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An Improved Method for Discriminating ECG Signals using Typical Nonlinear Dynamic Parameters and Recurrence Quantification Analysis in Cardiac Disease Therapy

机译:一种利用典型非线性动力学参数和心脏病疗法复发定量分析来辨别ECG信号的改进方法

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The discrimination of ECG signals using nonlinear dynamic parameters is of crucial importance in the cardiac disease therapy and chaos control for arrhythmia defibrillation in the cardiac system. However, the discrimination results of previous studies using features such as maximal Lyapunov exponent (λ{sub}(max)) and correlation dimension (D{sub}2) alone are somewhat limited in recognition rate. In this paper, improved methods for computing λ{sub}(max) and D{sub}2 are purposed. Another parameter from recurrence quantification analysis is incorporated to the new multi-feature Bayesian classifier with λ{sub}(max) and D{sub}2 so as to improve the discrimination power. Experimental results have verified the prediction using Fisher discriminant that the maximal vertical line length (V{sub}(max)) from recurrence quantification analysis is the best to distinguish different ECG classes. Experimental results using the MIT-BIH Arrhythmia Database show improved and excellent overall accuracy (96.3%), average sensitivity (96.3%) and average specificity (98.15%) for discriminating sinus, premature ventricular contraction and ventricular flutter signals.
机译:使用非线性动态参数的ECG信号的辨别对于心脏系统中心脏病治疗和心律失常除颤的Chaos控制至关重要。然而,使用诸如Maximal Lyapunov指数(λ{Sub}(MAX))和相关维(D {Sub} 2)的特征的识别结果在识别率上有些限制。在本文中,用于计算λ{sub}(max)和d {sub} 2的改进方法。来自复发量化分析的另一个参数被用λ{sub}(max)和d {sub} 2结合到新的多特征贝叶斯分类器,以提高辨别力。实验结果已经验证了使用Fisher判别的预测,即来自复发量化分析的最大垂直线长度(v {sub}(max))是区分不同的心电图等级。使用MIT-BIH心律失常数据库的实验结果显示出改善和优异的整体精度(96.3%),平均敏感性(96.3%)和平均特异性(98.15%),用于区分窦,过早的心室收缩和心室颤动信号。

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