Guo Rui, Wang Yiqin, Yan Hanxia, Yan Jianjun, Yuan Fengyin, Xu Zhaoxia, Liu Guoping, Xu Wenjie
Laboratory of Information Access and Synthesis of TCM Four Diagnosis, Shanghai Univerisity of Traditional Chinese Medicine, Shanghai 201203, China ; Center for TCM Information Science and Technology, Shanghai University of Traditional Chinese Medicine, Shanghai 201203, China.
Laboratory of Information Access and Synthesis of TCM Four Diagnosis, Shanghai Univerisity of Traditional Chinese Medicine, Shanghai 201203, China.
Evid Based Complement Alternat Med. 2015;2015:895749. doi: 10.1155/2015/895749. Epub 2015 Jun 9.
Objective. This research provides objective and quantitative parameters of the traditional Chinese medicine (TCM) pulse conditions for distinguishing between patients with the coronary heart disease (CHD) and normal people by using the proposed classification approach based on Hilbert-Huang transform (HHT) and random forest. Methods. The energy and the sample entropy features were extracted by applying the HHT to TCM pulse by treating these pulse signals as time series. By using the random forest classifier, the extracted two types of features and their combination were, respectively, used as input data to establish classification model. Results. Statistical results showed that there were significant differences in the pulse energy and sample entropy between the CHD group and the normal group. Moreover, the energy features, sample entropy features, and their combination were inputted as pulse feature vectors; the corresponding average recognition rates were 84%, 76.35%, and 90.21%, respectively. Conclusion. The proposed approach could be appropriately used to analyze pulses of patients with CHD, which can lay a foundation for research on objective and quantitative criteria on disease diagnosis or Zheng differentiation.
目的。本研究通过使用基于希尔伯特-黄变换(HHT)和随机森林的分类方法,为区分冠心病(CHD)患者和正常人提供中医脉象的客观定量参数。方法。通过将中医脉象信号视为时间序列,应用HHT提取中医脉象的能量和样本熵特征。利用随机森林分类器,将提取的两种特征及其组合分别作为输入数据建立分类模型。结果。统计结果表明,冠心病组与正常组在脉象能量和样本熵上存在显著差异。此外,将能量特征、样本熵特征及其组合作为脉象特征向量输入;相应的平均识别率分别为84%、76.35%和90.21%。结论。所提出的方法可适用于分析冠心病患者的脉象,可为疾病诊断或辨证的客观定量标准研究奠定基础。