Karlsson M O, Beal S L, Sheiner L B
Department of Pharmacy, School of Pharmacy, University of California, San Francisco 94143-0626, USA.
J Pharmacokinet Biopharm. 1995 Dec;23(6):651-72. doi: 10.1007/BF02353466.
Residual error models, traditionally used in population pharmacokinetic analyses, have been developed as if all sources of error have properties similar to those of assay error. Since assay error often is only a minor part of the difference between predicted and observed concentrations, other sources, with potentially other properties, should be considered. We have simulated three complex error structures. The first model acknowledges two separate sources of residual error, replication error plus pure residual (assay) error. Simulation results for this case suggest that ignoring these separate sources of error does not adversely affect parameter estimates. The second model allows serially correlated errors, as may occur with structural model misspecification. Ignoring this error structure leads to biased random-effect parameter estimates. A simple autocorrelation model, where the correlation between two errors is assumed to decrease exponentially with the time between them, provides more accurate estimates of the variability parameters in this case. The third model allows time-dependent error magnitude. This may be caused, for example, by inaccurate sample timing. A time-constant error model fit to time-varying error data can lead to bias in all population parameter estimates. A simple two-step time-dependent error model is sufficient to improve parameter estimates, even when the true time dependence is more complex. Using a real data set, we also illustrate the use of the different error models to facilitate the model building process, to provide information about error sources, and to provide more accurate parameter estimates.
残差误差模型传统上用于群体药代动力学分析,其构建方式仿佛所有误差来源都具有与分析误差相似的特性。由于分析误差往往只是预测浓度与观测浓度差异中的一小部分,因此应考虑具有潜在其他特性的其他误差来源。我们模拟了三种复杂的误差结构。第一个模型承认存在两个独立的残差误差来源,即重复误差加上纯残差(分析)误差。该案例的模拟结果表明,忽略这些独立的误差来源不会对参数估计产生不利影响。第二个模型允许存在序列相关误差,这可能是由于结构模型设定错误而出现的。忽略这种误差结构会导致随机效应参数估计出现偏差。在这种情况下,一个简单的自相关模型(假设两个误差之间的相关性随它们之间的时间呈指数下降)能提供更准确的变异性参数估计。第三个模型允许误差幅度随时间变化。例如,这可能是由于采样时间不准确导致的。将时间常数误差模型应用于随时间变化的误差数据可能会导致所有群体参数估计出现偏差。即使真实的时间依赖性更为复杂,一个简单的两步时间依赖性误差模型也足以改善参数估计。使用一个实际数据集,我们还展示了如何使用不同的误差模型来促进模型构建过程、提供有关误差来源的信息以及提供更准确的参数估计。