SEISMIC-HF 1: AHA24的主要发现及其对远程心脏监测的意义。

IF 4.5 2区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS
Baljash Cheema, Anjan Tibrewala
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引用次数: 0

摘要

虽然在开发心力衰竭患者的治疗方法方面不断取得进展,但这种疾病导致了显著的发病率,并对我们的社会造成了相当大的经济影响。结合机器学习算法的可穿戴传感器的最新进展给心力衰竭可以更好地远程管理和改善临床结果带来了希望。本文重点回顾了心力衰竭I期心血管监测中的SEISMIC-HF 1研究的主要发现,该研究在伊利诺斯州芝加哥举行的2024年美国心脏协会科学会议上发表。本研究展示了一种机器学习算法的能力,通过可穿戴传感器贴片(CardioTag)进行模型输入,利用地震心动图、光容积脉搏图和无创心电图信号来估计射血分数降低的心力衰竭患者的肺毛细血管楔形压力。作者发现模型预测的肺毛细血管楔压与右心导管获得的金标准压力测量值之间存在显著相关性。未来的研究应评估该技术作为门诊心力衰竭治疗策略的一部分的实施情况,并探索其在其他研究人群中的表现,包括保留射血分数的心力衰竭患者和临床环境外的患者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SEISMIC-HF 1: key findings from AHA24 and implications for remote cardiac monitoring.

While there is continued progress in developing therapies for patients with heart failure, the condition results in significant morbidity and a sizeable economic impact on our society. Recent advances in wearable sensors combined with machine learning algorithms give hope that heart failure can be better managed remotely and allow for improved clinical outcomes. This is a focused review of the key findings of the SEISMocardiogram In Cardiovascular Monitoring for Heart Failure I (SEISMIC-HF 1) study, presented at the American Heart Association's Scientific Sessions 2024 in Chicago, Illinois. This study showcased the ability of a machine learning algorithm to estimate pulmonary capillary wedge pressure in patients with heart failure with reduced ejection fraction, utilizing seismocardiography, photoplethysmography, and electrocardiography signals obtained non-invasively through a wearable sensor patch (CardioTag) for model input. The authors showed a significant correlation between model-predicted pulmonary capillary wedge pressure and the gold standard pressure measurement obtained from right heart catheterization. Future investigations should assess the implementation of this technology as a part of a treatment strategy for outpatient heart failure care and explore its performance in additional study populations including those with heart failure with preserved ejection fraction and in patients outside of the clinical environment.

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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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