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An independent assessment of an artificial intelligence system for prostate cancer detection shows strong diagnostic accuracy

机译:对前列腺癌检测人工智能系统的独立评估显示出强烈的诊断准确性

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Prostate cancer is a leading cause of morbidity and mortality for adult males in the US. The diagnosis of prostate carcinoma is usually made on prostate core needle biopsies obtained through a transrectal approach. These biopsies may account for a significant portion of the pathologists' workload, yet variability in the experience and expertise, as well as fatigue of the pathologist may adversely affect the reliability of cancer detection. Machine-learning algorithms are increasingly being developed as tools to aid and improve diagnostic accuracy in anatomic pathology. The Paige Prostate AI-based digital diagnostic is one such tool trained on the digital slide archive of New York's Memorial Sloan Kettering Cancer Center (MSKCC) that categorizes a prostate biopsy whole-slide image as either "Suspicious" or "Not Suspicious" for prostatic adenocarcinoma. To evaluate the performance of this program on prostate biopsies secured, processed, and independently diagnosed at an unrelated institution, we used Paige Prostate to review 1876 prostate core biopsy whole-slide images (WSIs) from our practice at Yale Medicine. Paige Prostate categorizations were compared to the pathology diagnosis originally rendered on the glass slides for each core biopsy. Discrepancies between the rendered diagnosis and categorization by Paige Prostate were each manually reviewed by pathologists with specialized genitourinary pathology expertise. Paige Prostate showed a sensitivity of 97.7% and positive predictive value of 97.9%, and a specificity of 99.3% and negative predictive value of 99.2% in identifying core biopsies with cancer in a data set derived from an independent institution. Areas for improvement were identified in Paige Prostate's handling of poor quality scans. Overall, these results demonstrate the feasibility of porting a machine-learning algorithm to an institution remote from its training set, and highlight the potential of such algorithms as a powerful workflow tool for the evaluation of prostate core biopsies in surgical pathology practices.
机译:前列腺癌是美国成年男性的发病率和死亡率的主要原因。前列腺癌的诊断通常是通过委托方法获得的前列腺芯针活检。这些活组织检查可能会占本病理学家工作量的重要部分,但经验和专业知识的可变性以及病理学家的疲劳可能会对癌症检测的可靠性产生不利影响。越来越多地开发了机器学习算法作为帮助和提高解剖病理学中的诊断准确性的工具。基于Paige Prostate AI的数字诊断是在纽约纪念斯洛南Kettering Cancer Center(MSKCC)的数字幻灯片档案上培训的这样的工具,该工具将前列腺活检全幻灯片图像分类为“可疑”或“不可疑”的前列腺腺癌。为了评估该程序对前列腺活检的表现,在不相关的机构,我们使用Paige Prostate审查了Paige Prostate从我们在耶鲁医学的实践中审查1876个前列腺核心活检全幻灯片(WSIS)。将Paige前列腺分类与最初在玻璃载玻片上呈现的病理诊断进行比较,用于每个核心活检。 Paige Prostate的渲染诊断和分类之间的差异是由具有专门泌尿科人的病理学家手动审查的。 Paige前列腺呈现出97.7%的敏感性,阳性预测值为97.9%,其特异性为99.3%,负面预测值为99.2%,以鉴定与独立机构的数据集中癌症的核心活组织检查。在Paige Prostate的处理差的质量扫描的处理中确定了改进的领域。总体而言,这些结果表明,从其训练集远程移植机器学习算法的可行性,并突出了这种算法作为一种强大的工作流程工具,用于评估外科病理学实践中的前列腺核心活组织检查。

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