心力衰竭的远程监测:人工智能和使用远程语音分析来检测恶化的心力衰竭事件。

IF 4.2 2区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS
Heart Failure Reviews Pub Date : 2025-09-01 Epub Date: 2025-05-27 DOI:10.1007/s10741-025-10522-1
Jospeh D Abraham, William T Abraham
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引用次数: 0

摘要

在全球范围内,心力衰竭(HF)是住院和死亡的主要原因,主要发生在老年人中,估计有6400多万人受到影响。心衰住院占心衰总体医疗支出的最大部分,心衰住院与住院和出院后的高发病率和死亡率相关。诊断为急性失代偿性心衰的出院患者临床恶化、再住院和死亡的风险增加。心衰患者的主要目标是发现和预防首次住院和复发住院。然而,检测和预防需要住院和/或药物治疗的恶化的心衰事件仍然是一个未满足的医疗需求。人工智能(AI)正在帮助我们应对这一临床挑战。一个例子利用语音处理来评估心衰的临床状态。在急性环境下,言语测量的变化可以识别失补偿状态和补偿状态。一种远程监测系统(HearO™),包括一个移动语音应用程序(App),用于在失代偿事件发生之前检测心衰恶化,目前正在对流动心衰患者进行评估,以降低住院率。该应用程序可以在智能手机上轻松下载,用户友好,并展示了人工智能辅助语音信号处理系统开发如何提高诊断准确性的示例。临床试验的初步结果表明,检测心衰事件的敏感性高,依从性高。在慢性心衰患者中进行的和计划中的研究将进一步阐明该系统的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Remote monitoring in heart failure: artificial intelligence and the use of remote speech analysis to detect worsening heart failure events.

Remote monitoring in heart failure: artificial intelligence and the use of remote speech analysis to detect worsening heart failure events.

Remote monitoring in heart failure: artificial intelligence and the use of remote speech analysis to detect worsening heart failure events.

Globally, heart failure (HF) is a leading cause of hospitalization and mortality, primarily among the elderly, and is estimated to affect more than 64 million individuals. Hospitalization for HF represents the largest part of overall medical care expenditures for HF, and hospitalization for HF is associated with high rates of in-hospital and post-discharge morbidity and mortality. Patients discharged from the hospital with a diagnosis of acute decompensated HF have an increased risk for clinical worsening, rehospitalization, and mortality. A major goal for patients with HF is to detect and prevent both first and recurrent hospitalizations. However, detecting and preventing worsening HF events requiring hospitalization and/or pharmacotherapy remains an unmet medical need. Artificial intelligence (AI) is helping us meet this clinical challenge. An example leverages speech processing for the assessment of HF clinical status. In the acute setting, changes in speech measures (SM) can identify the decompensated from the compensated state. A remote monitoring system (HearO™), which includes a mobile speech application (App) to detect worsening HF prior to decompensation events is undergoing evaluation in ambulatory HF patients for reducing the rate of hospitalization. This App is readily downloadable on a smartphone and is user-friendly, and presents an example of how AI-assisted speech signal processing system development may enhance diagnostic accuracy. Preliminary results from clinical trials indicate high rates of sensitivity for detecting HF events along with high rates of adherence. Further elucidation of the effectiveness of this system will be provided by ongoing and planned studies in patients with chronic HF.

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来源期刊
Heart Failure Reviews
Heart Failure Reviews 医学-心血管系统
CiteScore
10.40
自引率
2.20%
发文量
90
审稿时长
6-12 weeks
期刊介绍: Heart Failure Reviews is an international journal which develops links between basic scientists and clinical investigators, creating a unique, interdisciplinary dialogue focused on heart failure, its pathogenesis and treatment. The journal accordingly publishes papers in both basic and clinical research fields. Topics covered include clinical and surgical approaches to therapy, basic pharmacology, biochemistry, molecular biology, pathology, and electrophysiology. The reviews are comprehensive, expanding the reader''s knowledge base and awareness of current research and new findings in this rapidly growing field of cardiovascular medicine. All reviews are thoroughly peer-reviewed before publication.
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