1. Introduction
Proteins are the fundamental workhorses of cellular processes, playing critical roles in signal transduction, cell division, metabolism, and countless other biological functions [
1]. While early structural biology studies portrayed proteins as static entities, it has become increasingly clear that proteins are dynamic molecules undergoing complex motions across multiple timescales [
2]. These motions range from femtosecond vibrations of individual atoms to large-scale domain movements occurring over microseconds to milliseconds [
3]. Understanding protein dynamics is crucial for elucidating how proteins carry out their diverse functions and how these motions relate to disease states and drug interactions [
4].
The field of protein dynamics has seen remarkable progress in recent years, driven by advances in biophysical techniques, computational methods, and the integration of artificial intelligence (AI) approaches [
5]. Experimental methods such as nuclear magnetic resonance (NMR) spectroscopy, X-ray crystallography, and cryo-electron microscopy (cryo-EM) have provided unprecedented insights into protein structure and dynamics at atomic resolution [
6]. NMR relaxation experiments, in particular, have enabled the characterization of protein motions across a wide range of timescales, from picoseconds to seconds [
7].
Complementing these experimental approaches, molecular dynamics (MD) simulations have emerged as a powerful tool for studying protein dynamics at atomistic detail [
8]. MD simulations can provide a continuous trajectory of protein motions, allowing researchers to observe conformational changes and transient states that may be difficult to capture experimentally [
9]. Recent advances in computing power and specialized hardware have enabled simulations to reach biologically relevant timescales of microseconds to milliseconds [
8].
The integration of machine learning and AI techniques with traditional biophysical methods has opened up new avenues for studying protein dynamics [
6]. Deep learning models, such as AlphaFold2, have revolutionized protein structure prediction and are now being applied to predict protein dynamics and conformational ensembles [
10]. These AI-powered approaches can rapidly generate hypotheses about protein motions and interactions, guiding experimental design and accelerating the discovery process.
One area where the study of protein dynamics has had a significant impact is in understanding allosteric regulation [
11]. Allostery, the process by which binding at one site affects protein function at a distant site, often involves subtle conformational changes and dynamic processes [
12]. Advanced NMR techniques and MD simulations have revealed how allosteric signals propagate through protein structures, providing insights into the design of allosteric drugs and the evolution of protein function [
13]. Protein dynamics also play a crucial role in enzyme catalysis [
14]. While the static lock-and-key model of enzyme-substrate interactions has long been abandoned, recent studies have shown that enzyme dynamics can contribute to catalysis in various ways [
15]. These include promoting the formation of reactive conformations, facilitating the sampling of transition states, and modulating the free energy landscape of the reaction [
16,
17]. Understanding these dynamic contributions is essential for rational enzyme design and the development of novel biocatalysts [
18].
In the field of structural biology, the recognition of protein dynamics has led to a shift from static structural models to ensemble representations [
19]. Methods such as ensemble refinement in X-ray crystallography and integrative structural biology approaches combine data from multiple experimental sources to generate more accurate and dynamic models of protein structure and function [
20,
21]. These ensemble models provide a more realistic picture of protein behavior in solution and cellular environments [
22].
The study of intrinsically disordered proteins (IDPs) and intrinsically disordered regions (IDRs) has further highlighted the importance of protein dynamics [
23]. These proteins and regions lack a stable three-dimensional structure under physiological conditions but play critical roles in cellular signaling and regulation [
24]. Advanced NMR techniques, single-molecule fluorescence, and computational methods have revealed how IDPs/IDRs exploit their conformational flexibility to mediate diverse interactions and functions [
25]. Recent developments in single-molecule techniques have provided unprecedented insights into protein dynamics at the individual molecule level [
26]. Methods such as single-molecule FRET (smFRET) and high-speed atomic force microscopy (HS-AFM) allow researchers to observe protein motions in real-time, revealing rare conformations and heterogeneous behaviors that may be masked in ensemble measurements [
27,
28].
The integration of protein dynamics into drug discovery and design has led to new strategies for developing more effective and selective therapeutics [
29]. Computational approaches that account for protein flexibility, such as ensemble docking and molecular dynamics-based virtual screening, have improved the ability to identify novel drug candidates and predict their binding modes [
30]. Additionally, targeting specific dynamic states or allosteric sites of proteins has emerged as a promising approach for modulating protein function and developing drugs for previously "undruggable" targets [
31].
2. Experimental Techniques for Studying Protein Dynamics
Figure 1.
