PET/CT is widely used in oncology. Yet the identification of lesions, as described by the PET response criteria in solid tumors (PERCIST), still relies on manual identification of a volume of interest (VOI), typically in the liver, for determining the optimal threshold. The process requires expert knowledge and is prone to errors and inter-observer variability. A fully automated procedure for the application of the PERCIST criteria for whole- body images is proposed. The method relies on automated localization of the liver on whole-body CT using a dense V-net trained on large field-of-view images. Inside the liver, a spherical VOI is determined which exhibits the lowest product of the coefficients of variation (defined as the standard deviation over the mean) in PET and CT. The liver segmentation achieved a median dice score of 0.87 ± 0.12 in 10-fold cross-validation, which proved to be sufficient for reliable identification of a VOI. The full pipeline was evaluated on an external PET/CT dataset of 18 patients. To assess reproducibility, geometric and intensity variations were applied, simulating potential image differences when scanning the same person under different conditions. The variability of the resulting threshold was evaluated and compared to the manual approach performed by three observers. The proposed method exhibited superior reproducibility with a mean threshold of 4.01 ± 0.02 SUVbw, compared to 4.11 ± 0.16 SUVbw for the manual method. The automated procedure renders the analysis of large amounts of PET/CT data feasible or could be used to detect anomalies in the manual approach.
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