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人工智能在胃癌病理学中的应用

Artificial Intelligence in the Pathology of Gastric Cancer.

作者信息

Choi Sangjoon, Kim Seokhwi

机构信息

Department of Pathology, Asan Medical Center, University of Ulsan College of Medicine, Seoul, Korea.

Department of Pathology, Ajou University School of Medicine, Suwon, Korea.

出版信息

J Gastric Cancer. 2023 Jul;23(3):410-427. doi: 10.5230/jgc.2023.23.e25.

Abstract

Recent advances in artificial intelligence (AI) have provided novel tools for rapid and precise pathologic diagnosis. The introduction of digital pathology has enabled the acquisition of scanned slide images that are essential for the application of AI. The application of AI for improved pathologic diagnosis includes the error-free detection of potentially negligible lesions, such as a minute focus of metastatic tumor cells in lymph nodes, the accurate diagnosis of potentially controversial histologic findings, such as very well-differentiated carcinomas mimicking normal epithelial tissues, and the pathological subtyping of the cancers. Additionally, the utilization of AI algorithms enables the precise decision of the score of immunohistochemical markers for targeted therapies, such as human epidermal growth factor receptor 2 and programmed death-ligand 1. Studies have revealed that AI assistance can reduce the discordance of interpretation between pathologists and more accurately predict clinical outcomes. Several approaches have been employed to develop novel biomarkers from histologic images using AI. Moreover, AI-assisted analysis of the cancer microenvironment showed that the distribution of tumor-infiltrating lymphocytes was related to the response to the immune checkpoint inhibitor therapy, emphasizing its value as a biomarker. As numerous studies have demonstrated the significance of AI-assisted interpretation and biomarker development, the AI-based approach will advance diagnostic pathology.

摘要

人工智能(AI)的最新进展为快速、精确的病理诊断提供了新工具。数字病理学的引入使得获取扫描玻片图像成为可能,而这些图像对于AI的应用至关重要。AI在改善病理诊断方面的应用包括无差错地检测潜在可忽略的病变,如淋巴结中微小转移瘤细胞灶,准确诊断潜在有争议的组织学发现,如酷似正常上皮组织的高分化癌,以及癌症的病理亚型分类。此外,利用AI算法能够精确确定靶向治疗免疫组化标志物的评分,如人表皮生长因子受体2和程序性死亡配体1。研究表明,AI辅助可减少病理学家之间解读的不一致性,并更准确地预测临床结果。已经采用了几种方法利用AI从组织学图像中开发新型生物标志物。此外,AI辅助的癌症微环境分析表明,肿瘤浸润淋巴细胞的分布与免疫检查点抑制剂治疗的反应相关,强调了其作为生物标志物的价值。由于众多研究已证明AI辅助解读和生物标志物开发的重要性,基于AI的方法将推动诊断病理学的发展。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/dd61/10412971/025ae6eb008a/jgc-23-410-g001.jpg

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