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- Title
Mining Symptom-Herb Patterns from Patient Records Using Tripartite Graph.
- Authors
Jinpeng Chen; Poon, Josiah; Poon, Simon K.; Ling Xu; Sze, Daniel M. Y.
- Abstract
Unlike the western medical approach where a drug is prescribed against specific symptoms of patients, traditional Chinese medicine (TCM) treatment has a unique step, which is called syndrome differentiation (SD). It is argued that SD is considered as patient classification because prior to the selection of the most appropriate formula from a set of relevant formulae for personalization, a practitioner has to label a patient belonging to a particular class (syndrome) first. Hence, to detect the patterns between herbs and symptoms via syndrome is a challenging problem; finding these patterns can help prepare a prescription that contributes to the efficacy of a treatment. In order to highlight this unique triangular relationship of symptom, syndrome, and herb, we propose a novel three-step mining approach. It first starts with the construction of a heterogeneous tripartite information network, which carries richer information. The second step is to systematically extract path-based topological features from this tripartite network. Finally, an unsupervised method is used to learn the best parameters associated with different features in deciding the symptom-herb relationships. Experiments have been carried out on four real-world patient records (Insomnia, Diabetes, Infertility, and Tourette syndrome) with comprehensive measurements. Interesting and insightful experimental results are noted and discussed.
- Subjects
SYMPTOMS; BOTANIC medicine; CHINESE medicine; RESEARCH funding; SYNDROMES; DATA mining; STATISTICAL models
- Publication
Evidence-based Complementary & Alternative Medicine (eCAM), 2015, p1
- ISSN
1741-427X
- Publication type
journal article
- DOI
10.1155/2015/435085