心衰风险分层使用人工智能应用于心电图图像:一项跨国研究。

IF 37.6 1区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS European Heart Journal Pub Date : 2025-01-13 DOI:10.1093/eurheartj/ehae914
Lovedeep S Dhingra, Arya Aminorroaya, Veer Sangha, Aline F Pedroso, Folkert W Asselbergs, Luisa C C Brant, Sandhi M Barreto, Antonio Luiz P Ribeiro, Harlan M Krumholz, Evangelos K Oikonomou, Rohan Khera
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引用次数: 0

摘要

背景和目的:目前的心力衰竭(HF)风险分层策略需要全面的临床评估。在这项研究中,人工智能(AI)应用于心电图(ECG)图像,作为预测心衰风险的策略。方法:在耶鲁纽黑文卫生系统(YNHHS)、英国生物银行(UKB)和巴西成人健康纵向研究(ELSA-Brasil)的跨国队列中,对首次HF住院的无基线HF患者进行随访。采用AI-ECG模型,根据12导联心电图图像定义左室收缩功能障碍,并评估其与心衰事件的关联。使用Harrell的c统计量来评估歧视。采用预防HF的合并队列方程(PCP-HF)作为比较。结果:在231 285例YNHHS患者中,4472例原发性心衰住院时间超过4.5年(四分位数间距2.5-6.6)。在UKB和ELSA-Brasil, 41441人和13454人中,分别有46人和31人在3.1(2.1-4.5)和4.2(3.7-4.5)年发生HF。AI-ECG筛查阳性预示着新发HF的风险增加4- 24倍[年龄、性别校正风险比:YNHHS, 3.88(95%可信区间3.63-4.14);英国,12.85 (6.87-24.02);ELSA-Brasil, 23.50[11.09-49.81]。在考虑了合并症和竞争死亡风险后,这种关联是一致的。概率越高,心衰风险越高。YNHHS的模型鉴别率为0.718,UKB为0.769,ELSA-Brasil为0.810。在YNHHS和ELSA-Brasil,与单独使用PCP-HF相比,将AI-ECG与PCP-HF结合可以显著改善对PCP-HF的辨别。结论:应用于单个ECG图像的AI模型定义了未来HF的风险,代表了HF风险分层的数字生物标志物。
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Heart failure risk stratification using artificial intelligence applied to electrocardiogram images: a multinational study.

Background and aims: Current heart failure (HF) risk stratification strategies require comprehensive clinical evaluation. In this study, artificial intelligence (AI) applied to electrocardiogram (ECG) images was examined as a strategy to predict HF risk.

Methods: Across multinational cohorts in the Yale New Haven Health System (YNHHS), UK Biobank (UKB), and Brazilian Longitudinal Study of Adult Health (ELSA-Brasil), individuals without baseline HF were followed for the first HF hospitalization. An AI-ECG model that defines cross-sectional left ventricular systolic dysfunction from 12-lead ECG images was used, and its association with incident HF was evaluated. Discrimination was assessed using Harrell's C-statistic. Pooled cohort equations to prevent HF (PCP-HF) were used as a comparator.

Results: Among 231 285 YNHHS patients, 4472 had primary HF hospitalizations over 4.5 years (inter-quartile range 2.5-6.6). In UKB and ELSA-Brasil, among 42 141 and 13 454 people, 46 and 31 developed HF over 3.1 (2.1-4.5) and 4.2 (3.7-4.5) years. A positive AI-ECG screen portended a 4- to 24-fold higher risk of new-onset HF [age-, sex-adjusted hazard ratio: YNHHS, 3.88 (95% confidence interval 3.63-4.14); UKB, 12.85 (6.87-24.02); ELSA-Brasil, 23.50 (11.09-49.81)]. The association was consistent after accounting for comorbidities and the competing risk of death. Higher probabilities were associated with progressively higher HF risk. Model discrimination was 0.718 in YNHHS, 0.769 in UKB, and 0.810 in ELSA-Brasil. In YNHHS and ELSA-Brasil, incorporating AI-ECG with PCP-HF yielded a significant improvement in discrimination over PCP-HF alone.

Conclusions: An AI model applied to a single ECG image defined the risk of future HF, representing a digital biomarker for stratifying HF risk.

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来源期刊
European Heart Journal
European Heart Journal 医学-心血管系统
CiteScore
39.30
自引率
6.90%
发文量
3942
审稿时长
1 months
期刊介绍: The European Heart Journal is a renowned international journal that focuses on cardiovascular medicine. It is published weekly and is the official journal of the European Society of Cardiology. This peer-reviewed journal is committed to publishing high-quality clinical and scientific material pertaining to all aspects of cardiovascular medicine. It covers a diverse range of topics including research findings, technical evaluations, and reviews. Moreover, the journal serves as a platform for the exchange of information and discussions on various aspects of cardiovascular medicine, including educational matters. In addition to original papers on cardiovascular medicine and surgery, the European Heart Journal also presents reviews, clinical perspectives, ESC Guidelines, and editorial articles that highlight recent advancements in cardiology. Additionally, the journal actively encourages readers to share their thoughts and opinions through correspondence.
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