Deep Radiomics Detection of Clinically Significant Prostate Cancer on Multicenter MRI: Initial Comparison to PI-RADS Assessment
G. A. Nketiah (1,2), M. R. Sunoqrot (1,2), E. Sandsmark (2), S., Lang{\o}rgen (2), K. M. Seln{\ae}s (1,2), H. Bertilsson (1,3), M. Elschot, (1,2), T. F. Bathen (1,2) (for the PCa-MAP Consortium. (1) Department of, Circulation, Medical Imaging, Norwegian University of Science and

TL;DR
This study develops a deep radiomics model for detecting clinically significant prostate cancer on multicenter MRI, showing performance comparable to expert PI-RADS assessment at the patient level.
Contribution
The paper introduces a novel deep radiomics approach combining segmentation, feature extraction, and machine learning for prostate cancer detection, validated across multiple datasets.
Findings
Deep radiomics achieved AUROC of 0.91, similar to PI-RADS.
Model sensitivity was 90% at a tumor probability cut-off.
Performance was comparable to PI-RADS at the patient level.
Abstract
Objective: To develop and evaluate a deep radiomics model for clinically significant prostate cancer (csPCa, grade group >= 2) detection and compare its performance to Prostate Imaging Reporting and Data System (PI-RADS) assessment in a multicenter cohort. Materials and Methods: This retrospective study analyzed biparametric (T2W and DW) prostate MRI sequences of 615 patients (mean age, 63.1 +/- 7 years) from four datasets acquired between 2010 and 2020: PROSTATEx challenge, Prostate158 challenge, PCaMAP trial, and an in-house (NTNU/St. Olavs Hospital) dataset. With expert annotations as ground truth, a deep radiomics model was trained, including nnU-Net segmentation of the prostate gland, voxel-wise radiomic feature extraction, extreme gradient boost classification, and post-processing of tumor probability maps into csPCa detection maps. Training involved 5-fold cross-validation using…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Prostate Cancer Diagnosis and Treatment · Advanced X-ray and CT Imaging
