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中华腔镜外科杂志(电子版) ›› 2026, Vol. 19 ›› Issue (01) : 60 -64. doi: 10.3877/cma.j.issn.1674-6899.2026.01.012

综述

人工智能在妇科微创手术中的应用与展望
宋佳耕, 袁文翰, 郑莹()   
  1. 610041 成都,四川大学华西第二医院妇科/出生缺陷与相关妇儿疾病教育部重点实验室
  • 收稿日期:2025-08-12 出版日期:2026-02-28
  • 通信作者: 郑莹
  • 基金资助:
    国家重点研发计划(2022YFC2704103)

The application and prospects of artificial intelligence in minimally invasive gynecological surgery

Jiageng Song, Wenhan Yuan, Ying Zheng()   

  1. Department of Gynecology, West China Second University Hospital, Sichuan University/Key Laboratory of Birth Defects and Related Diseases of Women and Children, Ministry of Education, Chengdu 610041, China
  • Received:2025-08-12 Published:2026-02-28
  • Corresponding author: Ying Zheng
引用本文:

宋佳耕, 袁文翰, 郑莹. 人工智能在妇科微创手术中的应用与展望[J/OL]. 中华腔镜外科杂志(电子版), 2026, 19(01): 60-64.

Jiageng Song, Wenhan Yuan, Ying Zheng. The application and prospects of artificial intelligence in minimally invasive gynecological surgery[J/OL]. Chinese Journal of Laparoscopic Surgery(Electronic Edition), 2026, 19(01): 60-64.

近年来,人工智能(artificial intelligence, AI)与外科手术的深度融合正推动外科领域迈向精准化与智能化新阶段。AI通过对临床、影像及病理组学等数据的分析并结合深度学习算法,优化疾病诊断、手术辅助及预后评估等全流程,显著提升了手术效率与安全性。微创手术(minimally invasive surgery, MIS)逐渐成为外科领域的重要发展方向,传统微创手术面临的诸多挑战催生了智能化技术的需求。针对妇科微创手术领域的独特挑战,AI将在疾病的精准诊断、临床风险预测、术中诊断、手术导航与优化术中决策、术后加速康复等方面取得广泛的应用,将有效改善患者的治疗效果,为患者提供更精准的医疗服务。

In recent years, the deep integration of artificial intelligence (AI) and surgery has been driving the surgical field towards a new stage of precision and intelligence. By analyzing clinical, imaging, and pathological omics data and combining them with deep learning, AI optimizes the entire process of diagnosis, surgery, and prognosis, significantly enhancing surgical efficiency and safety. Minimally Invasive Surgery (MIS) has emerged as a crucial development trend in the surgical field. The numerous challenges faced by traditional MIS have given rise to the demand for intelligent technologies. In the field of gynecological MIS, AI will achieve wide application in precise diagnosis, clinical risk prediction, intraoperative diagnosis, surgical navigation, intraoperative decision, and postoperative recovery, effectively improving the treatment outcomes for patients and providing more precise medical services.

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