聚焦高水平人工智能研究,优化心血管介入精准施治
陈韵岱
摘要(Abstract):
<正>心血管疾病是全球范围内患病率和致死率最高的疾病之一~([1])。据《〈中国心血管健康与疾病报告2022〉概要》报道~([2]),我国心血管疾病的现有患病人数约为3.3亿,约占我国现有人口总数的1/4。严峻的疾病现状提示着采取行之有效的精准防控手段刻不容缓。因此,国家卫生健康委联合多部门共同制定了《健康中国行动—心脑血管疾病防治行动实施方案(2023-2030年)》,
关键词(KeyWords):
基金项目(Foundation):
作者(Author): 陈韵岱
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