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A multi-dimensional association information analysis approach to automated detection and localization of myocardial infarction

机译:一种多维关联信息分析方法,以自动检测和心肌梗死的定位

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摘要

Developing an accurate and automatic algorithm for detection and localization of myocardial infarction (MI) remains a great challenge for multi-lead electrocardiograph (ECG) signals. The core is a novel technique of multi-dimensional association information analysis for a multi-lead ECG tensor. Tensorization based on Discrete Wavelet Transform is investigated to construct an effective ECG tensor containing multi-dimensional association information from 12-lead ECG signals. The multi-lead feature extraction algorithm based on Parallel Factor Analysis is developed to automatically extract the low-dimensional and highly recognizable lead characteristic features of the tensor. After that a bagged decision tree is constructed to categorize 12 types of heartbeats, healthy controls and 11 kinds of MI, from the lead features. Using the PTB database, we compare with the existing MI diagnosis methods. For MI detection, significant improvement of the accuracy, sensitivity and specificity are achieved; as high as 99.88%, 99.98% and 99.39% respectively. Furthermore, an experiment with 36-dimensional features obtained from the ECG tensor is conducted for the localization of 11 kinds of MI, and our proposed method achieved an accuracy of 99.40%, sensitivity of 99.86%, and specificity of 99.89%. The proposed algorithm can effectually accomplish the localization of 11 categories of MI by using the lead features extracted from the multi-dimensional association ECG tensor, which has not been achieved in literature. The accurate and comprehensive tool development will greatly help cardiologists diagnose 12-lead ECG signals of MI.
机译:开发精确和自动算法的心肌梗死(MI)的检测和定位算法仍然是多引导心电图(ECG)信号的巨大挑战。该核心是多引导ECG张量的多维关联信息分析的新技术。研究了基于离散小波变换的张调,以构造来自12引导ECG信号的多维关联信息的有效ECG张量。基于并行因子分析的多引脚特征提取算法开发为自动提取张量的低维和高度可识别的铅特征。之后,构建一个袋装决策树以从引线特征对12种类型的心跳,健康控制和11种MI进行分类。使用PTB数据库,我们与现有的MI诊断方法进行比较。对于MI检测,实现了精确度,灵敏度和特异性的显着提高;高达99.88%,99.98%和99.39%。此外,对11种Mi的定位进行了具有36维特征的实验,我们提出的方法达到了99.40%,灵敏度为99.86%,特异性为99.89%。所提出的算法可以通过使用从多维关联ECG张量提取的引线特征实现11类MI的定位,这在文献中尚未实现。准确和综合的工具开发将极大地帮助心脏病学家诊断MI的12引导ECG信号。

著录项

  • 来源
    《Engineering Applications of Artificial Intelligence》 |2021年第1期|104092.1-104092.9|共9页
  • 作者单位

    Key Laboratory of Digital Medical Engineering of Hebei Province College of Electronic and Information Engineering Hebei University Baoding 071002 China College of Physics Science and Technology Hebei University Baoding 071002 China;

    Key Laboratory of Digital Medical Engineering of Hebei Province College of Electronic and Information Engineering Hebei University Baoding 071002 China;

    Key Laboratory of Digital Medical Engineering of Hebei Province College of Electronic and Information Engineering Hebei University Baoding 071002 China;

    Key Laboratory of Digital Medical Engineering of Hebei Province College of Electronic and Information Engineering Hebei University Baoding 071002 China;

    Affiliated Hospital of Hebei University Baoding 071002 China;

    College of Computer Engineering Nanyang Technological University Singapore 639798 Singapore;

    Institute of Automation Chinese Academy of Sciences Beijing 100190 China;

    Key Laboratory of Digital Medical Engineering of Hebei Province College of Electronic and Information Engineering Hebei University Baoding 071002 China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Myocardial infarction; Electrocardiograph; Multi-dimensional association tensor; Parallel factor analysis; Bagged decision tree;

    机译:心肌梗死;心电图仪;多维关联张量;平行因子分析;袋装决策树;

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