Department of Cardiovascular Medicine, The Cardiovascular Institute, Tokyo, Japan.
Department of Cardiovascular Medicine, The Cardiovascular Institute, Tokyo, Japan.
Int J Cardiol. 2021 Mar 15;327:93-99. doi: 10.1016/j.ijcard.2020.11.012. Epub 2020 Nov 11.
Diagnosis of atrial fibrillation (AF) based on electrocardiogram (ECG) with sinus rhythm remains a major challenge. Obtaining a panoramic view with hundreds of automatically measured ECG parameters at sinus rhythm on the predictive capability for AF would be informative.
We used a single-center database of a specialist cardiovascular hospital (Shinken Database 2010-2017; n = 19,170). We analyzed 12,863 index ECGs with sinus rhythm after excluding those showing AF rhythm, other atrial tachyarrhythmia, pacing beat, or indeterminate axis, and those of patients with structural heart diseases. We used 438 automatically measured ECG parameters in the MUSE data management system. The predictive models were developed using random forest algorithm with the 10-fold cross-validation method.
In 12,863 index ECGs with sinus rhythm, a predictive capability for current paroxysmal AF (n = 1131) by c-statistics was 0.99981 ± 0.00037 for training dataset and 0.91337 ± 0.00087 for testing dataset, respectively. Excluding AF at baseline (n = 11,732), a predictive capability for newly developed AF (n = 98) by c-statistics was 0.99973 ± 0.00086 for training dataset and 0.99160 ± 0.00038 for testing dataset, respectively. The distribution of parameter importance was mostly similar among P, QRS, and ST-T segment for both current and newly developed AF.
This study intended to provide panoramic information in relation between ECG parameters and AF. The parameter importance of ECG parameters for predicting AF was mostly similar in P, QRS, and ST-T segment in models for both current and future AF.
基于窦性心律的心电图(ECG)诊断心房颤动(AF)仍然是一个主要挑战。在窦性心律下获得具有数百个自动测量 ECG 参数的全景视图,这对于预测 AF 将具有重要意义。
我们使用了一家心血管专科医院的单中心数据库(Shinken Database 2010-2017;n=19170)。我们分析了 12863 份窦性心律的索引 ECG,排除了显示 AF 节律、其他房性心动过速、起搏节律或不确定轴以及结构性心脏病患者的 ECG。我们使用 MUSE 数据管理系统中的 438 个自动测量的 ECG 参数。使用随机森林算法和 10 折交叉验证方法开发预测模型。
在 12863 份窦性心律的索引 ECG 中,当前阵发性 AF(n=1131)的 c 统计预测能力,训练数据集为 0.99981±0.00037,测试数据集为 0.91337±0.00087。排除基线时的 AF(n=11732),新发 AF(n=98)的 c 统计预测能力,训练数据集为 0.99973±0.00086,测试数据集为 0.99160±0.00038。当前和新发 AF 模型中,P、QRS 和 ST-T 段的参数重要性分布大多相似。
本研究旨在提供与 ECG 参数和 AF 相关的全景信息。预测 AF 的 ECG 参数的参数重要性在当前和未来 AF 模型的 P、QRS 和 ST-T 段中大多相似。