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Classification methodology of CVD with localized feature analysis using Phase Space Reconstruction targeting personalized remote health monitoring

机译:使用针对个人远程健康监测的相空间重构进行局部特征分析的CVD分类方法

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This paper introduces the classification methodology of Cardiovascular Disease (CVD) with localized feature analysis using Phase Space Reconstruction (PSR) technique targeting personalized health care. The proposed classification methodology uses a few localized features (QRS interval and PR interval) of individual Electrocardiogram (ECG) beats from the Feature Extraction (FE) block and detects the desynchronization in the given intervals after applying the PSR technique. Considering the QRS interval, if any notch is present in the QRS complex, then the corresponding contour will appear and the variation in the box count indicating a notch in the QRS complex. Likewise, the contour and the disparity of box count due to the variation in the PR interval localized wave have been noticed using the proposed PSR technique. ECG database from the Physionet (MIT-BIH and PTBDB) has been used to verify the proposed analysis on localized features using proposed PSR and has enabled us to classify the various abnormalities like fragmented QRS complexes, myocardial infarction, ventricular arrhythmia and atrial fibrillation. The design have been successfully tested for diagnosing various disorders with 98% accuracy on all the specified abnormal databases.
机译:本文介绍了针对心血管疾病(CVD)的分类方法,该方法采用针对个性化医疗保健的相空间重构(PSR)技术进行局部特征分析。提出的分类方法使用来自特征提取(FE)块的单个心电图(ECG)搏动的一些局部特征(QRS间隔和PR间隔),并在应用PSR技术后在给定的间隔中检测失步。考虑到QRS间隔,如果QRS联合体中存在任何缺口,则将出现相应的轮廓,并且框数的变化表示QRS联合体中有缺口。同样,使用提出的PSR技术已经注意到由于PR间隔局部波的变化而引起的盒计数的轮廓和视差。 Physionet(MIT-BIH和PTBDB)的ECG数据库已用于验证使用建议的PSR对局部特征进行的建议分析,并使我们能够对各种异常进行分类,例如碎片化QRS络合物,心肌梗塞,室性心律不齐和房颤。该设计已通过测试,可在所有指定的异常数据库上以98%的准确度诊断各种疾病。

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