Using deep learning to detect patients at risk for prostate cancer despite benign biopsies
Bojing Liu, Yinxi Wang, Philippe Weitz, Johan Lindberg, Johan Hartman,, Lars Egevad, Henrik Gr\"onberg, Martin Eklund, Mattias Rantalainen

TL;DR
This study developed a deep learning model to analyze prostate biopsy images, aiming to identify patients at risk for prostate cancer despite benign biopsy results, potentially reducing missed diagnoses.
Contribution
The paper introduces a novel deep convolutional neural network ensemble that predicts prostate cancer risk from benign biopsy images, improving detection beyond traditional methods.
Findings
ROC-AUC of 0.727 at biopsy level
Sensitivity of 0.348 at 90% specificity
Potential to reduce false negatives in prostate biopsies
Abstract
Background: Transrectal ultrasound guided systematic biopsies of the prostate is a routine procedure to establish a prostate cancer diagnosis. However, the 10-12 prostate core biopsies only sample a relatively small volume of the prostate, and tumour lesions in regions between biopsy cores can be missed, leading to a well-known low sensitivity to detect clinically relevant cancer. As a proof-of-principle, we developed and validated a deep convolutional neural network model to distinguish between morphological patterns in benign prostate biopsy whole slide images from men with and without established cancer. Methods: This study included 14,354 hematoxylin and eosin stained whole slide images from benign prostate biopsies from 1,508 men in two groups: men without an established prostate cancer (PCa) diagnosis and men with at least one core biopsy diagnosed with PCa. 80% of the…
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Taxonomy
TopicsProstate Cancer Diagnosis and Treatment · Radiomics and Machine Learning in Medical Imaging
MethodsPrincipal Components Analysis
