Artificial Intelligence in Digital Pathology to Advance Cancer Immunotherapy.

21st century pathology Pub Date : 2022-01-01 Epub Date: 2022-05-25
Pingjun Chen, Jianjun Zhang, Jia Wu
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Abstract

Immune-checkpoint inhibitors (ICIs) have revolutionized the treatment of many malignancies. For instance, in lung cancer, however, only 20~30% of patients can achieve durable clinical benefits from ICI monotherapy. Histopathologic and molecular features such as histological type, PD-L1 expression, and tumor mutation burden (TMB), play a paramount role in selecting appropriate regimens for cancer treatment in the era of immunotherapy. Unfortunately, none of the existing features are exclusive predictive biomarkers. Thus, there is an imperative need to pinpoint more effective biomarkers to identify patients who may achieve the most benefit from ICIs. The adoption of digital pathology in clinical flow, as being powered by artificial intelligence (AI) especially deep learning, has catalyzed the automated analysis of tissue slides. With the breakthrough of multiplex bioimaging technology, researchers can comprehensively characterize the tumor microenvironment, including the different immune cells' distribution, function, and interaction. Here, we briefly summarize recent AI studies in digital pathology and share our perspective on emerging paradigms and directions to advance the development of immunotherapy biomarkers.

数字病理学中的人工智能推进癌症免疫治疗。
免疫检查点抑制剂(ICIs)已经彻底改变了许多恶性肿瘤的治疗。例如,在癌症中,只有20-30%的患者能够通过ICI单药治疗获得持久的临床益处。组织病理学和分子特征,如组织学类型、PD-L1表达和肿瘤突变负荷(TMB),在免疫治疗时代选择合适的癌症治疗方案方面发挥着至关重要的作用。不幸的是,现有的特征都不是唯一的预测生物标志物。因此,迫切需要确定更有效的生物标志物,以确定哪些患者可能从ICIs中获得最大益处。在人工智能(AI)特别是深度学习的推动下,数字病理学在临床流程中的应用促进了组织切片的自动化分析。随着多重生物成像技术的突破,研究人员可以全面表征肿瘤微环境,包括不同免疫细胞的分布、功能和相互作用。在这里,我们简要总结了最近在数字病理学中的人工智能研究,并分享了我们对推进免疫疗法生物标志物发展的新兴范式和方向的看法。
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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