Advanced Experimental Techniques and Applications for Studying Protein Dynamics. (A) Schematic diagram of advanced Cryo-Electron Microscopy (Cryo-EM) techniques, including Time-resolved cryo-EM, Cryo-electron tomography, and Micro-crystal electron diffraction (MicroED). (B) Application fields of protein dynamics research using Nuclear Magnetic Resonance (NMR) Spectroscopy techniques, including Relaxation dispersion experiments, Paramagnetic relaxation enhancement (PRE), and Residual dipolar couplings (RDCs). (C) Application fields of protein dynamics research using Fluorescence-Based Techniques, including Single-molecule FRET, Fluorescence correlation spectroscopy (FCS), and Fluorescence lifetime imaging microscopy (FLIM).
Figure 1.
Advanced Experimental Techniques and Applications for Studying Protein Dynamics. (A) Schematic diagram of advanced Cryo-Electron Microscopy (Cryo-EM) techniques, including Time-resolved cryo-EM, Cryo-electron tomography, and Micro-crystal electron diffraction (MicroED). (B) Application fields of protein dynamics research using Nuclear Magnetic Resonance (NMR) Spectroscopy techniques, including Relaxation dispersion experiments, Paramagnetic relaxation enhancement (PRE), and Residual dipolar couplings (RDCs). (C) Application fields of protein dynamics research using Fluorescence-Based Techniques, including Single-molecule FRET, Fluorescence correlation spectroscopy (FCS), and Fluorescence lifetime imaging microscopy (FLIM).
2.1. Advances in Cryo-EM for Dynamics Studies:
Cryogenic Electron Microscopy (Cryo-EM) has revolutionized structural biology by enabling the visualization of proteins in near-native states without the need for crystallization. Recent developments in cryo-EM have provided unprecedented insights into protein dynamics, particularly for large, flexible complexes.
2.1.1. Time-resolved cryo-EM: Capturing protein motions at different time points
Time-resolved cryogenic electron microscopy (cryo-EM) is an emerging technique in structural biology that allows researchers to capture structural states that are too transient for standard methods [
32]. This technique has revolutionized the field by enabling the visualization of proteins in near-native states without the need for crystallization [
33]. Recent developments in cryo-EM have provided unprecedented insights into protein dynamics, particularly for large, flexible complexes [
34]. By freezing samples at different time points, time-resolved cryo-EM can trap non-equilibrium states and determine conformations present after defined periods, typically in the millisecond time frame [
35]. This approach has been instrumental in elucidating the mechanics of molecular machines such as ribosomes and polymerases, which undergo complex, multistep processes during their functional cycles [
34]. Methods such as microsecond time-resolved cryo-EM have enabled observations of fast protein dynamics, revealing detailed pictures of conformational changes that occur on very short timescales [
33]. These advancements highlight the potential of time-resolved cryo-EM to fundamentally advance our understanding of protein function and dynamics [
32,
35].
2.1.2. Cryo-electron tomography: Visualizing proteins in their cellular context
Cryo-electron tomography (Cryo-ET) is a cutting-edge technique that enables the visualization of proteins within their native cellular environments, offering unprecedented insights into their structural organization and interactions within the complex milieu of living cells [
36]. This method combines the principles of electron tomography with cryogenic preservation, allowing researchers to capture three-dimensional images of biological samples without the need for crystallization or chemical fixation, thus preserving their native states [
37]. The ability to visualize intact cells and tissues while maintaining the spatial relationships between proteins and other cellular components represents a significant advancement over traditional imaging methods [
38]. Recent technological advancements in Cryo-ET have significantly improved resolution and data acquisition speeds, facilitating the observation of dynamic processes at molecular scales [
39]. Furthermore, tools such as subtomogram averaging have enhanced the high-resolution analysis of large molecular complexes, providing crucial information about protein localization and conformational states within their cellular contexts [
40]. As research progresses, Cryo-ET holds immense potential for advancing our understanding of biological systems by enabling the direct observation of proteins functioning in situ [
41].
2.1.3. Microcrystal electron diffraction (MicroED): Studying small molecule dynamics
Microcrystal electron diffraction (MicroED) is an innovative cryo-electron microscopy technique that enables high-resolution structural analysis of small crystals and molecules, providing crucial insights for studying small molecule dynamics [
42]. This method, first developed in 2013, allows researchers to obtain structural data from nanocrystals that are one-billionth the size of those required for X-ray crystallography, expanding its applicability to a wide range of small molecules including natural products and drug candidates [
43]. Since its inception, MicroED has undergone significant advancements in data collection and analysis protocols, with recent breakthroughs in phasing strategies enhancing its capabilities [
44]. The technique has demonstrated remarkable versatility, successfully determining structures for over 40 different proteins, oligopeptides, and organic molecules [
42]. MicroED offers unique advantages such as reduced radiation damage and the ability to capture dynamic processes that may be challenging to observe with traditional crystallography methods. By enabling structure determination from seemingly amorphous powders or very fine needle-like crystals, MicroED has opened new avenues for investigating previously inaccessible targets, particularly in the realm of natural products and small molecule research. As the field continues to evolve, MicroED holds immense potential for advancing our understanding of molecular interactions and dynamics, with significant implications for drug discovery and development [
45].
