Department of Emergency Medicine Mediplex Sejong Hospital Incheon Korea.
Artificial Intelligence and Big Data Center Sejong Medical Research Institute Bucheon Korea.
J Am Heart Assoc. 2020 Apr 7;9(7):e014717. doi: 10.1161/JAHA.119.014717. Epub 2020 Mar 21.
Background Severe, symptomatic aortic stenosis (AS) is associated with poor prognoses. However, early detection of AS is difficult because of the long asymptomatic period experienced by many patients, during which screening tools are ineffective. The aim of this study was to develop and validate a deep learning-based algorithm, combining a multilayer perceptron and convolutional neural network, for detecting significant AS using ECGs. Methods and Results This retrospective cohort study included adult patients who had undergone both ECG and echocardiography. A deep learning-based algorithm was developed using 39 371 ECGs. Internal validation of the algorithm was performed with 6453 ECGs from one hospital, and external validation was performed with 10 865 ECGs from another hospital. The end point was significant AS (beyond moderate). We used demographic information, features, and 500-Hz, 12-lead ECG raw data as predictive variables. In addition, we identified which region had the most significant effect on the decision-making of the algorithm using a sensitivity map. During internal and external validation, the areas under the receiver operating characteristic curve of the deep learning-based algorithm using 12-lead ECG for detecting significant AS were 0.884 (95% CI, 0.880-0.887) and 0.861 (95% CI, 0.858-0.863), respectively; those using a single-lead ECG signal were 0.845 (95% CI, 0.841-0.848) and 0.821 (95% CI, 0.816-0.825), respectively. The sensitivity map showed the algorithm focused on the T wave of the precordial lead to determine the presence of significant AS. Conclusions The deep learning-based algorithm demonstrated high accuracy for significant AS detection using both 12-lead and single-lead ECGs.
严重、有症状的主动脉瓣狭窄(AS)与预后不良相关。然而,由于许多患者经历了很长的无症状期,因此很难早期发现 AS,在此期间,筛查工具无效。本研究旨在开发和验证一种基于深度学习的算法,该算法结合了多层感知器和卷积神经网络,用于使用心电图(ECG)检测严重的 AS。
本回顾性队列研究纳入了同时接受心电图和超声心动图检查的成年患者。使用 39371 份心电图数据开发了一种基于深度学习的算法。该算法的内部验证使用了一家医院的 6453 份心电图数据,外部验证使用了另一家医院的 10865 份心电图数据。终点是严重的 AS(超过中度)。我们使用了人口统计学信息、特征以及 500-Hz、12 导联心电图原始数据作为预测变量。此外,我们使用敏感性图确定了对算法决策影响最大的区域。在内部和外部验证中,基于 12 导联心电图的深度学习算法用于检测严重 AS 的曲线下面积(AUC)分别为 0.884(95%CI,0.880-0.887)和 0.861(95%CI,0.858-0.863);使用单导联心电图信号的 AUC 分别为 0.845(95%CI,0.841-0.848)和 0.821(95%CI,0.816-0.825)。敏感性图显示,该算法专注于心前导联 T 波来确定是否存在严重的 AS。
基于深度学习的算法在使用 12 导联和单导联心电图检测严重 AS 方面具有较高的准确性。