基于复杂网络的腕部脉搏诊断

Peng Wang, Shanpeng Hou, Hongzhi Zhang, W. Zuo, David Zhang
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引用次数: 6

摘要

脉象信号是人体健康状况的重要信息,在东方医学中有着广泛的应用。近年来,计算机脉搏诊断越来越受到人们的关注。脉冲特征提取在计算机脉搏诊断中起着重要的作用。目前最流行的脉冲特征提取方法可分为两大类,即时域特征提取方法和频域特征提取方法。脉冲信号是一个伪周期信号,而常用的特征提取方法通常假设脉冲信号是一个周期信号,只使用典型周期或平均周期进行特征提取,而不太强调周期之间的差异。本文利用复杂网络将脉冲信号从时域变换到网络域,并利用描述复杂网络组织的统计参数作为表征脉冲周期差的特征。实验表明,复杂网络特征在表征不同脉冲周期之间的关系方面是有用的,对糖尿病的诊断效果与多尺度样本熵相似。通过将复杂网络特征与样本熵特征相结合,可以获得更高的诊断性能。
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Wrist Pulse Diagnosis Using Complex Network
Pulse signal contains important information about health status and pulse diagnosis has been extensively applied in oriental medicine. In recent years more and more research interests have been given on computerized pulse diagnosis. Pulse feature extraction plays an important role in computerized pulse diagnosis. The most popular pulse feature extraction methods can be grouped into two categories, i.e. time domain feature extraction method and frequency domain feature extraction method. The pulse signal is a pseudo periodic signal while the common feature extraction methods usually assume it is a periodic signal and only a typical period or an averaged period was used in the feature extraction, while the difference between periods was less emphasized. In this paper we use complex network to transform the pulse signal from time domain to network domain and use the statistics parameters which describe the organization of the complex network as the features to characterize the difference between pulse periods. The experiment shows that the complex network features are useful in characterizing the relationship between different pulse periods the diagnosis performance on diabetes are similar with the multi scale sample entropy. By combining complex network features with sample entropy features, higher diagnosis performance can be further obtained.
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