Smartphone-Based Recognition of Heart Failure by Means of Microelectromechanical Sensors

IF 10.3 1区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS
Francois Haddad MD , Antti Saraste MD PhD , Kristiina M. Santalahti PhD , Mikko Pänkäälä PhD , Matti Kaisti PhD , Riina Kandolin MD, PhD , Piia Simonen MD, PhD , Wail Nammas MD, PhD , Kamal Jafarian Dehkordi MSc , Tero Koivisto MSc , Juhani Knuuti MD, PhD , Kenneth W. Mahaffey MD , Juuso I. Blomster MD, PhD
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引用次数: 0

Abstract

Background

Heart failure (HF) is the leading cause of hospitalization in individuals over 65 years of age. Identifying noninvasive methods to detect HF may address the epidemic of HF. Seismocardiography which measures cardiac vibrations transmitted to the chest wall has recently emerged as a promising technology to detect HF.

Objectives

In this multicenter study, the authors examined whether seismocardiography using commercially available smartphones can differentiate control subjects from patients with stage C HF.

Methods

Both inpatients and outpatients with HF were enrolled from Finland and the United States. Inpatients with HF were assessed within 2 days of admission, and outpatients were assessed in the ambulatory setting. In a prespecified pooled data analysis, algorithms were derived using logistic regression and then validated using a bootstrap aggregation method.

Results

A total of 217 participants with HF (174 inpatients and 172 outpatients) and 786 control subjects from cardiovascular clinics were enrolled. The mean age of participants with acute HF was 64 ± 13 years, 64.9% were male, left ventricular ejection fraction was 39% ± 15%, and median N-terminal pro–B-type natriuretic peptide was 5,778 ng/L (Q1-Q3: 1,933-6,703). The majority (74%) of participants with HF had reduced EF, and 38% had atrial fibrillation. Across both HF cohorts, the algorithms had an area under the receiver operating characteristic curve of 0.95 with a sensitivity of 85%, specificity of 90%, and accuracy of 89% for the detection of HF, with a decision threshold of 0.5. The positive and negative likelihood ratios were 8.50 and 0.17, respectively. The accuracy of the algorithms was not significantly different in subgroups based on age, sex, body mass index, and atrial fibrillation.

Conclusions

Smartphone-based assessment of cardiac function using seismocardiography is feasible and differentiates patients with HF from control subjects with high diagnostic accuracy. (Recognition of Heart Failure With Micro Electro-mechanical Sensors FI; NCT04444583; Recognition of Heart Failure With Micro Electro-mechanical Sensors [NCT04378179]; Detection of Coronary Artery Disease With Micro Electro-mechanical Sensors; NCT04290091)

Abstract Image

基于智能手机的微机电传感器识别心力衰竭
心力衰竭(HF)是 65 岁以上老人住院治疗的主要原因。找到检测心力衰竭的无创方法可以解决心力衰竭的流行问题。地震心动图可测量传导至胸壁的心脏振动,最近已成为一种很有前景的检测心房颤动的技术。在这项多中心研究中,作者考察了使用市售智能手机进行的地震心动图检查能否区分对照组和 C 期高血压患者。研究人员从芬兰和美国招募了心房颤动住院患者和门诊患者。住院患者在入院后两天内进行评估,门诊患者在非住院环境中进行评估。在一项预先指定的汇总数据分析中,使用逻辑回归法得出了算法,然后使用自举聚合法进行了验证。共有 217 名心房颤动患者(174 名住院患者和 172 名门诊患者)和 786 名心血管诊所的对照组受试者参加了研究。急性心房颤动患者的平均年龄为64±13岁,64.9%为男性,左心室射血分数为39±15%,N末端前B型钠尿肽中位数为5778纳克/升(Q1-Q3:1933-6703)。大多数(74%)高房颤患者的 EF 值降低,38% 患有心房颤动。在两组心房颤动患者中,算法的接收者工作特征曲线下面积为 0.95,灵敏度为 85%,特异度为 90%,检测心房颤动的准确率为 89%,决策阈值为 0.5。阳性似然比为 8.50,阴性似然比为 0.17。在基于年龄、性别、体重指数和心房颤动的分组中,算法的准确性没有明显差异。基于智能手机的地震心动图心功能评估是可行的,而且能以较高的诊断准确性将心力衰竭患者与对照受试者区分开来。(利用微型机电传感器识别心力衰竭FI[];利用微型机电传感器识别心力衰竭[];利用微型机电传感器检测冠状动脉疾病[])。
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来源期刊
JACC. Heart failure
JACC. Heart failure CARDIAC & CARDIOVASCULAR SYSTEMS-
CiteScore
21.20
自引率
2.30%
发文量
164
期刊介绍: JACC: Heart Failure publishes crucial findings on the pathophysiology, diagnosis, treatment, and care of heart failure patients. The goal is to enhance understanding through timely scientific communication on disease, clinical trials, outcomes, and therapeutic advances. The Journal fosters interdisciplinary connections with neuroscience, pulmonary medicine, nephrology, electrophysiology, and surgery related to heart failure. It also covers articles on pharmacogenetics, biomarkers, and metabolomics.
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