Prognostic Significance and Associations of Neural Network-Derived Electrocardiographic Features.

IF 6.2 2区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS Circulation-Cardiovascular Quality and Outcomes Pub Date : 2024-11-14 DOI:10.1161/CIRCOUTCOMES.123.010602
Arunashis Sau, Antônio H Ribeiro, Kathryn A McGurk, Libor Pastika, Nikesh Bajaj, Mehak Gurnani, Ewa Sieliwonczyk, Konstantinos Patlatzoglou, Maddalena Ardissino, Jun Yu Chen, Huiyi Wu, Xili Shi, Katerina Hnatkova, Sean L Zheng, Annie Britton, Martin Shipley, Irena Andršová, Tomáš Novotný, Ester C Sabino, Luana Giatti, Sandhi M Barreto, Jonathan W Waks, Daniel B Kramer, Danilo Mandic, Nicholas S Peters, Declan P O'Regan, Marek Malik, James S Ware, Antonio Luiz P Ribeiro, Fu Siong Ng
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Abstract

Background: Subtle, prognostically important ECG features may not be apparent to physicians. In the course of supervised machine learning, thousands of ECG features are identified. These are not limited to conventional ECG parameters and morphology. We aimed to investigate whether neural network-derived ECG features could be used to predict future cardiovascular disease and mortality and have phenotypic and genotypic associations.

Methods: We extracted 5120 neural network-derived ECG features from an artificial intelligence-enabled ECG model trained for 6 simple diagnoses and applied unsupervised machine learning to identify 3 phenogroups. Using the identified phenogroups, we externally validated our findings in 5 diverse cohorts from the United States, Brazil, and the United Kingdom. Data were collected between 2000 and 2023.

Results: In total, 1 808 584 patients were included in this study. In the derivation cohort, the 3 phenogroups had significantly different mortality profiles. After adjusting for known covariates, phenogroup B had a 20% increase in long-term mortality compared with phenogroup A (hazard ratio, 1.20 [95% CI, 1.17-1.23]; P<0.0001; phenogroup A mortality, 2.2%; phenogroup B mortality, 6.1%). In univariate analyses, we found phenogroup B had a significantly greater risk of mortality in all cohorts (log-rank P<0.01 in all 5 cohorts). Phenome-wide association study showed phenogroup B had a higher rate of future atrial fibrillation (odds ratio, 2.89; P<0.00001), ventricular tachycardia (odds ratio, 2.00; P<0.00001), ischemic heart disease (odds ratio, 1.44; P<0.00001), and cardiomyopathy (odds ratio, 2.04; P<0.00001). A single-trait genome-wide association study yielded 4 loci. SCN10A, SCN5A, and CAV1 have roles in cardiac conduction and arrhythmia. ARHGAP24 does not have a clear cardiac role and may be a novel target.

Conclusions: Neural network-derived ECG features can be used to predict all-cause mortality and future cardiovascular diseases. We have identified biologically plausible and novel phenotypic and genotypic associations that describe mechanisms for the increased risk identified.

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神经网络推导出的心电图特征的预后意义和关联。
背景:对医生而言,微妙而对预后重要的心电图特征可能并不明显。在有监督的机器学习过程中,数以千计的心电图特征被识别出来。这些特征并不局限于传统的心电图参数和形态。我们旨在研究神经网络衍生的心电图特征是否可用于预测未来的心血管疾病和死亡率,以及是否与表型和基因型相关:我们从针对 6 种简单诊断训练的人工智能心电图模型中提取了 5120 个神经网络衍生心电图特征,并应用无监督机器学习识别出 3 个表型组。利用识别出的表型,我们在来自美国、巴西和英国的 5 个不同队列中对我们的研究结果进行了外部验证。数据收集时间为 2000 年至 2023 年:本研究共纳入了 1 808 584 名患者。在衍生队列中,3个表型组的死亡率有显著差异。在对已知协变量进行调整后,与表型组 A 相比,表型组 B 的长期死亡率增加了 20%(危险比为 1.20 [95% CI, 1.17-1.23];PPPPPPSCN10A、SCN5A 和 CAV1 在心脏传导和心律失常中发挥作用。ARHGAP24没有明确的心脏作用,可能是一个新的靶点:结论:神经网络衍生的心电图特征可用于预测全因死亡率和未来的心血管疾病。我们发现了生物学上合理的新型表型和基因型关联,这些关联描述了所发现的风险增加的机制。
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来源期刊
Circulation-Cardiovascular Quality and Outcomes
Circulation-Cardiovascular Quality and Outcomes CARDIAC & CARDIOVASCULAR SYSTEMS-
CiteScore
8.50
自引率
2.90%
发文量
357
审稿时长
4-8 weeks
期刊介绍: Circulation: Cardiovascular Quality and Outcomes, an American Heart Association journal, publishes articles related to improving cardiovascular health and health care. Content includes original research, reviews, and case studies relevant to clinical decision-making and healthcare policy. The online-only journal is dedicated to furthering the mission of promoting safe, effective, efficient, equitable, timely, and patient-centered care. Through its articles and contributions, the journal equips you with the knowledge you need to improve clinical care and population health, and allows you to engage in scholarly activities of consequence to the health of the public. Circulation: Cardiovascular Quality and Outcomes considers the following types of articles: Original Research Articles, Data Reports, Methods Papers, Cardiovascular Perspectives, Care Innovations, Novel Statistical Methods, Policy Briefs, Data Visualizations, and Caregiver or Patient Viewpoints.
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