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Automated screening of arrhythmia using wavelet based machine learning techniques.

机译:使用基于小波的机器学习技术自动筛选心律失常。

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Arrhythmia is one of the preventive cardiac problems frequently occurs all over the globe. In order to screen such disease at early stage, this work attempts to develop a system approach based on registration, feature extraction using discrete wavelet transform (DWT), feature validation and classification of electrocardiogram (ECG). This diagnostic issue is set as a two-class pattern classification problem (normal sinus rhythm versus arrhythmia) where MIT-BIH database is considered for training, testing and clinical validation. Here DWT is applied to extract multi-resolution coefficients followed by registration using Pan Tompkins algorithm based R point detection. Moreover, feature space is compressed using sub-band principal component analysis (PCA) and statistically validated using independent sample t-test. Thereafter, the machine learning algorithms viz., Gaussian mixture model (GMM), error back propagation neural network (EBPNN) and support vector machine (SVM) are employed for pattern classification. Results are studied and compared. It is observed that both supervised classifiers EBPNN and SVM lead to higher (93.41% and 95.60% respectively) accuracy in comparison with GMM (87.36%) for arrhythmia screening.
机译:心律失常是全球范围内经常发生的预防性心脏问题之一。为了在早期筛查此类疾病,这项工作尝试开发一种基于配准,使用离散小波变换(DWT)进行特征提取,特征验证和心电图分类(ECG)的系统方法。该诊断问题设置为两类模式分类问题(正常窦性心律与心律不齐),其中考虑将MIT-BIH数据库用于训练,测试和临床验证。在此,DWT用于提取多分辨率系数,然后使用基于Pan Tompkins算法的R点检测进行配准。此外,使用子带主成分分析(PCA)压缩特征空间,并使用独立样本t检验进行统计验证。此后,采用机器学习算法,即高斯混合模型(GMM),误差反向传播神经网络(EBPNN)和支持向量机(SVM)进行模式分类。研究结果并进行比较。观察到,与心律失常筛查的GMM(87.36%)相比,监督分类器EBPNN和SVM的准确性更高(分别为93.41%和95.60%)。

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