2.2. Nuclear Magnetic Resonance (NMR) Spectroscopy
NMR spectroscopy remains a powerful tool for studying protein dynamics, offering atomic-level resolution and the ability to probe motions across a wide range of timescales. Recent advances include:
2.2.1. Relaxation dispersion experiments: Detecting and characterizing excited states
Relaxation dispersion NMR spectroscopy is a powerful technique used to detect and characterize low-populated, transient excited states of biomolecules by quantifying the broadening of NMR resonance lines due to chemical exchange between ground and excited states [
46,
47]. This method relies on the exchange between highly populated, NMR-visible ground states and sparsely populated, NMR-invisible excited states, transferring information about magnetic resonance properties such as relaxation parameters, chemical shifts, and residual dipolar couplings from the invisible state to the observable species [
47]. The technique provides detailed kinetic and thermodynamic data, enabling the study of structural and dynamic properties of these excited states on the millisecond timescale [
48]. Various experiments, including Carr–Purcell–Meiboom–Gill (CPMG) and rotating frame relaxation dispersion (R1ρ) methods, are employed to probe these exchange processes, often requiring isotopic labeling of the macromolecules under study [
48,
49]. Applications of relaxation dispersion NMR have revealed critical insights into protein folding pathways, RNA secondary structure dynamics, and the behavior of large molecular machines, offering a high-resolution view of intermediate states that are otherwise challenging to study [
50,
51]. This approach is complementary to other biophysical techniques and can be performed in the absence of denaturants, making it a versatile tool for studying biomolecular dynamics in native-like conditions [
52].
2.2.2. Paramagnetic relaxation enhancement (PRE): Probing long-range interactions
Paramagnetic relaxation enhancement (PRE) is a powerful technique in nuclear magnetic resonance (NMR) spectroscopy that utilizes the magnetic dipolar interactions between unpaired electrons in a paramagnetic center and nearby nuclei to increase nuclear relaxation rates [
53,
54]. This effect is measurable at long distances, making it valuable for probing transient, lowly populated states and long-range interactions in macromolecules. PRE can be applied using intrinsic paramagnetic centers in metalloproteins or by introducing paramagnetic labels through chemical modification [
54]. The technique is particularly useful for studying protein dynamics, structure, and interactions, as it can provide information on sparsely populated states and conformational changes that are difficult to detect using other methods [
55,
56]. PRE measurements typically involve comparing nuclear relaxation rates between paramagnetic and diamagnetic samples, with transverse (Γ2) PRE rates generally providing the most reliable and accurate data [
54]. Recent advancements have expanded the application of PRE to include solvent accessibility studies, nanostructure determination in materials, and enhancing temporal resolution in NMR experiments [
57,
58]. The versatility of PRE has made it an invaluable tool in structural biology, materials science, and other fields where understanding molecular interactions and dynamics is crucial [
59].
2.2.3. Residual dipolar couplings (RDCs): Characterizing domain orientations and flexibility
Residual dipolar couplings (RDCs) are a valuable tool in nuclear magnetic resonance (NMR) spectroscopy for characterizing the relative orientations and flexibility of molecular domains. RDCs arise when molecules in solution exhibit partial alignment, causing an incomplete averaging of spatially anisotropic dipolar couplings, which provides orientation-dependent restraints that are crucial for structural determination [
60]. This partial alignment can be achieved using alignment media such as liquid crystalline phases or stretched polymer gels, which create an anisotropic environment necessary for RDC measurements [
61]. RDCs are particularly useful for studying multi-domain proteins, as they provide information on the relative orientation of domains and their dynamic behavior [
62]. By measuring the dipolar couplings between NMR-active nuclei, RDCs deliver insights into the global molecular shape and conformational flexibility, which are essential for understanding the functional motions and interactions of biomolecules. The technique has been successf[
63]ully applied to a variety of structural and dynamic studies, including the analysis of protein-substrate interactions and the determination of quaternary structures of oligomers in equilibrium with monomers [
64]. Recent advancements in RDC measurement and analysis have further expanded its applications, making it an indispensable tool in structural biology and related fields [
63].
