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Computerized Wrist Pulse Signal Diagnosis Using Modified Auto-regressive Models

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Journal J Med Syst
Date 2010 Aug 13
PMID 20703558
Citations 6
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Abstract

The wrist pulse signals can be used to analyze a person's health status in that they reflect the pathologic changes of the person's body condition. This paper aims to present a novel time series analysis approach to analyze wrist pulse signals. First, a data normalization procedure is proposed. This procedure selects a reference signal that is 'closest' to a newly obtained signal from an ensemble of signals recorded from the healthy persons. Second, an auto-regressive (AR) model is constructed from the selected reference signal. Then, the residual error, which is the difference between the actual measurement for the new signal and the prediction obtained from the AR model established by reference signal, is defined as the disease-sensitive feature. This approach is based on the premise that if the signal is from a patient, the prediction model previously identified using the healthy persons would not be able to reproduce the time series measured from the patients. The applicability of this approach is demonstrated using a wrist pulse signal database collected using a Doppler Ultrasound device. The classification accuracy is over 82% in distinguishing healthy persons from patients with acute appendicitis, and over 90% for other diseases. These results indicate a great promise of the proposed method in telling healthy subjects from patients of specific diseases.

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References
1.
Zhang Y, Wang Y, Wang W, Yu J . [Wavelet feature extraction and classification of Doppler ultrasound blood flow signals]. Sheng Wu Yi Xue Gong Cheng Xue Za Zhi. 2002; 19(2):244-6, 255. View

2.
Leonard P, Beattie T, Addison P, Watson J . Wavelet analysis of pulse oximeter waveform permits identification of unwell children. Emerg Med J. 2004; 21(1):59-60. PMC: 1756376. DOI: 10.1136/emj.2003.004887. View

3.
Yoon Y, Lee M, Soh K . Pulse type classification by varying contact pressure. IEEE Eng Med Biol Mag. 2000; 19(6):106-10. DOI: 10.1109/51.887253. View

4.
Xu L, Zhang D, Wang K . Wavelet-based cascaded adaptive filter for removing baseline drift in pulse waveforms. IEEE Trans Biomed Eng. 2005; 52(11):1973-5. DOI: 10.1109/TBME.2005.856296. View

5.
Lu W, Wang Y, Wang W . Pulse analysis of patients with severe liver problems. Studying pulse spectrums to determine the effects on other organs. IEEE Eng Med Biol Mag. 1999; 18(1):73-5. DOI: 10.1109/51.740985. View