Institute of Pathology, University Medical Center Mainz, Mainz; Institute of Pathology, Charité Universitätsmedizin Berlin, Berlin.
Dtsch Arztebl Int. 2021 Mar 26;118(12):194-204. doi: 10.3238/arztebl.m2021.0011.
Increasing digitalization enables the use of artificial intelligence (AI) and machine learning in pathology. However, these technologies have only just begun to be implemented, and no randomized prospective trials have yet shown a benefit of AI-based diagnosis. In this review, we present current concepts, illustrate them with examples from representative publications, and discuss the possibilities and limitations of their use.
This article is based on the results of a search in PubMed for articles published between January 1950 and January 2020 containing the searching terms "artificial intelligence," "deep learning," and "digital pathology," as well as the authors' own research findings.
Current research on AI in pathology focuses on supporting routine diagnosis and on prognostication, particularly for patients with cancer. Initial data indicate that pathologists can arrive at a diagnosis faster and more accurately with the aid of a computer. In a pilot study on the diagnosis of breast cancer, involving 70 patients, sensitivity for the detection of micrometastases rose from 83.3% (by a pathologist alone) to 91.2% (by a pathologist combined with a computer algorithm). The evidence likewise suggests that AI applied to histomorphological properties of cells during microscopy may enable the inference of certain genetic properties, such as mutations in key genes and deoxyribonucleic acid (DNA) methylation profiles.
Initial proof-of-concept studies for AI in pathology are now available. Randomized, prospective studies are now needed so that these early findings can be confirmed or falsified.
数字化的发展使得人工智能(AI)和机器学习在病理学中得以应用。然而,这些技术才刚刚开始实施,还没有随机前瞻性试验表明基于 AI 的诊断具有优势。在这篇综述中,我们介绍了当前的概念,用有代表性的出版物中的示例来说明这些概念,并讨论了它们的使用可能性和局限性。
本文基于在 PubMed 中搜索 1950 年 1 月至 2020 年 1 月期间发表的包含“人工智能”“深度学习”和“数字病理学”等检索词的文章,以及作者自己的研究结果。
当前病理学中 AI 的研究主要集中在支持常规诊断和预后方面,特别是针对癌症患者。初步数据表明,借助计算机,病理学家可以更快、更准确地做出诊断。在一项涉及 70 名患者的乳腺癌诊断的初步研究中,检测微转移的敏感性从单独由病理学家得出的 83.3%提高到了病理学家与计算机算法结合得出的 91.2%。同样的证据表明,将 AI 应用于显微镜下细胞的组织形态特征可能可以推断出某些遗传特征,如关键基因的突变和脱氧核糖核酸(DNA)甲基化谱。
现在已有 AI 在病理学中应用的初步概念验证研究。现在需要进行随机、前瞻性研究,以证实或推翻这些早期发现。