Huang Yu-Chang, Hsu Yu-Chun, Liu Zhi-Yong, Lin Ching-Heng, Tsai Richard, Chen Jung-Sheng, Chang Po-Cheng, Liu Hao-Tien, Lee Wen-Chen, Wo Hung-Ta, Chou Chung-Chuan, Wang Chun-Chieh, Wen Ming-Shien, Kuo Chang-Fu
Division of Cardiology, Chang Gung Memorial Hospital, Taoyuan, Taiwan.
Center for Artificial Intelligence in Medicine, Chang Gung Memorial Hospital, Taoyuan, Taiwan.
Front Cardiovasc Med. 2023 Mar 3;10:1070641. doi: 10.3389/fcvm.2023.1070641. eCollection 2023.
Left ventricular systolic dysfunction (LVSD) characterized by a reduced left ventricular ejection fraction (LVEF) is associated with adverse patient outcomes. We aimed to build a deep neural network (DNN)-based model using standard 12-lead electrocardiogram (ECG) to screen for LVSD and stratify patient prognosis.
This retrospective chart review study was conducted using data from consecutive adults who underwent ECG examinations at Chang Gung Memorial Hospital in Taiwan between October 2007 and December 2019. DNN models were developed to recognize LVSD, defined as LVEF <40%, using original ECG signals or transformed images from 190,359 patients with paired ECG and echocardiogram within 14 days. The 190,359 patients were divided into a training set of 133,225 and a validation set of 57,134. The accuracy of recognizing LVSD and subsequent mortality predictions were tested using ECGs from 190,316 patients with paired data. Of these 190,316 patients, we further selected 49,564 patients with multiple echocardiographic data to predict LVSD incidence. We additionally used data from 1,194,982 patients who underwent ECG only to assess mortality prognostication. External validation was performed using data of 91,425 patients from Tri-Service General Hospital, Taiwan.
The mean age of patients in the testing dataset was 63.7 ± 16.3 years (46.3% women), and 8,216 patients (4.3%) had LVSD. The median follow-up period was 3.9 years (interquartile range 1.5-7.9 years). The area under the receiver-operating characteristic curve (AUROC), sensitivity, and specificity of the signal-based DNN (DNN-signal) to identify LVSD were 0.95, 0.91, and 0.86, respectively. DNN signal-predicted LVSD was associated with age- and sex-adjusted hazard ratios (HRs) of 2.57 (95% confidence interval [CI], 2.53-2.62) for all-cause mortality and 6.09 (5.83-6.37) for cardiovascular mortality. In patients with multiple echocardiograms, a positive DNN prediction in patients with preserved LVEF was associated with an adjusted HR (95% CI) of 8.33 (7.71 to 9.00) for incident LVSD. Signal- and image-based DNNs performed equally well in the primary and additional datasets.
Using DNNs, ECG becomes a low-cost, clinically feasible tool to screen LVSD and facilitate accurate prognostication.
以左心室射血分数(LVEF)降低为特征的左心室收缩功能障碍(LVSD)与患者不良预后相关。我们旨在构建一个基于深度神经网络(DNN)的模型,利用标准12导联心电图(ECG)筛查LVSD并对患者预后进行分层。
本回顾性图表审查研究使用了2007年10月至2019年12月在台湾长庚纪念医院接受心电图检查的连续成年患者的数据。开发DNN模型,使用原始心电图信号或190359例在14天内有配对心电图和超声心动图的患者的转换图像来识别定义为LVEF<40%的LVSD。这190359例患者被分为133225例的训练集和57134例的验证集。使用来自190316例有配对数据患者的心电图测试识别LVSD的准确性和随后的死亡率预测。在这190316例患者中,我们进一步选择了49564例有多次超声心动图数据的患者来预测LVSD发生率。我们还使用了仅接受心电图检查的1194982例患者的数据来评估死亡率预后。使用台湾三军总医院91425例患者的数据进行外部验证。
测试数据集中患者的平均年龄为63.7±16.3岁(46.3%为女性),8216例患者(4.3%)有LVSD。中位随访期为3.9年(四分位间距1.5 - 7.9年)。基于信号的DNN(DNN - 信号)识别LVSD的受试者操作特征曲线下面积(AUROC)、敏感性和特异性分别为0.95、0.91和0.86。DNN信号预测的LVSD与全因死亡率的年龄和性别调整风险比(HR)为2.57(95%置信区间[CI],2.53 - 2.62),心血管死亡率的HR为6.09(5.83 - 6.37)。在有多次超声心动图检查的患者中,LVEF保留患者的DNN阳性预测与新发LVSD的调整后HR(95%CI)为8.33(7.71至9.00)相关。基于信号和图像的DNN在主要数据集和附加数据集中表现同样良好。
使用DNN,心电图成为一种低成本、临床可行的工具,用于筛查LVSD并促进准确的预后评估。