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Premature ventricular beat detection by using spectral clustering methods

机译:使用光谱聚类方法检测室性早搏

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In this paper, we the look at the spectral properties of features extracted from segmented ECG signals containing Normal (N) and premature ventricular beats (V) prior to apply classification methods for reliable PVC detection. In a first stage, feature extraction based on signal basic analysis which computes not only intervals and amplitudes on each beat, but also description of wave morphology was performed. Extracted parameters that describe the basic shape of the beat such as: average wave amplitudes, durations and areas have been computed. In a second stage, the eigen decomposition of data allows finding structure in records which is optimal to attain high performance of classification. In a third stage, Support Vector Machines (SVM) which are benchmarked against several techniques have been chosen for PVC detection. By applying SVM Recursive Feature Elimination (SVM RFE) where the weight magnitude is used as ranking criterion we reduced the feature dimension to smaller sets. Then, with newly constructed dimension input features space we combine spectral clustering with SVM classifiers for attaining superior performance.
机译:在本文中,我们在应用可靠的PVC检测的分类方法之前,查看从包含正常(n)和过早心室节拍(V)的分段的ECG信号中提取的特征的光谱特性。在第一阶段,基于信号基本分析的特征提取,其不仅计算每个节拍上的间隔和幅度,而且还进行了波形形态的描述。提取描述节拍基本形状的参数,例如:平均波浪幅度,持续时间和区域。在第二阶段,数据的特征分解允许在最佳的记录中找到结构,以获得高性能的分类。在第三阶段,已经选择了针对几种技术基准测试的支持向量机(SVM)用于PVC检测。通过应用SVM递归特征消除(SVM RFE),其中使用重量幅度作为排序标准,我们将特征尺寸减少到较小的集合。然后,通过新构造的维度输入功能空间,我们将光谱聚类与SVM分类器相结合,以获得优越的性能。

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