Identification of areas of grading difficulties in prostate cancer and comparison with artificial intelligence assisted grading.
Lars EgevadDaniela SwanbergBrett DelahuntPeter StrömKimmo KartasaloHenrik OlssonDan M BerneyDavid G BostwickAndrew J EvansPeter A HumphreyKenneth A IczkowskiJames G KenchGlen KristiansenKatia R M LeiteJesse K McKenneyJon OxleyChin-Chen PanHemamali SamaratungaJohn R SrigleyHiroyuki TakahashiToyonori TsuzukiTheo van der KwastMurali VarmaMing ZhouMark ClementsMartin EklundPublished in: Virchows Archiv : an international journal of pathology (2020)
The International Society of Urological Pathology (ISUP) hosts a reference image database supervised by experts with the purpose of establishing an international standard in prostate cancer grading. Here, we aimed to identify areas of grading difficulties and compare the results with those obtained from an artificial intelligence system trained in grading. In a series of 87 needle biopsies of cancers selected to include problematic cases, experts failed to reach a 2/3 consensus in 41.4% (36/87). Among consensus and non-consensus cases, the weighted kappa was 0.77 (range 0.68-0.84) and 0.50 (range 0.40-0.57), respectively. Among the non-consensus cases, four main causes of disagreement were identified: the distinction between Gleason score 3 + 3 with tangential cutting artifacts vs. Gleason score 3 + 4 with poorly formed or fused glands (13 cases), Gleason score 3 + 4 vs. 4 + 3 (7 cases), Gleason score 4 + 3 vs. 4 + 4 (8 cases) and the identification of a small component of Gleason pattern 5 (6 cases). The AI system obtained a weighted kappa value of 0.53 among the non-consensus cases, placing it as the observer with the sixth best reproducibility out of a total of 24. AI may serve as a decision support and decrease inter-observer variability by its ability to make consistent decisions. The grading of these cancer patterns that best predicts outcome and guides treatment warrants further clinical and genetic studies. Results of such investigations should be used to improve calibration of AI systems.
Keyphrases
- prostate cancer
- artificial intelligence
- radical prostatectomy
- machine learning
- deep learning
- big data
- clinical practice
- emergency department
- magnetic resonance
- genome wide
- computed tomography
- nuclear factor
- dna methylation
- squamous cell carcinoma
- high intensity
- body composition
- young adults
- copy number
- resistance training
- low cost
- squamous cell