[1]王超 齐灵垚 安成月 陈子怡 邓国勇 余志慧 余思芸 秦地茂.人工智能在心电图心脏年龄评估中的应用与研究进展[J].心血管病学进展,2025,(5):425.[doi:10.16806/j.cnki.issn.1004-3934.2025.05.010]
 WANG Chao,QI Lingyao,AN Chengyue,et al.Application of Artificial Intelligence in Electrocardiographic Cardiac Age Assessment and Research Advances[J].Advances in Cardiovascular Diseases,2025,(5):425.[doi:10.16806/j.cnki.issn.1004-3934.2025.05.010]
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人工智能在心电图心脏年龄评估中的应用与研究进展()

《心血管病学进展》[ISSN:51-1187/R/CN:1004-3934]

卷:
期数:
2025年5期
页码:
425
栏目:
综述
出版日期:
2025-05-25

文章信息/Info

Title:
Application of Artificial Intelligence in Electrocardiographic Cardiac Age Assessment and Research Advances
作者:
王超12 齐灵垚3 安成月1 陈子怡2 邓国勇 2 余志慧 2 余思芸1 秦地茂3
(1.西南交通大学附属医院 成都市第三人民医院 老年医学国际医疗中心,四川 成都 610031;2.阿坝州林业中心医院医务部,四川 都江堰 611830;3.西南交通大学附属医院 成都市第三人民医院 成都市心血管病研究所,四川 成都 610031)
Author(s):
WANG Chao12QI Lingyao3AN Chengyue1CHEN Ziyi2DENG Guoyong2YU Zhihui2YU Siyun1QIN Dimao3
(1.The Third Peoples Hospital of Chengdu/Affiliated Hospital of Southwest Jiao Tong University,Department of Geriatrics and International Medical Center,Chengdu 610031,Sichuan,China;2.Medical Department,Aba Forestry Center Hospital,Dujiangyan 611830,Sichuan,China;3.The Third Peoples Hospital of Chengdu/Affiliated Hospital of Southwest Jiao Tong University,Cardiovascular Disease Research Institute of Chengdu,Chengdu 610031,Sichuan,China)
关键词:
心电图人工智能生物年龄心脏年龄心血管疾病风险评估
Keywords:
ElectrocardiographyArtificial intelligenceBiological ageCardiac ageCardiovascular diseaseRisk assessment
DOI:
10.16806/j.cnki.issn.1004-3934.2025.05.010
摘要:
随着人工智能技术的发展,结合心电图在心血管疾病风险评估中的应用逐渐成为研究热点。既往心血管疾病风险评估依赖于实际年龄,然而利用人工智能从心电图中预测心脏年龄有可能成为评估和管理心血管疾病风险的重要因素。心脏年龄是心脏健康状态的重要指标,它反映了心脏的实际年龄与生理功能之间的差异。人工智能心电图评估心脏年龄为心血管疾病的早期识别和个性化干预提供了新的思路,随着技术的不断进步,心脏年龄评估有望在临床实践中发挥更大的作用,为改善及预防心血管疾病做出贡献。
Abstract:
With the development of artificial intelligence technology,the application of combining e lectrocardiography(ECG) in cardiovascular disease risk assessment is gradually becoming a hot research topic. Previously,cardiovascular disease risk assessment relied on actual age,however the prediction of cardiac age from electrocardiography using artificial intelligence has the potential to become an important factor in assessing and mana ging cardiovascular disease risk. Cardiac age is an important indicator of the health status of the heart,reflecting the difference between the actual age of the heart and its physiological function. Artificial intelligence-electrocardiography assessment of cardiac age provides new ideas for early identification of cardiovascular disease and personalised interventions,and with continued technological advances,cardiac age assessment is expected to play a greater role in clinical practice,contributing to the improvement and prevention of cardiovascular disease.

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更新日期/Last Update: 2025-06-26