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Using Akaikes information theoretic criterion in mixed-effects modeling of pharmacokinetic data: a simulation study

机译:在药物动力学数据的混合效应建模中使用Akaike的信息理论标准:模拟研究

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摘要

Akaike's information theoretic criterion for model discrimination (AIC) is often stated to "overfit", i.e., it selects models with a higher dimension than the dimension of the model that generated the data. However, with experimental pharmacokinetic data it may not be possible to identify the correct model, because of the complexity of the processes governing drug disposition. Instead of trying to find the correct model, a more useful objective might be to minimize the prediction error of drug concentrations in subjects with unknown disposition characteristics. In that case, the AIC might be the selection criterion of choice.We performed Monte Carlo simulations using a model of pharmacokinetic data (a power function of time) with the property that fits with common multi-exponential models can never be perfect - thus resembling the situation with real data. Prespecified models were fitted to simulated data sets, and AIC and AIC c (the criterion with a correction for small sample sizes) values were calculated and averaged. The average predictive performances of the models, quantified using simulated validation sets, were compared to the means of the AICs. The data for fits and validation consisted of 11 concentration measurements each obtained in 5 individuals, with three degrees of interindividual variability in the pharmacokinetic volume of distribution.Mean AIC c corresponded very well, and better than mean AIC, with mean predictive performance. With increasing interindividual variability, there was a trend towards larger optimal models, but with respect to both lowest AIC c and best predictive performance. Furthermore, it was observed that the mean square prediction error itself became less suitable as a validation criterion, and that a predictive performance measure should incorporate interindividual variability.This simulation study showed that, at least in a relatively simple mixed effects modelling context with a set of prespecified models, minimal mean AIC c corresponded to best predictive performance even in the presence of relatively large interindividual variability.
机译:Akaike的模型识别信息理论标准(AIC)通常被称为“过拟合”,即,它选择的维度比生成数据的模型的维度高。然而,由于控制药物处置过程的复杂性,利用实验药代动力学数据可能无法确定正确的模型。替代尝试找到正确的模型,一个更有用的目标可能是最大程度地降低处置特性未知的受试者中药物浓度的预测误差。在这种情况下,AIC可能是选择的标准。我们使用药代动力学数据(时间的幂函数)模型进行了蒙特卡洛模拟,其性能永远无法与常见的多指数模型相匹配-因此类似于具有真实数据的情况。将预先指定的模型拟合到模拟数据集,然后计算AIC和AIC c(校正小样本量的标准)值并取平均值。使用模拟验证集对模型的平均预测性能与AIC的平均值进行比较。拟合和验证数据包括11个浓度测量值,每个浓度值均来自5个个体,药代动力学分布的个体间差异为3度。平均AIC c表现良好,且优于平均AIC,具有平均预测性能。随着个体间变异性的增加,存在朝着更大的最优模型发展的趋势,但是就最低的AIC c和最佳的预测性能而言。此外,据观察,均方预测误差本身变得不太适合用作验证标准,并且预测性能度量应考虑个体间的可变性。此模拟研究表明,至少在相对简单的混合效应建模环境中,具有一组在预先设定的模型中,即使存在相对较大的个体差异,最小均值AIC c仍对应最佳预测性能。

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