人工智能在心血管病介入治疗中的应用Application of artificial intelligence in interventional therapy of cardiovascular diseases
宋昊霖,夏云龙,杨乙珩
摘要(Abstract):
近年来人工智能(AI)技术发展迅速,以海量的临床数据为基础,通过机器学习等特定方法在医学诊断、鉴别分析等领域展示出了独特优势。AI技术在心血管病的诊断和治疗中的应用优势和潜在前景也不断显现,介入治疗是心血管病诊断治疗的重要组成部分,本文拟结合国内外最新进展,总结AI技术辅助心血管病介入诊疗技术的发展现状。
关键词(KeyWords): 人工智能;深度学习;心血管病;介入治疗
基金项目(Foundation):
作者(Author): 宋昊霖,夏云龙,杨乙珩
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