Department of Industrial and Management Systems Engineering, University of South Florida, Tampa, FL 33620-5350, United States.
Med Eng Phys. 2012 May;34(4):485-97. doi: 10.1016/j.medengphy.2011.08.009. Epub 2011 Sep 21.
Cardiovascular disorders, such as myocardial infarction (MI) are the leading causes of mortality in the world. This paper presents an approach that uses novel spatio-temporal patterns of the vectorcardiogram (VCG) signals for the identification of various types of MI. In contrast to the traditional electrocardiogram (ECG) approaches, the 3D cardiac VCG signal is partitioned into 8 octants for localized analysis of the heart's electrical activities. The proposed method was tested using the PhysioNet PTB database for 368 MIs and 80 healthy control (HC) recordings, each of which includes 12-lead ECG and 3-lead VCG. Significant differences are found in the VCG spatial distribution between MI and HC groups. Furthermore, classification and regression tree (CART) analysis was used to demonstrate that VCG octant features can distinguish MIs from HCs with a sensitivity (accuracy of MI identification) of 97.28% and a specificity (accuracy of HC identification) of 95.00%, which is promising compared to the previously reported results using other ECG databases. The results indicate that the present approach provides an effective way for monitoring, post-processing, and interpretation of ECG data, and hopefully can impact the current cardiac diagnostic practice.
心血管疾病,如心肌梗死(MI),是世界上主要的死亡原因。本文提出了一种利用心向量图(VCG)信号的新时空模式来识别各种类型 MI 的方法。与传统的心电图(ECG)方法不同,3D 心脏 VCG 信号被分为 8 个扇区,用于局部分析心脏的电活动。该方法使用 PhysioNet PTB 数据库对 368 例 MI 和 80 例健康对照(HC)记录进行了测试,每个记录包括 12 导联 ECG 和 3 导联 VCG。MI 和 HC 组之间的 VCG 空间分布存在显著差异。此外,分类回归树(CART)分析表明,VCG 扇区特征可以区分 MI 和 HC,其敏感性(MI 识别准确率)为 97.28%,特异性(HC 识别准确率)为 95.00%,与使用其他 ECG 数据库报告的结果相比具有很大的优势。结果表明,该方法为监测、后处理和解释 ECG 数据提供了一种有效的方法,并有望影响当前的心脏诊断实践。