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A data-driven method for syndrome type identification and classification in traditional Chinese medicine 被引量:15

A data-driven method for syndrome type identification and classification in traditional Chinese medicine
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摘要 The efficacy of traditional Chinese medicine (TCM) treatments for Western medicine (WM) diseases relies heavily on the proper classification of patients into TCM syndrome types. The authors developed a data-driven method for solving the classification problem, where syndrome types were identified and quantified based on statistical patterns detected in unlabeled symptom survey data. The new method is a generalization of latent class analysis (LCA), which has been widely applied in WM research to solve a similar problem, i.e., to identify subtypes of a patient population in the absence of a gold standard. A well-known weakness of LCA is that it makes an unrealistically strong independence assumption. The authors relaxed the assumption by first detecting symptom co-occurrence patterns from survey data and used those statistical patterns instead of the symptoms as features for LCA. This new method consists of six steps: data collection, symptom co-occurrence pattern discovery, statistical pattern interpretation, syndrome identification, syndrome type identification and syndrome type classification. A software package called Lantern has been developed to support the application of the method. The method was illustrated using a data set on vascular mild cognitive impairment. The efficacy of traditional Chinese medicine (TCM) treatments for Western medicine (WM) diseases relies heavily on the proper classification of patients into TCM syndrome types. The authors developed a data-driven method for solving the classification problem, where syndrome types were identified and quantified based on statistical patterns detected in unlabeled symptom survey data. The new method is a generalization of latent class analysis (LCA), which has been widely applied in WM research to solve a similar problem, i.e., to identify subtypes of a patient population in the absence of a gold standard. A well-known weakness of LCA is that it makes an unrealistically strong independence assumption. The authors relaxed the assumption by first detecting symptom co-occurrence patterns from survey data and used those statistical patterns instead of the symptoms as features for LCA. This new method consists of six steps: data collection, symptom co-occurrence pattern discovery, statistical pattern interpretation, syndrome identification, syndrome type identification and syndrome type classification. A software package called Lantern has been developed to support the application of the method. The method was illustrated using a data set on vascular mild cognitive impairment.
出处 《Journal of Integrative Medicine》 SCIE CAS CSCD 2017年第2期110-123,共14页 结合医学学报(英文版)
基金 supported by Hong Kong Research Grants Council under grants No.16202515 and16212516 Guangzhou HKUST Fok Ying Tung Research Institute,China Ministry of Science and Technology TCM Special Research Projects Program under grants No.200807011,No.201007002 and No.201407001-8 Beijing Science and Technology Program under grant No.Z111107056811040 Beijing New Medical Discipline Development Program under grant No.XK100270569 Beijing University of Chinese Medicine under grant No.2011-CXTD-23
关键词 medicine Chinese traditional SYNDROME syndrome classification latent tree analysis symptomco-occurrence patterns patient clustering stand syndrome differentiation medicine, Chinese traditional syndrome syndrome classification latent tree analysis symptomco-occurrence patterns patient clustering stand syndrome differentiation
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