Department of Industrial and Management SystemsEngineering, University of South Florida, Tampa, FL 33620 USA.
IEEE Trans Biomed Eng. 2011 Feb;58(2):339-47. doi: 10.1109/TBME.2010.2063704. Epub 2010 Aug 5.
Myocardial infarction (MI), also known as a heart attack, is a leading cause of mortality in the world. Spatial vectorcardiogram (VCG) signals are recorded on the body surface to monitor the underlying cardiac electrical activities in three orthogonal directions of the body, namely, frontal, transverse, and sagittal planes. The 3-D VCG vector loops provide a new way to study the cardiac dynamical behaviors, as opposed to the conventional time-delay reconstructed phase space from a single ECG trace. However, few, if any, previous approaches studied the relationships between cardiac disorders and recurrence patterns in VCG signals. This paper presents the recurrence quantification analysis (RQA) of VCG signals in multiple wavelet scales for the identification of cardiac disorders. The linear classification models using multiscale RQA features were shown to detect MI with an average sensitivity of 96.5% and an average specificity of 75% in the randomized classification experiments of PhysioNet Physikalisch-Technische Bundesanstalt database, which is comparable to the performance of human experts. This study is strongly indicative of potential automated MI classification algorithms for diagnostic and therapeutic purposes.
心肌梗死(MI),又称心脏病发作,是世界上主要的死亡原因。空间向量心电图(VCG)信号记录在体表,以监测身体三个正交方向(即额状面、横切面和矢状面)的潜在心脏电活动。3D VCG 向量环提供了一种新的方法来研究心脏动力学行为,而不是传统的从单个心电图迹线重建的时滞相位空间。然而,以前很少有研究方法研究 VCG 信号中的心脏紊乱与复发模式之间的关系。本文提出了多小波尺度下 VCG 信号的递归定量分析(RQA),以识别心脏紊乱。使用多尺度 RQA 特征的线性分类模型在 PhysioNet Physikalisch-Technische Bundesanstalt 数据库的随机分类实验中显示出对 MI 的检测,平均灵敏度为 96.5%,平均特异性为 75%,与人类专家的性能相当。这项研究强烈表明,有可能为诊断和治疗目的开发自动 MI 分类算法。