A two-stage mechanism for registration and classification of ECG using Gaussian mixture model

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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 re-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.

论文关键词:ECG,Pan Tompkins algorithm,Linear prediction,PCA,GMM,Chernoff bound,Bhattacharya bound

论文评审过程:Received 30 August 2008, Revised 31 December 2008, Accepted 16 February 2009, Available online 5 March 2009.

论文官网地址:https://doi.org/10.1016/j.patcog.2009.02.008