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Robust, credible, and interpretable AI-based histopathological prostate cancer grading.
Westhaeusser, Fabian; Fuhlert, Patrick; Dietrich, Esther; Lennartz, Maximilian; Khatri, Robin; Kaiser, Nico; Röbeck, Pontus; Bülow, Roman; von Stillfried, Saskia; Witte, Anja; Ladjevardi, Sam; Drotte, Anders; Severgardh, Peter; Baumbach, Jan; Puelles, Victor G; Häggman, Michael; Brehler, Michael; Boor, Peter; Walhagen, Peter; Dragomir, Anca; Busch, Christer; Graefen, Markus; Bengtsson, Ewert; Sauter, Guido; Zimmermann, Marina; Bonn, Stefan.
  • Westhaeusser F; Institute of Medical Systems Biology, Center for Biomedical AI (bAIome), Center for Molecular Neurobiology Hamburg (ZMNH), University Medical Center Hamburg-Eppendorf, Hamburg, Germany.
  • Fuhlert P; Spearpoint Analytics AB, Stockholm, Sweden.
  • Dietrich E; Institute of Medical Systems Biology, Center for Biomedical AI (bAIome), Center for Molecular Neurobiology Hamburg (ZMNH), University Medical Center Hamburg-Eppendorf, Hamburg, Germany.
  • Lennartz M; Spearpoint Analytics AB, Stockholm, Sweden.
  • Khatri R; Institute of Medical Systems Biology, Center for Biomedical AI (bAIome), Center for Molecular Neurobiology Hamburg (ZMNH), University Medical Center Hamburg-Eppendorf, Hamburg, Germany.
  • Kaiser N; Institute of Pathology, University Medical Center Hamburg-Eppendorf, Hamburg, Germany.
  • Röbeck P; Institute of Medical Systems Biology, Center for Biomedical AI (bAIome), Center for Molecular Neurobiology Hamburg (ZMNH), University Medical Center Hamburg-Eppendorf, Hamburg, Germany.
  • Bülow R; Institute of Medical Systems Biology, Center for Biomedical AI (bAIome), Center for Molecular Neurobiology Hamburg (ZMNH), University Medical Center Hamburg-Eppendorf, Hamburg, Germany.
  • von Stillfried S; III. Department of Medicine, University Medical Center Hamburg-Eppendorf, Hamburg, Germany.
  • Witte A; Department of Urology, Uppsala University Hospital, Uppsala, Sweden.
  • Ladjevardi S; Institute of Pathology, RWTH Aachen University Hospital, Aachen, Germany.
  • Drotte A; Institute of Pathology, RWTH Aachen University Hospital, Aachen, Germany.
  • Severgardh P; Institute of Medical Systems Biology, Center for Biomedical AI (bAIome), Center for Molecular Neurobiology Hamburg (ZMNH), University Medical Center Hamburg-Eppendorf, Hamburg, Germany.
  • Baumbach J; Department of Urology, Uppsala University Hospital, Uppsala, Sweden.
  • Puelles VG; Spearpoint Analytics AB, Stockholm, Sweden.
  • Häggman M; Spearpoint Analytics AB, Stockholm, Sweden.
  • Brehler M; Institute of Computational Systems Biology, University of Hamburg, Germany.
  • Boor P; III. Department of Medicine, University Medical Center Hamburg-Eppendorf, Hamburg, Germany.
  • Walhagen P; Department of Clinical Medicine, Aarhus University, Aarhus, Denmark.
  • Dragomir A; Department of Pathology, Aarhus University Hospital, Aarhus, Denmark.
  • Busch C; Department of Urology, Uppsala University Hospital, Uppsala, Sweden.
  • Graefen M; Institute of Medical Systems Biology, Center for Biomedical AI (bAIome), Center for Molecular Neurobiology Hamburg (ZMNH), University Medical Center Hamburg-Eppendorf, Hamburg, Germany.
  • Bengtsson E; Institute of Pathology, RWTH Aachen University Hospital, Aachen, Germany.
  • Sauter G; Spearpoint Analytics AB, Stockholm, Sweden.
  • Zimmermann M; Department of Pathology, Uppsala University Hospital and Department of Immunology, Genetics and Pathology, Uppsala University, Uppsala, Sweden.
  • Bonn S; Spearpoint Analytics AB, Stockholm, Sweden.
medRxiv ; 2024 Jul 10.
Article en En | MEDLINE | ID: mdl-39040171
ABSTRACT

Background:

Prostate cancer (PCa) is among the most common cancers in men and its diagnosis requires the histopathological evaluation of biopsies by human experts. While several recent artificial intelligence-based (AI) approaches have reached human expert-level PCa grading, they often display significantly reduced performance on external datasets. This reduced performance can be caused by variations in sample preparation, for instance the staining protocol, section thickness, or scanner used. Another limiting factor of contemporary AI-based PCa grading is the prediction of ISUP grades, which leads to the perpetuation of human annotation errors.

Methods:

We developed the prostate cancer aggressiveness index (PCAI), an AI-based PCa detection and grading framework that is trained on objective patient outcome, rather than subjective ISUP grades. We designed PCAI as a clinical application, containing algorithmic modules that offer robustness to data variation, medical interpretability, and a measure of prediction confidence. To train and evaluate PCAI, we generated a multicentric, retrospective, observational trial consisting of six cohorts with 25,591 patients, 83,864 images, and 5 years of median follow-up from 5 different centers and 3 countries. This includes a high-variance dataset of 8,157 patients and 28,236 images with variations in sample thickness, staining protocol, and scanner, allowing for the systematic evaluation and optimization of model robustness to data variation. The performance of PCAI was assessed on three external test cohorts from two countries, comprising 2,255 patients and 9,437 images.

Findings:

Using our high-variance datasets, we show how differences in sample processing, particularly slide thickness and staining time, significantly reduce the performance of AI-based PCa grading by up to 6.2 percentage points in the concordance index (C-index). We show how a select set of algorithmic improvements, including domain adversarial training, conferred robustness to data variation, interpretability, and a measure of credibility to PCAI. These changes lead to significant prediction improvement across two biopsy cohorts and one TMA cohort, systematically exceeding expert ISUP grading in C-index and AUROC by up to 22 percentage points.

Interpretation:

Data variation poses serious risks for AI-based histopathological PCa grading, even when models are trained on large datasets. Algorithmic improvements for model robustness, interpretability, credibility, and training on high-variance data as well as outcome-based severity prediction gives rise to robust models with above ISUP-level PCa grading performance.
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