Bridging the gap between prostate radiology and pathology through machine learning
Indrani Bhattacharya, David S. Lim, Han Lin Aung, Xingchen Liu, Arun, Seetharaman, Christian A. Kunder, Wei Shao, Simon J. C. Soerensen, Richard E., Fan, Pejman Ghanouni, Katherine J. To'o, James D. Brooks, Geoffrey A. Sonn,, Mirabela Rusu

TL;DR
This study compares various labeling strategies for machine learning models to detect prostate cancer on MRI, finding that digital pathologist labels lead to the most accurate and reliable models, bridging radiology and pathology.
Contribution
It systematically evaluates the impact of different ground truth labels on model performance, highlighting the advantages of digital pathologist labels for prostate cancer detection.
Findings
Digital pathologist labels yield high concordance with pathologists.
Models trained with digital labels outperform others across cohorts.
Using digital labels reduces annotation challenges and variability.
Abstract
Prostate cancer is the second deadliest cancer for American men. While Magnetic Resonance Imaging (MRI) is increasingly used to guide targeted biopsies for prostate cancer diagnosis, its utility remains limited due to high rates of false positives and false negatives as well as low inter-reader agreements. Machine learning methods to detect and localize cancer on prostate MRI can help standardize radiologist interpretations. However, existing machine learning methods vary not only in model architecture, but also in the ground truth labeling strategies used for model training. In this study, we compare different labeling strategies, namely, pathology-confirmed radiologist labels, pathologist labels on whole-mount histopathology images, and lesion-level and pixel-level digital pathologist labels (previously validated deep learning algorithm on histopathology images to predict pixel-level…
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