Machine Learning Predictive Performance Evaluation of Conventional and Fuzzy Radiomics in Clinical Cancer Imaging Cohorts

Author:

Grahovac Marko1,Spielvogel Clemens1,Krajnc Denis1,Ecsedi Boglarka1,Traub-Weidinger Tatjana1,Rasul Sazan1,Kluge Kilian1,Zhao Meixin2,Li Xiang1,Hacker Marcus1,Haug Alexander1,Papp Laszlo3ORCID

Affiliation:

1. Medical University of Vienna: Medizinische Universitat Wien

2. Peking University Third Hospital

3. Medizinische Universitat Wien

Abstract

Abstract Background Hybrid imaging became an instrumental part of medical imaging, particularly cancer imaging processes in clinical routine. To date, several radiomic and machine learning studies investigated the feasibility of in vivo tumor characterization with variable outcomes. This study aims to investigate the effect of recently proposed fuzzy radiomics and compare its predictive performance to conventional radiomics in cancer imaging cohorts. In addition, lesion vs. lesion + surrounding fuzzy and conventional radiomic analysis was conducted. Methods Previously published 11C Methionine (MET) positron emission tomography (PET) glioma, 18F-FDG PET/computed tomography (CT) lung and 68GA-PSMA-11 PET/magneto-resonance imaging (MRI) prostate cancer retrospective cohorts were included in the analysis to predict their respective clinical end-points. Four delineation methods including manually-defined reference binary (Ref-B), its smoothed, fuzzified version (Ref-F), as well as extended binary (Ext-B) and its fuzzified version (Ext-F) were incorporated to extract imaging biomarker standardization initiative (IBSI)-conform radiomic features from each cohort. Machine learning for the four delineation approaches was performed utilizing a Monte Carlo cross-validation scheme to estimate the predictive performance of the four delineation methods. Results Reference fuzzy (Ref-F) delineation outperformed its binary delineation (Ref-B) counterpart in all cohorts within a volume range of 938–354987 mm3 with relative cross-validation area under the receiver operator characteristics curve (AUC) of + 0.07–0.11. Across all lesions, the highest performance difference was observed by the Ref-F delineation in the prostate cohort (AUC: 0.84 vs. 0.79–0.80). In addition, fuzzy radiomics decreased feature redundancy by approx. 20%. Conclusions 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.

Publisher

Research Square Platform LLC

Cited by 2 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Incremental Role of Radiomics and Artificial Intelligence;Advanced Imaging and Therapy in Neuro-Oncology;2024

2. Error mitigation enables PET radiomic cancer characterization on quantum computers;European Journal of Nuclear Medicine and Molecular Imaging;2023-08-04

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