临床实习
人工智能
钥匙(锁)
计算机科学
医学
怀孕
医学物理学
数据科学
诊断准确性
胎儿生长
异常检测
梅德林
人工智能应用
产科
机器学习
妇产科学
临床判断
母胎医学
产前诊断
作者
Eileen Deuster,Asma Khalil
标识
DOI:10.1097/grf.0000000000000980
摘要
Artificial intelligence is transforming obstetric practice through applications in diagnostic imaging, risk prediction, and clinical decision-making. Deep learning algorithms have achieved diagnostic accuracy comparable to that of experienced clinicians. However, gaps persist between algorithmic capability and clinical implementation. Critical challenges include limited external validation and algorithmic bias. This review examines current AI applications in obstetrics across multiple clinical domains: automated fetal biometry, structural anomaly detection, prediction of pregnancy complications, and intrapartum fetal surveillance. It highlights persistent technical, ethical, and implementation barriers. Key recommendations include multicenter validation across diverse populations, explainable AI approaches, and creating strong regulatory frameworks.
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