修正偏最小二乘在中医数据分析中的应用

Wangping Xiong, Jianqiang Du, Bin Nie, Liping Huang, Xian Zhou
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引用次数: 1

摘要

由于中药处方的复杂性,处方间的剂量效应关系与常用的药用化学物质的“S”型曲线有明显的不同,是非线性的。因此,处方间剂量效应关系的研究不能照搬药剂化学物剂量效应关系的研究方法,而需要考虑多种影响因素和药物配伍。本文在对大量中药处方文献中的实验数据进行收集、整理和分析的基础上,首先拟构建融合q型聚类和r型聚类的算法,剔除异常数据;通过正交信号的校正方法获得高效率的建模样本;以各自的变量和因变量为节点,以直接路径系数和间接路径系数为权重,构建完整的路径图,并通过复杂网络模型分析方向图和权威图,过滤出重要变量;基于最大熵原理建立中药剂量效应关系的偏最小二乘(PLS)非线性模型,确定偏最小二乘,对科学说明处方与疗效的剂量效应关系,系统研究、总结和归纳处方剂量理论,合理提高中药临床疗效,指导临床剂量选择具有重要意义。
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Application of modified partial least squares in data analysis of Traditional Chinese Medicine
Because of the complexities of traditional Chinese medicine's prescriptions, the dose-effect relationship between prescriptions has a significant difference from the common “S” — type curve of the pharmaceutical chemicals, which is nonlinear. Therefore, the study of the dose-effect relationship between prescriptions can not copy the research methods of dose-effect relationship of pharmaceutical chemicals, but need to consider a variety of influencing factors and compatibility of medicines. Based on the collection, collation and analysis of experimental data in a large number of literature of Traditional Chinese Medicine(TCM) prescriptions, this paper first planned to construct algorithm which fused Q-type clustering and R-type clustering to eliminate abnormal data; obtain high-efficiency modeling samples through the correction method of orthogonal signal; build a complete path graph by making the respective variables and dependent variables as nodes and using direct and indirect path coefficient as weights, and analyze the directional and authoritative graph through the complex network model to filter the important variables out; The partial least squares (PLS) nonlinear model towards the dose-effect relationship of TCM was established based on the maximum entropy principle to determine the partial least squares, which has great significance to scientifically illustrate the dose-effect relationship between prescriptions and its effects, systematically study, summarize and draw theories of prescriptions' doses, rationally improve the clinical effects of TCM and guide the choices of clinical doses.
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