Baker Heart and Diabetes Institute, Melbourne, Victoria, Australia; School of Public Health and Preventive Medicine, Monash University, Melbourne, Victoria, Australia.
Baker Heart and Diabetes Institute, Melbourne, Victoria, Australia; School of Biomedical Sciences, Melbourne University, Melbourne, Victoria, Australia.
JACC Cardiovasc Imaging. 2021 Oct;14(10):1904-1915. doi: 10.1016/j.jcmg.2021.04.020. Epub 2021 Jun 16.
The purpose of this study was to identify whether machine learning from processing of continuous wave transforms (CWTs) to provide an "energy waveform" electrocardiogram (ewECG) could be integrated with echocardiographic assessment of subclinical systolic and diastolic left ventricular dysfunction (LVD).
Asymptomatic LVD has management implications, but routine echocardiography is not undertaken in subjects at risk of heart failure. Signal processing of the surface ECG with the use of CWT can identify abnormal myocardial relaxation.
EwECG and echocardiography were undertaken in 398 participants at risk of heart failure (HF). Reduced global longitudinal strain (GLS ≤16%)), diastolic abnormalities (E/e' >15, left atrial enlargement with E/e' >10 or impaired relaxation) or LV hypertrophy defined LVD. EwECG feature selection and supervised machine-learning by random forest (RF) classifier was undertaken with 643 CWT-derived features and the ARIC (Atherosclerosis Risk In Communities) heart failure risk score.
The ARIC score and 18 CWT features were selected to build a RF predictive model for LVD in a training dataset (n = 287; 60% female, median age 71 [interquartile range: 68 to 74] years). Model performance was tested in an independent group (n = 111; 49% female, median age 61 years [59 to 66 years]), demonstrating 85% sensitivity and 72% specificity (area under the receiver-operating characteristic curve [AUC]: 0.83; 95% confidence interval [CI]: 0.74 to 0.92). With ARIC score removed, sensitivity was 88% and specificity, 70% (AUC: 0.78; 95% CI: 0.70 to 0.86). RF models for reduced GLS and diastolic abnormalities including similar features had sensitivities that were unsuitable for screening. Conventional candidates for LVD screening (ARIC score, N-terminal pro-B-type natriuretic peptide, and standard automated ECG analysis) had inferior discriminative ability. Integration of ewECG in screening of people at risk of HF would reduce need for echocardiography by 45% while missing 12% of LVD cases.
Machine learning applied to ewECG is a sensitive screening test for LVD, and its integration into screening of patients at risk for HF would reduce the number of echocardiograms by almost one-half.
本研究旨在确定从连续波变换(CWT)的处理中获取机器学习是否可以与亚临床收缩和舒张性左心室功能障碍(LVD)的超声心动图评估相结合。
无症状性 LVD 具有管理意义,但有心力衰竭风险的患者不常规进行超声心动图检查。使用 CWT 对体表心电图进行信号处理可以识别异常的心肌松弛。
在 398 名有心力衰竭(HF)风险的参与者中进行了 ewECG 和超声心动图检查。左心室整体纵向应变降低(GLS≤16%)、舒张异常(E/e' >15、左心房扩大伴 E/e' >10 或松弛不良)或 LV 肥厚定义为 LVD。通过随机森林(RF)分类器对 643 个 CWT 衍生特征和 ARIC(社区动脉粥样硬化风险)心力衰竭风险评分进行 ewECG 特征选择和有监督机器学习。
在训练数据集(n=287;60%为女性,中位年龄 71 [四分位距:68 至 74] 岁)中,ARIC 评分和 18 个 CWT 特征被选入用于构建 LVD 的 RF 预测模型。在独立组(n=111;49%为女性,中位年龄 61 岁 [59 至 66 岁])中测试模型性能,显示出 85%的敏感性和 72%的特异性(接受者操作特征曲线下面积 [AUC]:0.83;95%置信区间 [CI]:0.74 至 0.92)。去除 ARIC 评分后,敏感性为 88%,特异性为 70%(AUC:0.78;95%CI:0.70 至 0.86)。用于检测 GLS 降低和舒张异常的 RF 模型包括类似的特征,其敏感性不适合用于筛查。LVD 筛查的常规候选指标(ARIC 评分、N 末端脑钠肽前体和标准自动化 ECG 分析)的鉴别能力较差。在 HF 风险患者的筛查中整合 ewECG 将使超声心动图的需求减少 45%,同时漏诊 12%的 LVD 病例。
应用于 ewECG 的机器学习是 LVD 的敏感筛查测试,将其纳入 HF 风险患者的筛查将使超声心动图的数量减少近一半。