| Literature DB >> 28623541 |
Kuo Yang1, Runshun Zhang2, Liyun He3, Yubing Li1, Wenwen Liu1, Changhe Yu3, Yanhong Zhang3, Xinlong Li3, Yan Liu4, Weiming Xu5, Xuezhong Zhou6,7, Baoyan Liu8.
Abstract
Determining effective traditional Chinese medicine (TCM) treatments for specific disease conditions or particular patient groups is a difficult issue that necessitates investigation because of the complicated personalized manifestations in real-world patients and the individualized combination therapies prescribed in clinical settings. In this study, a multistage analysis method that integrates propensity case matching, complex network analysis, and herb set enrichment analysis was proposed to identify effective herb prescriptions for particular diseases (e.g., insomnia). First, propensity case matching was applied to match clinical cases. Then, core network extraction and herb set enrichment were combined to detect core effective herb prescriptions. Effectiveness-based mutual information was used to detect strong herb-symptom relationships. This method was applied on a TCM clinical data set with 955 patients collected from well-designed observational studies. Results revealed that groups of herb prescriptions with higher effectiveness rates (76.9% vs. 42.8% for matched samples; 94.2% vs. 84.9% for all samples) compared with the original prescriptions were found. Particular patient groups with symptom manifestations were also identified to help investigate the indications of the effective herb prescriptions.Entities:
Keywords: core network extraction; effective prescription detection; herb set enrichment analysis; insomnia; personalized treatment
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Year: 2017 PMID: 28623541 DOI: 10.1007/s11684-017-0525-8
Source DB: PubMed Journal: Front Med ISSN: 2095-0217 Impact factor: 4.592