Artificial intelligence unravels interpretable malignancy grades of prostate cancer on histology images

Okyaz Eminaga, Fred Saad, Zhe Tian, Ulrich Wolffgang, Pierre I. Karakiewicz, Véronique Ouellet, Feryel Azzi, Tilmann Spieker, Burkhard M. Helmke, Markus Graefen, Xiaoyi Jiang, Lei Xing, Jorn H. Witt, Dominique Trudel, Sami-Ramzi Leyh-Bannurah
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Abstract

Malignancy grading of prostate cancer (PCa) is fundamental for risk stratification, patient counseling, and treatment decision-making. Deep learning has shown potential to improve the expert consensus for tumor grading, which relies on the Gleason score/grade grouping. However, the core problem of interobserver variability for the Gleason grading system remains unresolved. We developed a novel grading system for PCa and utilized artificial intelligence (AI) and multi-institutional international datasets from 2647 PCa patients treated with radical prostatectomy with a long follow-up of ≥10 years for biochemical recurrence and cancer-specific death. Through survival analyses, we evaluated the novel grading system and showed that AI could develop a tumor grading system with four risk groups independent from and superior to the current five grade groups. Moreover, AI could develop a scoring system that reflects the risk of castration resistant PCa in men who have experienced biochemical recurrence. Thus, AI has the potential to develop an effective grading system for PCa interpretable by human experts.

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人工智能揭示组织学图像上可解释的前列腺癌恶性等级
前列腺癌(PCa)的恶性程度分级是风险分层、患者咨询和治疗决策的基础。深度学习已显示出改善肿瘤分级专家共识的潜力,肿瘤分级依赖于格里森评分/分级分组。然而,Gleason 分级系统的核心问题--观察者之间的变异性--仍未得到解决。我们开发了一种新的 PCa 分级系统,并利用人工智能(AI)和多机构国际数据集对 2647 例接受根治性前列腺切除术治疗的 PCa 患者进行了长期随访,随访时间≥10 年,以了解生化复发和癌症特异性死亡的情况。通过生存分析,我们对新型分级系统进行了评估,结果表明人工智能可以开发出一种肿瘤分级系统,其中包含四个风险组,独立于目前的五个分级组,且优于五个分级组。此外,人工智能还能开发出一种评分系统,反映出经历过生化复发的男性患上阉割耐药 PCa 的风险。因此,人工智能有可能开发出一套可由人类专家解读的有效的 PCa 分级系统。
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