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径向基神经网络预测氯氮平血药浓度 被引量:2

Plasma Concentration of Clozapine Predicted by Radial Basis Function Neural Networks
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摘要 目的:评价用径向基(RBF)神经网络所建立的预测氯氮平稳态血药浓度模型的预测性能。方法:将数据分为训练集、校验集和测试集来建立获取输入、输出变量两者间关系的RBF网络模型,其中以患者的性别、年龄、体重、剂量、血压、多项生理生化指标等37项参数为输入变量,氯氮平稳态血药浓度为输出变量。用训练集和校验集的网络计算输出值与目标输出值之间的均方差(MSE)和相关系数(R)来综合评价网络模型的学习效果,用测试集的网络计算输出值与目标输出值之间的MSE和R来评价网络模型的预测性能。结果:当扩展系数(SP)值为3.0时,训练集的MSE为1.33×10-5、R值为0.99985,校验集的MSE为0.002833、R值为0.97186,测试集的MSE为0.005439、R值为0.93676,网络模型的预测效果和泛化能力较好。结论:RBF网络用于预测氯氮平稳态血药浓度的研究是可行和有效的。 OBJECTIVE:To evaluate the performance of a model for predicting the steady-state plasma concentration of clozapine established by radial basis function(RBF) neural network.METHODS:The data was divided into training set,validation set and test set to establish the RBF neural network model which had obtained the relationships between input variables and output variable.Input variables included 37 parameters,such as patients gender,age,body weight,dosage,blood pressure and multiple physiological and biochemic...
出处 《中国药房》 CAS CSCD 北大核心 2011年第14期1273-1275,共3页 China Pharmacy
基金 国家自然科学基金(10926191) 中山市科技计划资助项目(20102A024)
关键词 径向基神经网络 预测 氯氮平 稳态血药浓度 Radial basis function neural networks Prediction Clozapine Steady-state plasma concentration
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