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A two-stage discrimination of cardiac arrhythmias using a total least squares-based Prony modeling algorithm

机译:使用基于最小二乘法的Prony建模算法进行心律失常的两阶段识别

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Describes a new approach for the discrimination among ventricular fibrillation (VF), ventricular tachycardia (VT) and superventricular tachycardia (SVT) developed using a total least squares (TLS)-based Prony modeling algorithm. Two features, dubbed energy fractional factor (EFF) and predominant frequency (PP), are both derived from the TLS-based Prony model. In general, EFF is adopted for discriminating SVT from ventricular tachyarrhythmias (i.e., VF and VT) first, and PF is then used for further separation of VF and VT. Overall classification is achieved by performing a two-stage process to the indicators defined by EFF and PF values, respectively. Tests conducted using 91 episodes drawn from the MIT-BIH database produced optimal predictive accuracy of (SVT, VF, VT)=(95.24%, 96.00%, 97.78%). A data decimation process is also introduced in the novel method to enhance the computational efficiency, resulting in a significant reduction in the time required for generating the feature values.
机译:描述了一种基于总最小二乘(TLS)的Prony建模算法开发的新方法,用于区分室颤(VF),室性心动过速(VT)和室性心动过速(SVT)。被称为能量分数因子(EFF)和主导频率(PP)的两个特征均来自基于TLS的Prony模型。通常,首先采用EFF来区分SVT和室性快速性心律失常(即VF和VT),然后使用PF进一步分离VF和VT。总体分类是通过对分别由EFF和PF值定义的指标执行两阶段过程来实现的。使用从MIT-BIH数据库中提取的91集进行的测试产生的最佳预测准确性为(SVT,VF,VT)=(95.24%,96.00%,97.78%)。在新方法中还引入了数据抽取过程,以提高计算效率,从而显着减少了生成特征值所需的时间。

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