Automated Gleason grading of prostate cancer tissue microarrays via deep learning

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作者
Eirini Arvaniti
Kim S. Fricker
Michael Moret
Niels Rupp
Thomas Hermanns
Christian Fankhauser
Norbert Wey
Peter J. Wild
Jan H. Rüschoff
Manfred Claassen
机构
[1] Institute for Molecular Systems Biology,Department of Pathology and Molecular Pathology
[2] ETH Zurich,Department of Urology
[3] University of Zurich,Dr. Senckenberg Institute of Pathology
[4] University of Zurich,undefined
[5] University Hospital Frankfurt,undefined
[6] Swiss Institute of Bioinformatics (SIB),undefined
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The Gleason grading system remains the most powerful prognostic predictor for patients with prostate cancer since the 1960s. Its application requires highly-trained pathologists, is tedious and yet suffers from limited inter-pathologist reproducibility, especially for the intermediate Gleason score 7. Automated annotation procedures constitute a viable solution to remedy these limitations. In this study, we present a deep learning approach for automated Gleason grading of prostate cancer tissue microarrays with Hematoxylin and Eosin (H&E) staining. Our system was trained using detailed Gleason annotations on a discovery cohort of 641 patients and was then evaluated on an independent test cohort of 245 patients annotated by two pathologists. On the test cohort, the inter-annotator agreements between the model and each pathologist, quantified via Cohen’s quadratic kappa statistic, were 0.75 and 0.71 respectively, comparable with the inter-pathologist agreement (kappa = 0.71). Furthermore, the model’s Gleason score assignments achieved pathology expert-level stratification of patients into prognostically distinct groups, on the basis of disease-specific survival data available for the test cohort. Overall, our study shows promising results regarding the applicability of deep learning-based solutions towards more objective and reproducible prostate cancer grading, especially for cases with heterogeneous Gleason patterns.
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