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Machine learning predictive performance evaluation of conventional and fuzzy radiomics in clinical cancer imaging cohorts.

M GrahovacC P SpielvogelD KrajncB EcsediT Traub-WeidingerS RasulK KlugeM ZhaoX LiM HackerA HaugLaszlo Papp
Published in: European journal of nuclear medicine and molecular imaging (2023)
Fuzzy radiomics has the potential to increase predictive performance particularly in small lesion sizes compared to conventional binary radiomics in PET. We hypothesize that this effect is due to the ability of fuzzy radiomics to model partial volume effects and delineation uncertainties at small lesion boundaries. In addition, we consider that the lower redundancy of fuzzy radiomic features supports the identification of imaging biomarkers in future studies. Future studies shall consider systematically analyzing lesions and their surroundings with fuzzy and binary radiomics.
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