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心动周期特征在磁心电图(MCG)中用于识别缺血性心脏病(IHD)的机器学习分类中的作用。

The role of beat-by-beat cardiac features in machine learning classification of ischemic heart disease (IHD) in magnetocardiogram (MCG).

机构信息

SQUIDs Applications Section, SQUID and Detector Technology Division, Materials Science Group, Indira Gandhi Centre for Atomic Research, Kalpakkam-603 102, Tamil Nadu, India.

Centre for Medical Electronics, Department of Electronics and Communication Engineering, Anna University, Chennai-600 025, Tamil Nadu, India.

出版信息

Biomed Phys Eng Express. 2024 May 7;10(4). doi: 10.1088/2057-1976/ad40b1.

Abstract

Cardiac electrical changes associated with ischemic heart disease (IHD) are subtle and could be detected even in rest condition in magnetocardiography (MCG) which measures weak cardiac magnetic fields. Cardiac features that are derived from MCG recorded from multiple locations on the chest of subjects and some conventional time domain indices are widely used in Machine learning (ML) classifiers to objectively distinguish IHD and control subjects. Most of the earlier studies have employed features that are derived from signal-averaged cardiac beats and have ignored inter-beat information. The present study demonstrates the utility of beat-by-beat features to be useful in classifying IHD subjects (n = 23) and healthy controls (n = 75) in 37-channel MCG data taken under rest condition of subjects. The study reveals the importance of three features (out of eight measured features) namely, the field map angle (FMA) computed from magnetic field map, beat-by-beat variations of alpha angle in the ST-T region and T wave magnitude variations in yielding a better classification accuracy (92.7 %) against that achieved by conventional features (81 %). Further, beat-by-beat features are also found to augment the accuracy in classifying myocardial infarction (MI) Versus control subjects in two public ECG databases (92 % from 88 % and 94 % from 77 %). These demonstrations summarily suggest the importance of beat-by-beat features in clinical diagnosis of ischemia.

摘要

与缺血性心脏病(IHD)相关的心脏电变化很细微,即使在静息状态下,通过测量微弱心脏磁场的磁心电图(MCG)也能检测到。从受试者胸部多个位置记录的 MCG 中得出的心脏特征和一些传统的时域指数,被广泛用于机器学习(ML)分类器中,以客观地区分 IHD 患者和对照组。大多数早期研究都采用了源自信号平均心脏搏动的特征,而忽略了搏动间信息。本研究在受试者静息状态下,在 37 通道 MCG 数据中,证明了逐搏特征在分类 IHD 患者(n=23)和健康对照者(n=75)中的有用性。研究揭示了三个特征(在测量的八个特征中)的重要性,即从磁场图计算的磁场图角(FMA)、ST-T 区域中α角的逐搏变化以及 T 波幅度变化,从而获得了更高的分类准确性(92.7%),优于传统特征(81%)。此外,逐搏特征还提高了在两个公共 ECG 数据库中对心肌梗死(MI)与对照组进行分类的准确性(从 88%提高到 92%,从 77%提高到 94%)。这些结果表明,逐搏特征在缺血性疾病的临床诊断中具有重要意义。

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