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Detecting Non-Stationarity for Auscultation Signal of Traditional Chinese Medicine 被引量:1

Detecting Non-Stationarity for Auscultation Signal of Traditional Chinese Medicine
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摘要 The information about the nonstationarity of the aus-cultation signal is utilized in this paper to objectively and auto-matically identify healthy people and patients with qi-deficiency or yin-deficiency. In order to characterize the nonstationarity of the sound signal,the nonlinear cross-prediction method is used to extract features from the signal. A feature selection method based on conditional mutual information maximization criterion (CMIM) is implemented to find an optimal feature set. By means of the support vector machine (SVM) classifier,three common states (healthy,qi-deficiency and yin-deficiency) in traditional Chinese medicine are distinguished using the feature set,and a satisfactory classification accuracy of 80% is achieved in the experiment. In conclusion,the analysis based on the nonstationarity of the sound signal provides an alternative and outstanding approach to the objective auscultation of traditional Chinese medicine (TCM). The information about the nonstationarity of the aus-cultation signal is utilized in this paper to objectively and auto-matically identify healthy people and patients with qi-deficiency or yin-deficiency. In order to characterize the nonstationarity of the sound signal,the nonlinear cross-prediction method is used to extract features from the signal. A feature selection method based on conditional mutual information maximization criterion (CMIM) is implemented to find an optimal feature set. By means of the support vector machine (SVM) classifier,three common states (healthy,qi-deficiency and yin-deficiency) in traditional Chinese medicine are distinguished using the feature set,and a satisfactory classification accuracy of 80% is achieved in the experiment. In conclusion,the analysis based on the nonstationarity of the sound signal provides an alternative and outstanding approach to the objective auscultation of traditional Chinese medicine (TCM).
出处 《Wuhan University Journal of Natural Sciences》 CAS 2011年第1期83-87,共5页 武汉大学学报(自然科学英文版)
基金 Supported by the National Natural Science Foundation of China (30701072) Supported by the National Science and Technology Support-ing Program in the Eleventh Five-Year Plan of China (2006BAI08B01-04) Construction Fund for Key Subjects of Shanghai (S30302)
关键词 AUSCULTATION nonstationarity support vector ma-chine (SVM) traditional Chinese medicine (TCM) auscultation nonstationarity support vector ma-chine (SVM) traditional Chinese medicine (TCM)
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参考文献12

  • 1Gao Yetao. Five Zang-Organs Harmonize Pitch[M]. Beijing: Ancient Book Press of Traditional Chinese Medicine, 2007(Ch).
  • 2Zhu Wenfeng. Diagnostics of Traditional Chinese Medicine [M]. Beijing: China Press of Traditional Chinese Medicine, 2004(Ch).
  • 3Zhao Shangguo, Gu Xing. A modem research overview on the auscultation diagnosis of TCM [J]. Chinese Journal of the Practical Chinese with Modern Medicine, 2008, 21(14): 1218-1220(Ch).
  • 4Mo Xinmin, Cai Guangxian, Zhang Jianlu, et al. The research of clinical experiment about the objective auscultation [J]. Chinese Journal of Basic Medicine in Traditional Chinese, 1998, 4(5): 37(Ch).
  • 5Yang Jiaru. Research of Modernization of Auscultation and Olfaction--Traditional Chinese Medicine-Voice analysis of the qi-defieieney patients[D]. Graduate Institute of Chinese Medical Science, China Medical University Hospital, Taizhong: 1997(Ch).
  • 6Chiu Chuangchien, Chang Henhong, Yang Chunghsien. Objective auscultation for traditional Chinese medical diagnosis using novel acoustic parameters [J]. Computer Methods and Programs in Biomedicine, 2000, 62(2): 99-107.
  • 7Yan Jianjun, Wang Yiqin, Wang Haijun, et al. Nonlinear analysis in TCM acoustic diagnosis using Delay Vector Variance[C]//The 2nd International Conference on Bioinformaties and Biomedical Engineering (ICBBE), Shanghai: IEEE Press, 2008: 2099-2102.
  • 8Yan Jianjun, Shen Yong, Wang Yiqin, et al. Nonlinear analysis of auscultation signals in traditional chinese medicine using wavelet packet transform and approximate entropy[J]. International Journal of Functional Informaties and Personalised Medicine, 2009, 2(3): 325-340.
  • 9Schreiber T. Detecting and analyzing nonstationarity in a time series with nonlinear cross-predictions[J]. Physical Review Letters, 1997, 78:843.
  • 10Fleuret F. Fast binary feature selection with conditional mutual information[J]. Journal of Machine Learning Research, 2004, 5: 1531-1555.

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