Heart age gap estimated by explainable advanced electrocardiography is associated with cardiovascular risk factors and survival.

IF 3.9 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS European heart journal. Digital health Pub Date : 2023-07-25 eCollection Date: 2023-10-01 DOI:10.1093/ehjdh/ztad045
Thomas Lindow, Maren Maanja, Erik B Schelbert, Antônio H Ribeiro, Antonio Luiz P Ribeiro, Todd T Schlegel, Martin Ugander
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引用次数: 1

Abstract

Aims: Deep neural network artificial intelligence (DNN-AI)-based Heart Age estimations have been presented and used to show that the difference between an electrocardiogram (ECG)-estimated Heart Age and chronological age is associated with prognosis. An accurate ECG Heart Age, without DNNs, has been developed using explainable advanced ECG (A-ECG) methods. We aimed to evaluate the prognostic value of the explainable A-ECG Heart Age and compare its performance to a DNN-AI Heart Age.

Methods and results: Both A-ECG and DNN-AI Heart Age were applied to patients who had undergone clinical cardiovascular magnetic resonance imaging. The association between A-ECG or DNN-AI Heart Age Gap and cardiovascular risk factors was evaluated using logistic regression. The association between Heart Age Gaps and death or heart failure (HF) hospitalization was evaluated using Cox regression adjusted for clinical covariates/comorbidities. Among patients [n = 731, 103 (14.1%) deaths, 52 (7.1%) HF hospitalizations, median (interquartile range) follow-up 5.7 (4.7-6.7) years], A-ECG Heart Age Gap was associated with risk factors and outcomes [unadjusted hazard ratio (HR) (95% confidence interval) (5 year increments): 1.23 (1.13-1.34) and adjusted HR 1.11 (1.01-1.22)]. DNN-AI Heart Age Gap was associated with risk factors and outcomes after adjustments [HR (5 year increments): 1.11 (1.01-1.21)], but not in unadjusted analyses [HR 1.00 (0.93-1.08)], making it less easily applicable in clinical practice.

Conclusion: A-ECG Heart Age Gap is associated with cardiovascular risk factors and HF hospitalization or death. Explainable A-ECG Heart Age Gap has the potential for improving clinical adoption and prognostic performance compared with existing DNN-AI-type methods.

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可解释的高级心电图估计的心脏年龄差距与心血管危险因素和生存率有关。
目的:已经提出并使用基于深度神经网络人工智能(DNN-AI)的心脏年龄估计来表明心电图(ECG)估计的心脏年龄和实际年龄之间的差异与预后有关。已经使用可解释的高级心电图(A-ECG)方法开发了一个准确的心电图心脏年龄,而没有DNN。我们旨在评估可解释的A-ECG心脏年龄的预后价值,并将其与DNN-AI心脏年龄的表现进行比较。方法和结果:A-ECG和DNN-AI心年龄均适用于接受过临床心血管磁共振成像的患者。使用逻辑回归评估A-ECG或DNN-AI心脏年龄差距与心血管危险因素之间的相关性。心脏年龄差距与死亡或心力衰竭(HF)住院之间的相关性使用Cox回归进行评估,该回归对临床协变量/合并症进行了调整。在患者中[n=731103(14.1%)死亡,52(7.1%)HF住院,中位(四分位间距)随访5.7(4.7-6.7)年],A-ECG心脏年龄差距与风险因素和结果相关[未调整的危险比(HR)(95%置信区间)(5年增量):1.23(1.13-1.34)和调整的HR 1.11(1.01-1.22)],使得其在临床实践中不太容易应用。结论:A-ECG心脏年龄差距与心血管危险因素及HF住院或死亡有关。与现有的DNN AI型方法相比,可解释的A-ECG心脏年龄差距有可能提高临床采用率和预后。
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