[1]阿不都沙拉木·沙德尔丁 刘海煜 彭辉.基于人工智能的电子听诊器在心脏瓣膜病中的研究进展与应用前景[J].心血管病学进展,2026,(1):17.[doi:10.16806/j.cnki.issn.1004-3934.2026.01.004]
 Abudushalamu·Shadeerding,LIU Haiyu,PENG Hui.Research Progress and Application Prospects of Electronic Stethoscopes Based on Artificial Intelligence in Valvular Heart Disease[J].Advances in Cardiovascular Diseases,2026,(1):17.[doi:10.16806/j.cnki.issn.1004-3934.2026.01.004]
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基于人工智能的电子听诊器在心脏瓣膜病中的研究进展与应用前景()

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

卷:
期数:
2026年1期
页码:
17
栏目:
综述
出版日期:
2026-01-25

文章信息/Info

Title:
Research Progress and Application Prospects of Electronic Stethoscopes Based on Artificial Intelligence in Valvular Heart Disease
作者:
阿不都沙拉木·沙德尔丁1 刘海煜 1 彭辉 2
(1.新疆医科大学,新疆 乌鲁木齐830017;2.新疆维吾尔自治区人民医院心血管内科,新疆 乌鲁木齐830063)
Author(s):
Abudushalamu·Shadeerding1LIU Haiyu1PENG Hui2
(1.Xinjiang Medical University,Urumqi 830017,Xinjiang,China; 2. Department of Cardiology,Xinjiang Uygur Autonomous Region People’s Hospital,Urumqi 830063,Xinjiang,China)
关键词:
人工智能电子听诊器心脏瓣膜病深度学习远程医疗
Keywords:
Artificial intelligenceElectronic stethoscopeValvular heart diseaseDeep learningTelemedicine
DOI:
10.16806/j.cnki.issn.1004-3934.2026.01.004
摘要:
心脏瓣膜病是常见的心血管疾病之一,其发病率与致残率在老龄化社会中持续上升。现系统综述心脏瓣膜病的基本概况与诊断流程,分析电子听诊器的构造原理、核心功能与智能设备结合的趋势,并重点探讨人工智能在心音特征提取、模型训练与临床验证中的研究进展。
Abstract:
Valvular heart disease is one of the common cardiovascular diseases,with its incidence and disability rates continually rising in an aging society. This article systematically reviews the fundamental overview and diagnostic procedures of v alvular heart disease,analyzes the construction principle,core functions,and trend in the integration of electronic stethoscopes with smart devices,and emphasizes the research advancements in artificial intelligence for heart sound feature extraction,model training,and clinical validation.

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更新日期/Last Update: 2026-05-14