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Arrhythmia identification and classification using wavelet centered methodology in ECG signals

机译:心律失常识别和分类在心电图信号中使用小波居中方法

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A systematic and profound reading of an electrocardiogram (ECG) is needed to identify the different kinds of cardiac diseases called Arrhythmia. The manual identification of the changes in the ECG pattern over a long period is challenging. This work can be automatized by developing algorithms that run perfectly on a computer or on a smartphone to identify the causes of arrhythmia. The proposed work includes three stages of analysis: (1) the ECG noise suppression, (2) RR and PR intervals extraction from the ECG signal, and the (3) ECG classification. The proposed methodology accurately identified the locations and amplitudes of P, Q, R, S, and T subwaves of the ECG signal using a dedicated wavelet design. Experimental results of the MIT-BIH arrhythmia database records indicate the energy levels of the ECG signal at a decomposition level of 4 and 8 as 3.694e(+09) and 7.148e(+09), respectively. These energy levels are used in deciding the wavelet decomposition levels for feature extraction and classification of the ECG signal. A decomposition level of eight is proposed in this work for perfect feature extraction and classification of the ECG signal. An analysis of subband frequencies obtained in the decomposition of the ECG signal is also performed. The proposed methodology gives a sensitivity of 99.58% and positive predictive value of 95.92% in the ECG examination.
机译:需要一种用于心电图(ECG)的系统和深度读数,以鉴定称为心律失常的不同类型的心脏病。手动识别长期内心电图模式的变化是具有挑战性的。这项工作可以通过在计算机上或智能手机上完美地运行的算法自动化,以识别心律失常的原因。所提出的工作包括三个分析阶段:(1)ECG噪声抑制,(2)RR和PR间隔从ECG信号提取,(3)ECG分类。所提出的方法使用专用小波设计精确地识别了ECG信号的P,Q,R,S和T子断的位置和幅度。 MIT-BIH心律失常数据库记录的实验结果表明,ECG信号的分解水平分别为4和8分别为3.694e(+09)和7.148e(+09)。这些能量水平用于确定小波分解水平,用于ECG信号的特征提取和分类。在这项工作中提出了一种分解水平,用于完美特征提取和ECG信号的分类。还执行了在ECG信号分解中获得的子带频率的分析。该方法的敏感性在心电图审查中给出了99.58%的敏感性99.58%,阳性预测值95.92%。

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