Deep learning for the detection of microsatellite instability from histology images in colorectal cancer: A systematic literature review

Amelie Echle , Narmin Ghaffari Laleh , Peter L. Schrammen , Nicholas P. West , Christian Trautwein , Titus J. Brinker , Stephen B. Gruber , Roman D. Buelow , Peter Boor , Heike I. Grabsch , Philip Quirke , Jakob N. Kather
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引用次数: 18

Abstract

Microsatellite instability (MSI) or deficient mismatch repair (dMMR) is a clinically important genetic feature affecting 10–15% of colorectal cancer (CRC) patients. Patients with metastatic MSI/dMMR CRC are eligible for therapy with immune checkpoint inhibitors, making MSI/dMMR the most important immuno-oncological biomarker in CRC. Gold standard tests for detection of MSI/dMMR in CRC are based on wet laboratory tests such as immunohistochemistry (IHC) or DNA extraction with subsequent polymerase chain reaction (PCR). However, since 2019, advances in Deep Learning (DL), an Artificial Intelligence (AI) technology, have enabled the prediction of MSI/dMMR directly from digitized routine haematoxylin and eosin (H&E) histopathology slides with high accuracy. In addition to the initial proof-of-concept publication in 2019, twelve subsequent studies have refined, improved, and further validated this approach. At this moment, MSI/dMMR prediction using Deep Learning has become a widely used benchmark task for academic studies in the field of computational pathology. Beyond academic use, this assay has attracted commercial interest from companies with the possibility of approval as a diagnostic device in the near future. In this review, we summarize and quantitatively compare the existing evidence on Deep-Learning-based detection of MSI/dMMR in CRC and discuss the need for further improvement and potential for integration into routine pathological workflows. Ultimately, this DL-based method could facilitate the identification of patients eligible for treatment with immune checkpoint inhibitors by pre-screening or replacement of current methods.

Abstract Image

从结直肠癌的组织学图像中检测微卫星不稳定性的深度学习:系统的文献综述
微卫星不稳定性(MSI)或缺陷错配修复(dMMR)是影响10-15%结直肠癌(CRC)患者的临床重要遗传特征。转移性MSI/dMMR CRC患者有资格接受免疫检查点抑制剂治疗,使MSI/dMMR成为CRC中最重要的免疫肿瘤学生物标志物。检测CRC中MSI/dMMR的金标准测试是基于湿实验室测试,如免疫组织化学(IHC)或随后的聚合酶链反应(PCR)的DNA提取。然而,自2019年以来,人工智能(AI)技术深度学习(DL)的进步,已经能够直接从数字化的常规血红素和伊红(H&E)组织病理学切片中高精度地预测MSI/dMMR。除了2019年发表的初步概念验证外,随后的12项研究对这种方法进行了改进、改进和进一步验证。目前,基于深度学习的MSI/dMMR预测已经成为计算病理学领域学术研究中广泛使用的基准任务。除了学术用途之外,这种检测方法还吸引了一些公司的商业兴趣,它们有可能在不久的将来被批准作为诊断设备。在这篇综述中,我们总结并定量比较了基于深度学习的CRC中MSI/dMMR检测的现有证据,并讨论了进一步改进的必要性和整合到常规病理工作流程中的潜力。最终,这种基于dl的方法可以通过预先筛选或替代现有方法,促进识别有资格接受免疫检查点抑制剂治疗的患者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Immunoinformatics (Amsterdam, Netherlands)
Immunoinformatics (Amsterdam, Netherlands) Immunology, Computer Science Applications
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