2.3. Fluorescence-Based Techniques
Fluorescence methods offer high sensitivity and the ability to study proteins in solution or in living cells:
2.3.1. Single-molecule FRET: Probing conformational changes in individual molecules
Single-molecule Förster resonance energy transfer (smFRET) is a powerful technique for studying conformational dynamics and interactions of individual biomolecules with high spatial and temporal resolution [
27,
65,
66]. This method relies on measuring the energy transfer efficiency between donor and acceptor fluorophores attached to specific sites on a molecule of interest [
65,
67]. smFRET can reveal heterogeneous populations, transient intermediates, and dynamic fluctuations that are often masked in ensemble measurements [
66,
68]. Recent advances have improved the precision and accuracy of smFRET measurements, with studies reporting distance uncertainties of ±2-5 Å [
27,
69]. The technique has been successfully applied to investigate protein folding, enzyme mechanisms, nucleic acid structures, and membrane protein dynamics [65-67]. Developments in multicolor FRET schemes allow probing of more complex biomolecular systems [
66]. Additionally, progress in data analysis methods, including hidden Markov modeling and photon-by-photon approaches, enables extraction of kinetic information on microsecond to millisecond timescales [
68]. While challenges remain in achieving higher temporal resolution and applying smFRET in cellular environments, ongoing innovations continue to expand its capabilities for elucidating biomolecular structure and function at the single-molecule level [
27,
69].
2.3.2. Fluorescence correlation spectroscopy (FCS): Analyzing diffusion and binding kinetics
Fluorescence correlation spectroscopy (FCS) is a powerful technique for quantifying molecular dynamics and has been widely applied in diverse fields such as biomedicine, biophysics, and chemistry [
70]. By analyzing the time-correlation of fluorescence fluctuations induced by molecules diffusing through a focused light, FCS can quantitatively evaluate the concentration, diffusion coefficient, and interactions of molecules both in vitro and in vivo [
70,
71]. The technique measures the spatial and temporal correlation of individual molecules, providing a bridge between classical ensemble and contemporary single-molecule measurements [
71]. Typically implemented on a fluorescence microscope, FCS samples femtoliter volumes, making it especially useful for characterizing small dynamic systems such as biological cells. FCS can investigate various molecular parameters, including diffusion coefficients, chemical rate constants, molecular concentrations, and fluorescence brightness. The method's sensitivity allows for the analysis of extremely low-concentration biomolecules, with applications ranging from studying diffusion and chemical dynamics to monitoring biomolecular interactions and enzyme kinetics. Recent advancements in FCS include dual-color cross-correlation, multi-focus FCS, and scanning FCS, which enhance its capability to probe complex biological environments and interactions [
70,
72]. Despite its requirement for high signal-to-noise ratios and long time traces, FCS remains a versatile tool, with ongoing developments aimed at improving its temporal resolution and reducing phototoxic effects on living samples [
73].
2.3.3. Fluorescence lifetime imaging microscopy (FLIM): Mapping protein interactions in cells
Fluorescence lifetime imaging microscopy (FLIM) is a powerful technique that measures the time-resolved fluorescence decay of fluorophores to generate contrast in microscopy images, providing information beyond traditional intensity-based imaging [
74]. FLIM exploits the characteristic excited-state lifetime of fluorophores, which is sensitive to the local molecular environment, enabling the technique to probe various cellular parameters such as pH, viscosity, and protein interactions. The method typically employs time-correlated single-photon counting (TCSPC) to measure fluorescence lifetimes with picosecond resolution, allowing for precise quantification of molecular dynamics. FLIM is particularly valuable for studying protein-protein interactions through Förster resonance energy transfer (FRET), where the fluorescence lifetime of a donor fluorophore decreases in the presence of a nearby acceptor, indicating molecular proximity within 1-10 nm [
75]. Recent advances in FLIM instrumentation, including the development of fast FLIM techniques and improved spatial resolution, have expanded its capabilities for live-cell imaging and subcellular analysis. Computational developments in FLIM data analysis, such as phasor approaches and machine learning algorithms, have enhanced the extraction of biologically relevant information from complex lifetime datasets [
76]. FLIM has found widespread applications in cell biology, including the study of protein conformational changes, ligand-receptor interactions, and the spatiotemporal dynamics of signaling complexes in living cells [
75]. The technique's ability to discriminate between free and bound states of fluorescently labeled proteins makes it particularly suited for mapping the formation and dissociation of protein complexes in various cellular compartments. As FLIM continues to evolve, its integration with other advanced microscopy techniques and the development of novel fluorescent probes promise to further expand its utility in unraveling the intricate molecular interactions that underlie cellular function [
76].
Author Contributions
Conceptualization, investigation, writing, and original draft preparation, A.S. (Ahrum Son); H.K. (Hyunsoo Kim) – Visualization, and proofreading, W.K. (Woojin Kim); J.P. (Jongham Park); W.L. (Wonseok Lee); Y.L. (Yerim Lee) – Supervision, Project Administration, Funding Acquisition, Review and Editing, H.K. (Hyunsoo Kim). All authors have read and agreed to the published version of the manuscript.