :160
"Artificial intelligence"+"chemical analysis"+"food" :57 "computer vision"+"spectroscopy"+"food" :111
"Machine learning"+"spectroscopy"+"food" :55 "Deep learning"+"spectroscopy"+"food" :77
"Artificial intelligence"+"spectroscopy"+"food" :50 "Machine learning"+"spectroscopy"+"crop" :69
"Machine learning"+"chemical analysis"+"food" :43 "Artificial intelligence"+"Analytical strategies"+"food" :37
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content.
Copyright: This open access article is published under a Creative Commons CC BY 4.0 license, which permit the free download, distribution, and reuse, provided that the author and preprint are cited in any reuse.
Prerpints.org logo

Preprints.org is a free preprint server supported by MDPI in Basel, Switzerland.

Subscribe

© 2024 MDPI (Basel, Switzerland) unless otherwise stated