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Topic Model for Chinese Medicine Diagnosis and Prescription Regularities Analysis:Case on Diabetes
  • ISSN号:1003-6059
  • 期刊名称:《模式识别与人工智能》
  • 时间:0
  • 分类:TP311.12[自动化与计算机技术—计算机软件与理论;自动化与计算机技术—计算机科学与技术] Q75[生物学—分子生物学]
  • 作者机构:[1]School of Computer and Information Technology, BeijingJiaotong University, Beijing (100044), China, [2]Guang'anmenHospital, China Academy of Chinese Medical Sciences, Beijing(100053), China, [3]China Academy of Chinese MedicalSciences, Beijing (100700), China
  • 相关基金:Supported by Scientific Breakthrough Program of Beijing Municipal Science & Technology Commission China(No. D08050703020803 No.D08050703020804); China Key Technologies R&D Programme(No.2007BA110B06-01); Major State Basic Research Development Program of China (973 Program No.2006CB504601); National Nature Science Foundation of China(No.90709006); National Science and Technology Major Project of the Ministry of Science and Technology of China(No.2009ZX10005-019)
中文摘要:

<正>Induction of common knowledge or regularities from large-scale clinical data is a vital task for Chinese medicine(CM).In this paper,we propose a data mining method,called the Symptom-Herb-Diagnosis topic(SHDT) model,to automatically extract the common relationships among symptoms,herb combinations and diagnoses from large-scale CM clinical data.The SHDT model is one of the multi-relational extensions of the latent topic model,which can acquire topic structure from discrete corpora(such as document collection) by capturing the semantic relations among words.We applied the SHDT model to discover the common CM diagnosis and treatment knowledge for type 2 diabetes mellitus(T2DM) using 3 238 inpatient cases.We obtained meaningful diagnosis and treatment topics(clusters) from the data,which clinically indicated some important medical groups corresponding to comorbidity diseases(e.g.,heart disease and diabetic kidney diseases in T2DM inpatients).The results show that manifestation sub-categories actually exist in T2DM patients that need specific,individualised CM therapies.Furthermore,the results demonstrate that this method is helpful for generating CM clinical guidelines for T2DM based on structured collected clinical data.

英文摘要:

Induction of common knowledge or regularities from large-scale clinical data is a vital task for Chinese medicine(CM).In this paper,we propose a data mining method,called the Symptom-Herb-Diagnosis topic(SHDT) model,to automatically extract the common relationships among symptoms,herb combinations and diagnoses from large-scale CM clinical data.The SHDT model is one of the multi-relational extensions of the latent topic model,which can acquire topic structure from discrete corpora(such as document collection) by capturing the semantic relations among words.We applied the SHDT model to discover the common CM diagnosis and treatment knowledge for type 2 diabetes mellitus(T2DM) using 3 238 inpatient cases.We obtained meaningful diagnosis and treatment topics(clusters) from the data,which clinically indicated some important medical groups corresponding to comorbidity diseases(e.g.,heart disease and diabetic kidney diseases in T2DM inpatients).The results show that manifestation sub-categories actually exist in T2DM patients that need specific,individualised CM therapies.Furthermore,the results demonstrate that this method is helpful for generating CM clinical guidelines for T2DM based on structured collected clinical data.

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期刊信息
  • 《模式识别与人工智能》
  • 中国科技核心期刊
  • 主管单位:中国科学技术协会 中国自动化学会
  • 主办单位:国家智能计算机研究开发中心 中国科学院合肥智能机械研究所
  • 主编:郑南宁
  • 地址:安徽省合肥市蜀山湖路350号中国科学院合肥智能机械研究所
  • 邮编:230031
  • 邮箱:bjb@iim.cas.cn
  • 电话:0551-5591176
  • 国际标准刊号:ISSN:1003-6059
  • 国内统一刊号:ISSN:34-1089/TP
  • 邮发代号:26-69
  • 获奖情况:
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  • 被引量:10169