Background: Extensive clinical evidence suggests that a preventive screening of coronary heart disease (CHD) at an earlier stage can greatly reduce the mortality rate. We use 64 two-dimensional speckle tracking echocardiography (2D-STE) features and seven clinical features to predict whether one has CHD. Methods: We develop a machine learning approach that integrates a number of popular classification methods together by model stacking, and generalize the traditional stacking method to a two-step stacking method to improve the diagnostic performance. Results: By borrowing strengths from multiple classification models through the proposed method, we improve the CHD classification accuracy from around 70% to 87.7% on the testing set. The sensitivity of the proposed method is 0.903 and the specificity is 0.843, with an AUC of 0.904, which is significantly higher than those of the individual classification models. Conclusions: Our work lays a foundation for the deployment of speckle tracking echocardiography-based screening tools for coronary heart disease.
翻译:背景:广泛的临床证据表明,早期对冠心病(CHD)的预防性筛查可以大大降低死亡率。我们使用64个二维分光跟踪回声心动(2D-STE)特征和7个临床特征来预测一个人是否有CHD。方法:我们开发了一种机器学习方法,通过模型堆叠将一些流行的分类方法结合起来,并将传统的堆叠方法推广到两步堆叠方法,以改进诊断性能。结果:通过采用拟议方法从多个分类模型中借用优势,我们通过测试集将CHD分类的精度从70%提高到87.7%左右。拟议方法的灵敏度为0.903,特性为0.843,AUC为0.904,大大高于单个分类模型的灵敏度。结论:我们的工作为部署对冠心病进行跟踪的回心学检查工具奠定了基础。