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Feature Extraction and Recognition for pulse waveform in Traditional Chinese Medicine based on Hemodynamics Principle

机译:基于血流动力学原理的中医脉搏波形特征提取与识别

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Pulse diagnosis is one of important diagnosis methods in Traditional Chinese Medicine (TCM). Recognition of TCM pulse has received more and more attention in recent years. Extracting proper features is crucial for satisfactory classification. While most of previous methods for feature extraction of TCM pulse have no specific correlation with the mechanism of TCM pulse, a hemodynamics method is used to calculate the pulse waveform velocity (PWV) and pulse reflection factor(R), which reflects the principle of TCM pulse diagnosis. Then K-Nearest Neighbor (KNN) algorithm is employed to classify the data and double cross-validation method is used for accuracy assessment. An average accuracy rate of more than 97.8% is achieved. It is concluded that the PWV and R may be used as the features for the classification of TCM pulses.
机译:脉冲诊断是中医(TCM)中的重要诊断方法之一。近年来,识别中医脉冲的幅度越来越受到关注。提取适当的特征对于满意的分类至关重要。虽然以前的大多数用于TCM脉冲的特征提取方法与TCM脉冲的机制没有具体的相关性,但是使用血液动力学方法来计算脉冲波形速度(PWV)和脉冲反射因子(R),这反映了TCM的原理脉冲诊断。然后,采用K-最近邻(KNN)算法来分类数据,双交叉验证方法用于精度评估。实现了超过97.8%的平均精度率。得出结论,PWV和R可用作TCM脉冲分类的特征。

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