医学
转化式学习
交叉口(航空)
鉴定(生物学)
医疗保健
结核(地质)
临床实习
人工智能应用
肺癌
医疗保健系统
人工智能
医学物理学
组分(热力学)
风险分析(工程)
决策支持系统
数据科学
转化研究
计算机科学
卫生技术
癌症
重症监护医学
病人护理
新兴技术
肺
病理
肺孤立结节
管理科学
作者
Linfeng Wang,Jinlong Yu,Yue Luo,JiaYi Nie,XinYue Ge,Yue Li,Baojin Hua,Rui Liu
标识
DOI:10.1097/js9.0000000000004595
摘要
Lung cancer represents a primary global cause of cancer-related mortality, imposing substantial healthcare burdens on both patients and public health systems. Pulmonary nodules, as early-stage manifestations of lung cancer, exhibit considerable morphological heterogeneity. Consequently, precise identification and clinical management of these nodules are critical for effective lung cancer prevention. In recent years, artificial intelligence (AI) has emerged as a transformative component in modern oncology, providing advanced tools for end-to-end pulmonary nodule management. This review systematically analyzes existing literature through bibliometric assessment to synthesize AI applications across the pulmonary nodule care continuum. AI-powered clinical decision support systems and personalized treatment planning are reshaping precision oncology paradigms. Current research advancements and prevailing challenges are critically examined to identify potential future breakthroughs. The comprehensive synthesis presented herein aims to establish a foundational conceptual framework for researchers and clinicians, while facilitating efficient translation of AI technologies into clinical practice for pulmonary nodule diagnosis and therapy.
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