人工智能辅助早期胃癌诊断的现状与展望。

IF 4.3
Annals of medicine Pub Date : 2025-12-01 Epub Date: 2025-02-10 DOI:10.1080/07853890.2025.2461679
Changda Lei, Wenqiang Sun, Kun Wang, Ruixia Weng, Xiuji Kan, Rui Li
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引用次数: 0

摘要

胃癌的发病率和死亡率在世界肿瘤中均居前几位,对人类健康造成严重危害,同时其治疗也极大地消耗了世界各国的医疗资源。胃癌的诊断通常基于组织病理学检查,能够早期发现和识别癌性病变是非常重要的,但一些内镜医师缺乏诊断经验和工作疲劳导致了一定的漏诊率。人工智能(AI)的迅猛发展在一定程度上提高了内镜图像异常信息的提取能力,越来越多的研究人员将AI技术应用于GC的诊断。这一举措不仅提高了早期胃癌(EGC)的检出率,而且显著提高了患者治疗后的生存率。本文综述了近年来各种人工智能辅助诊断EGC的结果,包括EGC的识别、分化类型和浸润深度的确定以及边界的识别。虽然人工智能在心电图早期诊断方面具有较好的应用前景,但仍存在重大挑战,人工智能应用的前景和局限性有待进一步探讨。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Artificial intelligence-assisted diagnosis of early gastric cancer: present practice and future prospects.

Artificial intelligence-assisted diagnosis of early gastric cancer: present practice and future prospects.

Gastric cancer (GC) occupies the first few places in the world among tumors in terms of incidence and mortality, causing serious harm to human health, and at the same time, its treatment greatly consumes the health care resources of all countries in the world. The diagnosis of GC is usually based on histopathologic examination, and it is very important to be able to detect and identify cancerous lesions at an early stage, but some endoscopists' lack of diagnostic experience and fatigue at work lead to a certain rate of under diagnosis. The rapid and striking development of Artificial intelligence (AI) has helped to enhance the ability to extract abnormal information from endoscopic images to some extent, and more and more researchers are applying AI technology to the diagnosis of GC. This initiative has not only improved the detection rate of early gastric cancer (EGC), but also significantly improved the survival rate of patients after treatment. This article reviews the results of various AI-assisted diagnoses of EGC in recent years, including the identification of EGC, the determination of differentiation type and invasion depth, and the identification of borders. Although AI has a better application prospect in the early diagnosis of ECG, there are still major challenges, and the prospects and limitations of AI application need to be further discussed.

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