ST段形态学建模与分类对急性心肌梗死的增强检测

R. Firoozabadi, R. Gregg, S. Babaeizadeh
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引用次数: 2

摘要

许多心脏疾病,如急性心包炎(PC)和早期复极(ER)引起ST段抬高,类似ST段抬高型心肌梗死(STEMI)。目前的指南建议通过分析ST段形态学来区分STEMI和这些混杂因素。PC和ER(可能还有STEMI)的ST段抬高在JTpeak间期呈凹状(向上),而ECG ST段呈凸状或直状与STEMI的诊断有关。我们开发了一种ST段的凹度特征分类算法。引入二次多项式回归算法对JTpeak区间形状进行建模。我们的诊断算法生成具有代表性的心跳,并测量心电图记录中12导联10秒片段的基点和ST水平等标准测量值。采用最小二乘多项式回归算法对JTpeak区间进行抛物线建模。确定了分类器的曲率、抛物线方向和顶点、模型拟合误差和噪声度量等特征。自举聚合树集成分类器确定ST段形状。我们的算法在两个医疗中心收集的12导联心电图数据库上进行了评估。与简单的传统方法相比,我们的ST段多项式回归模型在凹度检测方面有显着改善。
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Modeling and Classification of the ST Segment Morphology for Enhanced Detection of Acute Myocardial Infarction
A number of cardiac conditions such as acute pericarditis (PC) and early repolarization (ER) cause ST elevation which mimics ST-segment Elevation Myocardial Infarction (STEMI). Current guidelines recommend analyzing ST segment morphology to distinguish STEMI from these confounders. ST elevation in PC and ER (and possibly in STEMI) is concave (upward) in the JTpeak interval, while a convex or straight ECG ST segment is associated with the diagnosis of STEMI. We developed an algorithm to classify concavity characteristic of the ST segment. A quadratic polynomial regression algorithm was introduced to model the shape of JTpeak interval. Our diagnostic algorithm generated representative beats and measured the fiducial points and standard measurements such as ST level in 12-lead 10-sec segments of ECG recordings. JTpeak interval was modeled by a parabola using a least-squares polynomial regression algorithm. Classifier features such as curvature, parabola direction and vertex, model fit error, and the noise measure were determined. A bootstrap-aggregated tree ensemble classifier determined the ST segment shape. Our algorithm was evaluated on a 12-lead ECG database collected in two medical centers. Our ST segment polynomial regression model exhibited significant improvement in concavity detection versus a simple conventional method.
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