Dosne Anne-Gaëlle, Bergstrand Martin, Karlsson Mats O
Department of Pharmaceutical Biosciences, Uppsala University, P.O. Box 591, 751 24, Uppsala, Sweden.
J Pharmacokinet Pharmacodyn. 2016 Apr;43(2):137-51. doi: 10.1007/s10928-015-9460-y. Epub 2015 Dec 17.
Nonlinear mixed effects models parameters are commonly estimated using maximum likelihood. The properties of these estimators depend on the assumption that residual errors are independent and normally distributed with mean zero and correctly defined variance. Violations of this assumption can cause bias in parameter estimates, invalidate the likelihood ratio test and preclude simulation of real-life like data. The choice of error model is mostly done on a case-by-case basis from a limited set of commonly used models. In this work, two strategies are proposed to extend and unify residual error modeling: a dynamic transform-both-sides approach combined with a power error model (dTBS) capable of handling skewed and/or heteroscedastic residuals, and a t-distributed residual error model allowing for symmetric heavy tails. Ten published pharmacokinetic and pharmacodynamic models as well as stochastic simulation and estimation were used to evaluate the two approaches. dTBS always led to significant improvements in objective function value, with most examples displaying some degree of right-skewness and variances proportional to predictions raised to powers between 0 and 1. The t-distribution led to significant improvement for 5 out of 10 models with degrees of freedom between 3 and 9. Six models were most improved by the t-distribution while four models benefited more from dTBS. Changes in other model parameter estimates were observed. In conclusion, the use of dTBS and/or t-distribution models provides a flexible and easy-to-use framework capable of characterizing all commonly encountered residual error distributions.
非线性混合效应模型参数通常采用最大似然法进行估计。这些估计量的性质取决于以下假设:残差是独立的,且服从均值为零、方差定义正确的正态分布。违反这一假设可能会导致参数估计出现偏差,使似然比检验无效,并妨碍对类似实际生活数据的模拟。误差模型的选择大多是根据具体情况从一组有限的常用模型中进行。在这项工作中,提出了两种策略来扩展和统一残差建模:一种是动态双侧变换方法与能够处理偏态和/或异方差残差的幂误差模型(dTBS)相结合,另一种是允许对称重尾的t分布残差模型。使用十个已发表的药代动力学和药效学模型以及随机模拟和估计来评估这两种方法。dTBS总是能显著提高目标函数值,大多数例子显示出一定程度的右偏态,且方差与预测值的幂成正比,幂在0到1之间。对于自由度在3到9之间的10个模型中的5个,t分布带来了显著改善。6个模型通过t分布得到了最大程度的改善,而4个模型从dTBS中获益更多。观察到其他模型参数估计的变化。总之,使用dTBS和/或t分布模型提供了一个灵活且易于使用的框架,能够表征所有常见的残差分布。