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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >A two-stage mechanism for registration and classification of ECG using Gaussian mixture model
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A two-stage mechanism for registration and classification of ECG using Gaussian mixture model

机译:使用高斯混合模型的心电图注册和分类的两阶段机制

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摘要

An automatic classifier for electrocardiogram (ECG) based cardiac abnormality detection using Gaussian mixture model (GMM) is presented here. In first stage, pre-processing that includes Fe-sampling, QRS detection, linear prediction (LP) model estimation, residual error signal computation and principal component analysis (PCA) has been used for registration of linearly independent ECG features. GMM is here used for classification based on the registered features in a two-class pattern classification problem Using 730 ECG segments from MIT-BIH Arrhythmia and European ST-T Ischemia datasets. A set of 12 features explaining 99.7% of the data variability is obtained using PCA from residual error signals for GMM based classification. Sixty percent of the data is used for training the classifier and 40% for validating. It is observed that the overall accuracy of the proposed strategy is 94.29%. As an advantage, it is also verified that Chernoff bound and Bhattacharya bounds lead to minimum error for GMM based classifier. In addition, a comparative study is done with the standard classification techniques with respect to its overall accuracy.
机译:本文介绍了一种使用高斯混合模型(GMM)的基于心电图(ECG)的心脏异常检测的自动分类器。在第一阶段,包括铁采样,QRS检测,线性预测(LP)模型估计,残留误差信号计算和主成分分析(PCA)在内的预处理已用于注册线性独立的ECG功能。 GMM用于基于两类模式分类问题中已注册特征的分类,该问题使用了MIT-BIH心律失常和欧洲ST-T缺血数据集中的730个ECG段。使用PCA从基于GMM的分类的残留误差信号中获得了12个解释99.7%数据可变性的特征。 60%的数据用于训练分类器,40%的数据用于验证。可以看出,该策略的整体准确性为94.29%。作为优点,还证实了切尔诺夫界和巴塔查里亚界导致基于GMM的分类器的最小误差。此外,就其总体准确性而言,使用标准分类技术进行了比较研究。

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