AN UNSUPERVISED PATTERN (SYNDROME IN TRADITIONAL CHINESE MEDICINE) DISCOVERY ALGORITHM BASED ON ASSOCIATION DELINEATED BY REVISED MUTUAL INFORMATION IN CHRONIC RENAL FAILURE DATA

Author:

CHEN JIANXIN1,XI GUANGCHENG1,CHEN JING1,ZHEN YISONG23,XING YANWEI4,WANG JIE4,WANG WEI5

Affiliation:

1. Key Laboratory of Complex Systems and Intelligence Science, Institute of Automation, Chinese Academy of Sciences, 100080, Beijing, P. R. China

2. Sino-German Laboratory for Molecular Medicine, Key Laboratory for Clinical Cardiovascular Genetics of the Ministry of Education, P. R. China

3. FuWai Hospital and Cardiovascular Institute, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing, P. R. China

4. GuangAnMen Hospital, Chinese Academy of Chinese Medical Science, 100053, Beijing, P. R. China

5. Beijing University of Chinese Medicine, 100029, Beijing, P. R. China

Abstract

The syndrome is the basic pathological unit and the key concept in traditional Chinese medicine (TCM), and the herbal remedy is prescribed according to the syndrome a patient catches. Nevertheless, few studies are dedicated to investigate the number of syndromes in chronic renal failure (CRF) patients and what these syndromes are. In this paper, we carry out a clinical epidemiology survey and obtain 601 CRF cases, including 72 symptoms in each report. Based on association delineated by mutual information, we propose a novel pattern discovery algorithm to discover syndromes, which probably have overlapped symptoms in TCM. A revised version of mutual information is presented here to discriminate positive and negative association. The algorithm self-organizedly discovers 16 effective patterns, each of which is verified manually by TCM physicians to recognize the syndrome it belongs to. The super-additivity of cluster by mutual information is proved and n-class association concept is introduced in our model to reduce computational complexity. Validation of the algorithm is performed by using the syndrome data and consolidated clinically to have 16 patterns. The results indicate that the algorithm achieves a high sensitivity with 96.48% and each classified pattern is of clinical significance. Therefore, we conclude that the algorithm provides an excellent solution to chronic renal failure problem in the context of traditional Chinese medicine.

Publisher

World Scientific Pub Co Pte Lt

Subject

Applied Mathematics,Agricultural and Biological Sciences (miscellaneous),Ecology,Applied Mathematics,Agricultural and Biological Sciences (miscellaneous),Ecology

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