Patel Heenaben B, Yanamala Naveena, Patel Brijesh, Raina Sameer, Farjo Peter D, Sunkara Srinidhi, Tokodi Márton, Kagiyama Nobuyuki, Casaclang-Verzosa Grace, Sengupta Partho P
Division of Cardiology, West Virginia University Heart and Vascular Institute, Morgantown, WV.
Institute for Software Research, School of Computer Science, Carnegie Mellon University, Pittsburgh, PA.
J Patient Cent Res Rev. 2022 Apr 18;9(2):98-107. doi: 10.17294/2330-0698.1893. eCollection 2022 Spring.
Electrocardiography (ECG)-derived machine learning models can predict echocardiography (echo)-derived indices of systolic or diastolic function. However, systolic and diastolic dysfunction frequently coexists, which necessitates an integrated assessment for optimal risk-stratification. We explored an ECG-derived model that emulates an echo-derived model that combines multiple parameters for identifying patient phenogroups at risk for major adverse cardiac events (MACE).
In this substudy of a prospective, multicenter study, patients from 3 institutions (n=727) formed an internal cohort, and the fourth institution was reserved as an external test set (n=518). A previously validated patient similarity analysis model was used for labeling the patients as low-/high-risk phenogroups. These labels were utilized for training an ECG-derived deep neural network model to predict MACE risk per phenogroup. After 5-fold cross-validation training, the model was tested on the reserved external dataset.
Our ECG-derived model showed robust classification of patients, with area under the receiver operating characteristic curve of 0.86 (95% CI: 0.79-0.91) and 0.84 (95% CI: 0.80-0.87), sensitivity of 80% and 76%, and specificity of 88% and 75% for the internal and external test sets, respectively. The ECG-derived model demonstrated an increased probability for MACE in high-risk vs low-risk patients (21% vs 3%; P<0.001), which was similar to the echo-trained model (21% vs 5%; P<0.001), suggesting comparable utility.
This novel ECG-derived machine learning model provides a cost-effective strategy for predicting patient subgroups in whom an integrated milieu of systolic and diastolic dysfunction is associated with a high risk of MACE.
心电图(ECG)衍生的机器学习模型可以预测超声心动图(echo)衍生的收缩或舒张功能指标。然而,收缩和舒张功能障碍常常并存,这就需要进行综合评估以实现最佳的风险分层。我们探索了一种ECG衍生模型,该模型模拟了一种echo衍生模型,该echo衍生模型结合了多个参数来识别有重大不良心脏事件(MACE)风险的患者表型组。
在这项前瞻性多中心研究的子研究中,来自3个机构的患者(n = 727)组成了一个内部队列,第四个机构作为外部测试集(n = 518)保留。使用先前验证的患者相似性分析模型将患者标记为低/高风险表型组。这些标签用于训练ECG衍生的深度神经网络模型,以预测每个表型组的MACE风险。经过5折交叉验证训练后,该模型在保留的外部数据集中进行测试。
我们的ECG衍生模型对患者进行了强有力的分类,内部和外部测试集的受试者工作特征曲线下面积分别为0.86(95%CI:0.79 - 0.91)和0.84(95%CI:0.80 - 0.87),敏感性分别为80%和76%,特异性分别为88%和75%。ECG衍生模型显示高风险患者发生MACE的概率高于低风险患者(21%对3%;P<0.001),这与echo训练模型相似(21%对5%;P<0.001),表明效用相当。
这种新型的ECG衍生机器学习模型为预测收缩和舒张功能障碍综合环境与MACE高风险相关的患者亚组提供了一种经济有效的策略。