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arxiv: 1907.01368 · v1 · submitted 2019-07-02 · 💻 cs.CV · cs.AI· eess.IV

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Pathologist-Level Grading of Prostate Biopsies with Artificial Intelligence

Peter Str\"om (1) , Kimmo Kartasalo (2) , Henrik Olsson (1) , Leslie Solorzano (3) , Brett Delahunt (4) , Daniel M. Berney (5) , David G. Bostwick (6) , Andrew J. Evans (7)
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David J. Grignon (8) Peter A. Humphrey (9) Kenneth A. Iczkowski (10) James G. Kench (11) Glen Kristiansen (12) Theodorus H. van der Kwast (7) Katia R.M. Leite (13) Jesse K. McKenney (14) Jon Oxley (15) Chin-Chen Pan (16) Hemamali Samaratunga (17) John R. Srigley (18) Hiroyuki Takahashi (19) Toyonori Tsuzuki (20) Murali Varma (21) Ming Zhou (22) Johan Lindberg (1) Cecilia Bergstr\"om (23) Pekka Ruusuvuori (2) Carolina W\"ahlby (3 24) Henrik Gr\"onberg (1 25) Mattias Rantalainen (1) Lars Egevad (26) Martin Eklund (1) ((1) Department of Medical Epidemiology Biostatistics Karolinska Institutet Stockholm Sweden (2) Faculty of Medicine Health Technology Tampere University Tampere Finland (3) Centre for Image Analysis Department of Information Technology Uppsala University Uppsala (4) Department of Pathology Molecular Medicine Wellington School of Medicine Health Sciences University of Otago Wellington New Zealand (5) Barts Cancer Institute Queen Mary University of London London UK (6) Bostwick Laboratories Orlando FL USA (7) Laboratory Medicine Program University Health Network Toronto General Hospital Toronto ON Canada (8) Department of Pathology Laboratory Medicine Indiana University School of Medicine Indianapolis IN (9) Department of Pathology Yale University School of Medicine New Haven CT (10) Department of Pathology Medical College of Wisconsin Milwaukee WI (11) Department of Tissue Pathology Diagnostic Oncology Royal Prince Alfred Hospital Central Clinical School University of Sydney Sydney NSW Australia (12) Institute of Pathology University Hospital Bonn Bonn Germany (13) Department of Urology Laboratory of Medical Research University of S\~ao Paulo Medical School S\~ao Paulo Brazil (14) Pathology Laboratory Medicine Institute Cleveland Clinic Cleveland OH (15) Department of Cellular Pathology Southmead Hospital Bristol (16) Department of Pathology Taipei Veterans General Hospital Taipei Taiwan (17) Aquesta Uropathology University of Queensland Brisbane QLD (18) Department of Laboratory Medicine Pathobiology University of Toronto (19) Department of Pathology Jikei University School of Medicine Tokyo Japan (20) Department of Surgical Pathology School of Medicine Aichi Medical University Nagoya (21) Department of Cellular Pathology University Hospital of Wales Cardiff (22) Department of Pathology UT Southwestern Medical Center Dallas TX (23) Department of Immunology Genetics Pathology (24) BioImage Informatics Facility of SciLifeLab (25) Department of Oncology S:t G\"oran Hospital (26) Department of Oncology Sweden)
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classification 💻 cs.CV cs.AIeess.IV
keywords prostatebiopsiescancergradingpathologistspathologyperformanceurological
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Background: An increasing volume of prostate biopsies and a world-wide shortage of uro-pathologists puts a strain on pathology departments. Additionally, the high intra- and inter-observer variability in grading can result in over- and undertreatment of prostate cancer. Artificial intelligence (AI) methods may alleviate these problems by assisting pathologists to reduce workload and harmonize grading. Methods: We digitized 6,682 needle biopsies from 976 participants in the population based STHLM3 diagnostic study to train deep neural networks for assessing prostate biopsies. The networks were evaluated by predicting the presence, extent, and Gleason grade of malignant tissue for an independent test set comprising 1,631 biopsies from 245 men. We additionally evaluated grading performance on 87 biopsies individually graded by 23 experienced urological pathologists from the International Society of Urological Pathology. We assessed discriminatory performance by receiver operating characteristics (ROC) and tumor extent predictions by correlating predicted millimeter cancer length against measurements by the reporting pathologist. We quantified the concordance between grades assigned by the AI and the expert urological pathologists using Cohen's kappa. Results: The performance of the AI to detect and grade cancer in prostate needle biopsy samples was comparable to that of international experts in prostate pathology. The AI achieved an area under the ROC curve of 0.997 for distinguishing between benign and malignant biopsy cores, and 0.999 for distinguishing between men with or without prostate cancer. The correlation between millimeter cancer predicted by the AI and assigned by the reporting pathologist was 0.96. For assigning Gleason grades, the AI achieved an average pairwise kappa of 0.62. This was within the range of the corresponding values for the expert pathologists (0.60 to 0.73).

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