Chen Hung-Yi, Lin Chin-Sheng, Fang Wen-Hui, Lou Yu-Sheng, Cheng Cheng-Chung, Lee Chia-Cheng, Lin Chin
Department of Internal Medicine, Tri-Service General Hospital, National Defense Medical Center, Taipei 114, Taiwan.
Division of Cardiology, Department of Internal Medicine, Tri-Service General Hospital, National Defense Medical Center, Taipei 114, Taiwan.
J Pers Med. 2022 Mar 13;12(3):455. doi: 10.3390/jpm12030455.
The ejection fraction (EF) provides critical information about heart failure (HF) and its management. Electrocardiography (ECG) is a noninvasive screening tool for cardiac electrophysiological activities that has been used to detect patients with low EF based on a deep learning model (DLM) trained via large amounts of data. However, no studies have widely investigated its clinical impacts. OBJECTIVE: This study developed a DLM to estimate EF via ECG (ECG-EF). We further investigated the relationship between ECG-EF and echo-based EF (ECHO-EF) and explored their contributions to future cardiovascular adverse events. METHODS: There were 57,206 ECGs with corresponding echocardiograms used to train our DLM. We compared a series of training strategies and selected the best DLM. The architecture of the DLM was based on ECG12Net, developed previously. Next, 10,762 ECGs were used for validation, and another 20,629 ECGs were employed to conduct the accuracy test. The changes between ECG-EF and ECHO-EF were evaluated. The primary follow-up adverse events included future ECHO-EF changes and major adverse cardiovascular events (MACEs). RESULTS: The sex-/age-matching strategy-trained DLM achieved the best area under the curve (AUC) of 0.9472 with a sensitivity of 86.9% and specificity of 89.6% in the follow-up cohort, with a correlation of 0.603 and a mean absolute error of 7.436. In patients with accurate prediction (initial difference < 10%), the change traces of ECG-EF and ECHO-EF were more consistent (R-square = 0.351) than in all patients (R-square = 0.115). Patients with lower ECG-EF (≤35%) exhibited a greater risk of cardiovascular (CV) complications, delayed ECHO-EF recovery, and earlier ECHO-EF deterioration than patients with normal ECG-EF (>50%). Importantly, ECG-EF demonstrated an independent impact on MACEs and all CV adverse outcomes, with better prediction of CV outcomes than ECHO-EF. CONCLUSIONS: The ECG-EF could be used to initially screen asymptomatic left ventricular dysfunction (LVD) and it could also independently contribute to the predictions of future CV adverse events. Although further large-scale studies are warranted, DLM-based ECG-EF could serve as a promising diagnostic supportive and management-guided tool for CV disease prediction and the care of patients with LVD.
射血分数(EF)为心力衰竭(HF)及其管理提供关键信息。心电图(ECG)是一种用于心脏电生理活动的非侵入性筛查工具,已被用于基于通过大量数据训练的深度学习模型(DLM)来检测低EF患者。然而,尚无研究广泛调查其临床影响。目的:本研究开发了一种通过心电图估计EF的DLM(ECG-EF)。我们进一步研究了ECG-EF与基于超声心动图的EF(ECHO-EF)之间的关系,并探讨了它们对未来心血管不良事件的影响。方法:使用57206份带有相应超声心动图的心电图来训练我们的DLM。我们比较了一系列训练策略并选择了最佳的DLM。DLM的架构基于先前开发的ECG12Net。接下来,使用10762份心电图进行验证,另外20629份心电图用于进行准确性测试。评估了ECG-EF和ECHO-EF之间的变化。主要随访不良事件包括未来ECHO-EF变化和主要不良心血管事件(MACE)。结果:在随访队列中,采用性别/年龄匹配策略训练的DLM实现了最佳曲线下面积(AUC)为0.9472,敏感性为86.9%,特异性为89.6%,相关性为0.603,平均绝对误差为7.436。在预测准确的患者(初始差异<10%)中,ECG-EF和ECHO-EF的变化轨迹比所有患者(R平方=0.115)更一致(R平方=0.35)。与ECG-EF正常(>50%)的患者相比,ECG-EF较低(≤35%)的患者发生心血管(CV)并发症、ECHO-EF恢复延迟和ECHO-EF恶化更早的风险更高。重要的是,ECG-EF对MACE和所有CV不良结局具有独立影响,对CV结局的预测优于ECHO-EF。结论:ECG-EF可用于初步筛查无症状左心室功能障碍(LVD),并且它也可以独立地有助于预测未来的CV不良事件。尽管需要进一步的大规模研究,但基于DLM的ECG-EF可以作为一种有前途的诊断支持和管理指导工具,用于CV疾病预测和LVD患者的护理。