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首页> 外文期刊>Biomedical signal processing and control >Multi-lead ECG signal analysis for myocardial infarction detection and localization through the mapping of Grassmannian and Euclidean features into a common Hilbert space
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Multi-lead ECG signal analysis for myocardial infarction detection and localization through the mapping of Grassmannian and Euclidean features into a common Hilbert space

机译:通过基层和欧几里德特征的映射到普通的希尔伯特空间,多引导心肌梗死检测和定位的MEDIMIAL梗死检测和定位

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Background and objective: Electrocardiogram is commonly used as a diagnostic tool for the monitoring of cardiac health and the detection of possible heart diseases. However, the procedure followed for the diagnosis of heart abnormalities is time consuming and prone to human errors. Thus, the development of computer-aided techniques for the automatic analysis of electrocardiogram signals is of vital importance for the diagnosis and prevention of heart diseases. The most serious outcome of coronary heart disease is the myocardial infarction, i.e., the rapid and irreversible damage of cardiac muscles, which, if not diagnosed and treated in time, continues to damage further the myocardial structure and function. In this paper we propose a novel approach for the automatic detection and localization of myocardial infarction from multi-lead electrocardiogram signals.Methods: The proposed method initially reshapes the multidimensional signal into a third-order tensor structure and subsequently extracts feature representations in both Euclidean and Grassmannian space. In addition, two different methods are proposed for the mapping of the two different feature representations into a common Hilbert space before the final classification of signals. The first approach is based on the mapping of both Grassmannian and Euclidean features in a Reproducing Kernel Hilbert Space (RKHS), while the second one attempts to initially apply Vector of Locally Aggregated Descriptors (VLAD) encoding directly to Grassmann manifold and then concatenate the two VLAD representations.Results: For the evaluation of the proposed method, we have conducted extensive tests using a publicly available dataset, namely PTB Diagnostic ECG database, containing 549 multi-lead ECG data recordings from 290 subjects and from different diagnostic classes. The method provides an excellent detection rate of 100%, and localization rate, i.e., 100% with the first fusion method and 99.7% with the second one.Conclusions: The Experimental results presented in this paper show the superiority of the proposed methodology against a number of state-of-the-art approaches. The main advantage of the proposed approach is that it exploits better the intercorrelations between signals of different ECG leads, by extracting feature representations that lie in different geometrical spaces and contain complementary information with regard to the dynamics of signals. (C) 2019 Elsevier Ltd. All rights reserved.
机译:背景和目的:心电图通常用作监测心脏健康的诊断工具和可能的心脏病的检测。然而,用于诊断心脏异常的手术是耗时和容易出现人类错误。因此,用于自动分析心电图信号的计算机辅助技术的发展对于诊断和预防心脏病至关重要。冠心病最严重的结果是心肌梗死,即心肌的快速和不可逆转的损伤,如果不及时诊断和治疗,继续损害心肌结构和功能。在本文中,我们提出了一种新的方法,用于从多引导心电图信号自动检测和定位心肌梗死的新方法。方法:所提出的方法最初将多维信号重塑成三阶张量结构,随后提取欧几里德和欧几里德的特征表示提取Gransmannian空间。另外,提出了两种不同的方法,用于在信号的最终分类之前将两个不同的特征表示映射到普通的Hilbert空间中。第一种方法是基于在再现内核Hilbert空间(RKHS)中的基础和欧几里德特征的映射,而第二种方法首先将局部聚合描述符(VLAD)的向量直接施加到Grassmann歧管,然后连接两者VLAD表示。对于评估所提出的方法,我们使用公共可用的数据集进行了广泛的测试,即PTB诊断ECG数据库,其中包含来自290个科目的549个多引导ECG数据录制,以及来自不同的诊断类。该方法提供优异的检测率为100%,即定位速率,即100%,具有第一融合方法,第二种融合方法和99.7%。结论:本文中提出的实验结果表明了提出的方法的优越性最先进的方法数。所提出的方法的主要优点是,它通过提取位于不同几何空间中的特征表示并包含关于信号动态的互补信息来利用不同ECG引线的信号之间的互相关性。 (c)2019 Elsevier Ltd.保留所有权利。

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