Yang Wei, Deo Rajat, Guo Wensheng
Department of Biostatistics, Epidemiology and Informatics, Perelman School of Medicine at the University of Pennsylvania, Philadelphia, PA, USA.
Division of Cardiovascular Medicine, Electrophysiology Section, Perelman School of Medicine at the University of Pennsylvania, Philadelphia, PA, USA.
Commun Med (Lond). 2025 Feb 2;5(1):32. doi: 10.1038/s43856-025-00749-2.
Deep learning methods on standard, 12-lead electrocardiograms (ECG) have resulted in the ability to identify individuals at high-risk for the development of atrial fibrillation. However, the process remains a "black box" and does not help clinicians in understanding the electrocardiographic changes at an individual level. we propose a nonparametric feature extraction approach to identify features that are associated with the development of atrial fibrillation (AF).
We apply functional principal component analysis to the raw ECG tracings collected in the Chronic Renal Insufficiency Cohort (CRIC) study. We define and select the features using ECGs from participants enrolled in Phase I (2003-2008) of the study. Cox proportional hazards models are used to evaluate the association of selected ECG features and their changes with the incident risk of AF during study follow-up. The findings are then validated in ECGs from participants enrolled in Phase III (2013-2015).
We identify four features that are related to the P-wave amplitude, QRS complex and ST segment. Both their initial measurement and 3-year changes are associated with the development of AF. In particular, one standard deviation in the 3-year decline of the P-wave amplitude is independently associated with a 29% increased risk of incident AF in the multivariable model (HR: 1.29, 95% CI: [1.16, 1.43]).
Compared with deep learning methods, our features are intuitive and can provide insights into the longitudinal ECG changes at an individual level that precede the development of AF.
基于标准12导联心电图(ECG)的深度学习方法已具备识别房颤高危个体的能力。然而,该过程仍是一个“黑箱”,无助于临床医生在个体层面理解心电图变化。我们提出一种非参数特征提取方法,以识别与房颤发生相关的特征。
我们将功能主成分分析应用于慢性肾功能不全队列(CRIC)研究中收集的原始心电图描记。我们使用该研究第一阶段(2003 - 2008年)入组参与者的心电图来定义和选择特征。采用Cox比例风险模型评估所选心电图特征及其变化与研究随访期间房颤发生风险的关联。然后在第三阶段(2013 - 2015年)入组参与者的心电图中对研究结果进行验证。
我们识别出四个与P波振幅、QRS波群和ST段相关的特征。它们的初始测量值及其3年变化均与房颤的发生有关。特别是,在多变量模型中,P波振幅3年下降一个标准差与房颤发生风险独立增加29%相关(风险比:1.29,95%置信区间:[1.16, 1.43])。
与深度学习方法相比,我们识别出的特征直观,能够为房颤发生前个体层面的心电图纵向变化提供见解。