首页> 美国卫生研究院文献>AAPS PharmSci >Empirical versus mechanistic modelling: Comparison of an artificial neural network to a mechanistically based model for quantitative structure pharmacokinetic relationships of a homologous series of barbiturates
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Empirical versus mechanistic modelling: Comparison of an artificial neural network to a mechanistically based model for quantitative structure pharmacokinetic relationships of a homologous series of barbiturates

机译:经验模型与机械模型:人工神经网络与基于机械模型的巴比妥类药物同源序列定量结构药代动力学关系的比较

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摘要

The aim of the current study was to compare the predictive performance of a mechanistically based model and an empirical artificial neural network (ANN) model to describe the relationship between the tissue-to-unbound plasma concentration ratios (Kpu's) of 14 rat tissues and the lipophilicity (LogP) of a series of nine 5-n-alkyl-5-ethyl barbituric acids. The mechanistic model comprised the water content, binding capacity, number of the binding sites, and binding association constant of each tissue. A backpropagation ANN with 2 hidden layers (33 neurons in the first layer, 9 neurons in the second) was used for the comparison. The network was trained by an algorithm with adaptive momentum and learning rate, programmed using the ANN Toolbox of MATLAB. The predictive performance of both models was evaluated using a leave-one-out procedure and computation of both the mean prediction error (ME, showing the prediction bias) and the mean squared prediction error (MSE, showing the prediction accuracy). The ME of the mechanistic model was 18% (range, 20 to 57%), indicating a tendency for overprediction; the MSE is 32% (range, 6 to 104%). The ANN had almost no bias: the ME was 2% (range, 36 to 64%) and had greater precision than the mechanistic model, MSE 18% (range, 4 to 70%). Generally, neither model appeared to be a significantly better predictor of the Kpu's in the rat.
机译:本研究的目的是比较基于机械的模型和经验人工神经网络(ANN)模型的预测性能,以描述14种大鼠组织的组织与未结合血浆浓度比(Kpu's)与组织之间的关系。一系列9种5-n-烷基-5-乙基巴比妥酸的亲脂性(LogP)。机理模型包括每个组织的水含量,结合能力,结合位点数和结合缔合常数。使用具有2个隐藏层(第一层为33个神经元,第二层为9个神经元)的反向传播ANN进行比较。该网络由具有自适应动量和学习率的算法训练,并使用MATLAB的ANN工具箱进行了编程。两种模型的预测性能均采用留一法程序进行评估,并计算平均预测误差(ME,显示预测偏差)和均方预测误差(MSE,显示预测精度)。机械模型的ME为18%(范围为20到57%),表明存在过度预测的趋势; MSE为32%(范围从6到104%)。 ANN几乎没有偏差:ME为2%(范围从36到64%),并且比机械模型MSE 18%(范围从4到70%)更高。通常,这两种模型都不能很好地预测大鼠的Kpu值。

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