Hierarchical Classification of ECG Beat Using Higher Order Statistics and Hermite Model

Kwang Suk Park, B. Cho, Do Hoon Lee, S. Song, Jong Shill Lee, Y. Chee, I. Kim, Sun I. Kim
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引用次数: 4

Abstract

Objective: The heartbeat classification of the electrocardiogram is important in cardiac disease diagnosis. For detecting QRS complex, conventional detection algorithm have been designed to detect P, QRS, Twave, first. However, the detection of the P and T wave is difficult because their amplitudes are relatively low, and occasionally they are included in noise. Furthermore the conventional multiclass classification method may have skewed results to the majority class, because of unbalanced data distribution. Methods: The Hermite model of the higher order statistics is good characterization methods for recognizing morphological QRS complex. We applied three morphological feature extraction methods for detecting QRS complex: higher-order statistics, Hermite basis functions and Hermite model of the higher order statistics. Hierarchical scheme tackle the unbalanced data distribution problem. We also employed a hierarchical classification method using support vector machines. Results: We compared classification methods with feature extraction methods. As a result, our mean values of sensitivity for hierarchical classification method (75.47%, 76.16% and 81.21%) give better performance than the conventional multiclass classification method (46.16%). In addition, the Hermite model of the higher order statistics gave the best results compared to the higher order statistics and the Hermite basis functions in the hierarchical classification method. Conclusion: This research suggests that the Hermite model of the higher order statistics is feasible for heartbeat feature extraction. The hierarchical classification is also feasible for heartbeat classification tasks that have the unbalanced data distribution.
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基于高阶统计量和Hermite模型的心电心跳分层分类
目的:心电图的心跳分型对心脏病的诊断具有重要意义。对于QRS复合体的检测,传统的检测算法被设计为先检测P、QRS、wave。然而,由于P波和T波的振幅相对较低,并且偶尔会包含在噪声中,因此检测起来很困难。此外,由于数据分布的不平衡,传统的多类分类方法可能会使结果向多数类倾斜。方法:高阶统计量的Hermite模型是识别形态QRS复合体的良好表征方法。我们采用三种形态特征提取方法检测QRS复合体:高阶统计量、Hermite基函数和高阶统计量的Hermite模型。分层方案解决了数据分布不平衡的问题。我们还采用了基于支持向量机的分层分类方法。结果:我们比较了分类方法和特征提取方法。结果表明,层次分类方法的灵敏度均值(75.47%,76.16%和81.21%)优于传统的多类分类方法(46.16%)。此外,与层次分类方法中的高阶统计量和Hermite基函数相比,高阶统计量的Hermite模型给出了最好的分类结果。结论:高阶统计量的Hermite模型对心跳特征提取是可行的。分层分类对于数据分布不均衡的心跳分类任务也是可行的。
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