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基于神经网络模型定量构效关系的中药活性预测方法

[A method for predicting activity of traditional Chinese medicine based on quantitative composition-activity relationship of neural network model].

作者信息

Zhao Xiao-ping, Fan Xiao-hui, Yu Jie, Cheng Yi-yu

机构信息

Department of Chinese Medicine Science and Engineering, Zhejiang University, Hangzhou 310027, China.

出版信息

Zhongguo Zhong Yao Za Zhi. 2004 Nov;29(11):1082-5.

Abstract

OBJECTIVE

To study a method for evaluating the quality of traditional Chinese medicine (TCM) according as their activity.

METHOD

Combined with partial least squares (PLS), BP and RBF neural networks were selected to establish the model of quantitative composition-activity relationship (QCAR) due to their strong approximation capabilities for nonlinear function respectively. The activity of TCM was predicted with the QCAR model, and the quality of TCM was evaluated according to the predicted activity.

RESULT & CONCLUSION: The proposed method was applied to evaluate the quality of Chuanxiong. The results indicated that, in the indexes including training error, prediction error and correlation coefficient, the established model is better than the model established by principal component regression or PIS regression. The new model can accurately represent the complicated nonlinear relationship between the components and the bioactivity of Chuanxiong. Consequently, this method has potential to evaluate the quality of TCM according to bioactivity.

摘要

目的

研究一种根据中药活性来评价其质量的方法。

方法

结合偏最小二乘法(PLS),分别选用BP神经网络和RBF神经网络建立定量成分-活性关系(QCAR)模型,因为它们对非线性函数具有较强的逼近能力。利用QCAR模型预测中药活性,并根据预测活性评价中药质量。

结果与结论

将所提方法应用于川芎质量评价。结果表明,在训练误差、预测误差和相关系数等指标方面,所建立的模型优于主成分回归或偏最小二乘回归建立的模型。新模型能够准确表征川芎成分与生物活性之间复杂的非线性关系。因此,该方法具有根据生物活性评价中药质量的潜力。

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