基于时频分析的压力脉冲波信号稀疏分解

Zhixing Jiang, Guangming Lu, Dafan Zhang
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引用次数: 5

摘要

在中医中,腕脉对帮助医生诊断具有重要意义。随着传感技术的发展,计算机腕部脉搏分析以其无创、方便等优点在现代医学中受到越来越多的关注。考虑到中医脉象诊断理论,有必要开发有效的特征提取方法进行计算机诊断。本文采用Gabor函数稀疏分解的方法,将桡动脉压力脉冲波形分解为若干分量。为了更好地表示脉冲波形信号,我们利用基于脉冲波形特征的Gabor函数生成时频字典。与传统的表示方法相比,Gabor函数的形状变化更大,可以更好地表示轮廓和特定峰。此外,由于窗口的限制,Gabor函数在表示特定位置时可以减少对其他位置的影响。分解后的特征向量可用于脉冲信号的计算机化分析和疾病诊断。实验结果表明,该方法能较好地区分患者和健康人的信号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sparse decomposition of pressure pulse wave signal based on time frequency analysis
In traditional Chinese medicine (TCM), wrist pulse is of great significance to help doctors in diagnosis. With the development of sensing technology, the computerized wrist pulse analysis has been attracting more attention in modern medicine for its non-invasive and convenient. Considering the TCM pulse diagnosis theory, it is necessary to develop effective feature extraction methods for computerized diagnosis. In this paper, we decompose the pressure pulse waveform of the radial artery to several components by sparse decomposition with Gabor function. In order to better represent the pulse waveform signal, we use an Gabor function based on the characteristics of the pulse waveform to generate a time-frequency dictionary. Compared with the conventional representation methods, the shape of the Gabor function is more variable, which can better represent both the contour and specific peaks. In addition, due to the limitation of the windowing, the Gabor function can reduce the influence on other positions when representing specific position. The feature vector composed of the decomposed components can be used for the computerized pulse signal analysis and disease diagnosis. The experimental results show that the proposed method can exhibit superior performance in distinguishing between the signals collected from patients and healthy individuals.
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