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隐结构模型在慢性胃炎辨证中的应用探索——基于EM算法的因子分析方法
引用本文:张煜斌,陆建峰,李文林,陈涤平.隐结构模型在慢性胃炎辨证中的应用探索——基于EM算法的因子分析方法[J].北京生物医学工程,2009,28(3):259-262.
作者姓名:张煜斌  陆建峰  李文林  陈涤平
作者单位:南京理工大学计算机科学与技术学院,南京,210094;南京中医药大学,南京,210046
基金项目:国家"十一五"科技支撑计划 
摘    要:名老中医在长年的临床实践中积累了大量的宝贵经验,而这些经验都隐含在众多的临床病历中,机器学习是挖掘出这些隐含经验非常有效的工具,因此利用机器学习技术挖掘出隐含在大量病历资料中的临床经验,对于名老中医经验传承具有非常重要的价值。隐结构模型是张连文教授提出的一种模型,它能够较好地符合中医辨证理论。本文在其方法上进行了一定的简化和改进,并应用于慢性胃炎辨证。主要是采用基于EM(expectation maximum,最大期望)算法的因子分析方法处理病案数据,从而得到慢性胃炎辨证的隐结构,提高了学习速度和模型的准确性。

关 键 词:因子分析  EM算法  隐结构模型  机器学习  慢性胃炎  中医辨证

Explore the Application of Latent Structure in Chronic Gastritis——Based on EM Algorithm and Factor Analysis
ZHANG Yubin,LU Jianfeng,LI Wenlin,CHEN Diping.Explore the Application of Latent Structure in Chronic Gastritis——Based on EM Algorithm and Factor Analysis[J].Beijing Biomedical Engineering,2009,28(3):259-262.
Authors:ZHANG Yubin  LU Jianfeng  LI Wenlin  CHEN Diping
Institution:ZHANG Yubin, LU Jianfeng, LI Wenlin, CHEN Diping (1. School of Computer Science of Nanjing University of Science & Technology, Nanjing 210094; 2 Nanjing University of Traditional Chinese Medicine, Nanjing 210046)
Abstract:Famous herbalist doctors accumulate a lot of precious experience during long-period clinical diagnosis. Normally, this kind of experience is hidden in a great deal of clinical medical records. The machine learning technique is a very effective tool to mine such experience. And mining clinical experience hidden in medical records by machine learning technique is of the important value for inheriting experience from famous herbalist doctors. Latent structure model was proposed by Professor Zhang Lianwen, which accords with the syndrome differentiation of traditional Chinese medicine (TCM). In this paper, the latent structure model was simplified and improved, and applied to the syndrome differentiation of chronic gastritis. Factor analysis method based on the EM algorithm was adopted to analyze the data for the medical records, accordingly the latent structure of syndrome differentiation of the chronic gastritis was obtained, which improved the learning speed and accuracy of model.
Keywords:factor analysis  EM algorithm  latent structure model  machine learning  chronic gastritis  syndrome differentiation of TCM
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