人工智能在胃肠癌中的应用
Application of Artificial Intelligence in Gastrointestinal Cancer
DOI: 10.12677/ACM.2023.133566, PDF,   
作者: 崔洪铭, 于 彬, 赵 扬:青岛大学附属烟台毓璜顶医院胃肠外一科,山东 烟台;姜立新*:青岛大学附属烟台毓璜顶医院胃肠外一科,山东 烟台;烟台业达医院普外科,山东 烟台
关键词: 人工智能胃肠癌辅助诊断预后预测Artificial Intelligence Gastrointestinal Cancer Auxiliary Diagnosis Prognosis Prediction
摘要: 胃肠癌是全球高发恶性肿瘤,发病率和死亡率均位居前列,对人类生命健康造成巨大威胁。近年来,人工智能(AI)作为与医学新兴的交叉学科,以其优秀的学习能力和高准确性正在引起越来越多的关注。大量研究已经证明人工智能技术在胃癌、结直肠癌的放射组学、病理诊断、内镜检查等方面表现出优秀的性能,有可能可以对它们的早期筛查、诊断、治疗和预测等起到关键性的辅助作用。本文概述了近年人工智能在胃肠癌的研究和应用现状,并分析了该领域发展可能面对的挑战和未来的展望。
Abstract: Gastrointestinal cancer is a malignant tumor with high incidence in the world, with the incidence and mortality among the highest, which poses a huge threat to human life and health. In recent years, artificial intelligence (AI), as an emerging interdisciplinary with medicine, has attracted more and more attention due to its excellent learning ability and high accuracy. A large number of studies have proved that artificial intelligence technology in radiology, pathological diagnosis, endoscopy and other aspects of gastrointestinal cancer has shown excellent performance, and may play a key auxiliary role in their early screening, diagnosis, treatment and prediction. In this paper, the current status of research and application of artificial intelligence in gastrointestinal cancer in recent years is summarized, and the possible challenges and future prospects in this field are ana-lyzed.
文章引用:崔洪铭, 于彬, 赵扬, 姜立新. 人工智能在胃肠癌中的应用[J]. 临床医学进展, 2023, 13(3): 3942-3952. https://doi.org/10.12677/ACM.2023.133566

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