Haem Elham, Harling Kajsa, Ayatollahi Seyyed Mohammad Taghi, Zare Najaf, Karlsson Mats O
Department of Biostatistics, Shiraz University of Medical Sciences School of Medicine, Shiraz, Iran.
Department of Pharmaceutical Biosciences, Uppsala University, Uppsala, Sweden.
J Pharmacokinet Pharmacodyn. 2017 Feb;44(1):55-66. doi: 10.1007/s10928-017-9504-6. Epub 2017 Jan 31.
One important aim in population pharmacokinetics (PK) and pharmacodynamics is identification and quantification of the relationships between the parameters and covariates. Lasso has been suggested as a technique for simultaneous estimation and covariate selection. In linear regression, it has been shown that Lasso possesses no oracle properties, which means it asymptotically performs as though the true underlying model was given in advance. Adaptive Lasso (ALasso) with appropriate initial weights is claimed to possess oracle properties; however, it can lead to poor predictive performance when there is multicollinearity between covariates. This simulation study implemented a new version of ALasso, called adjusted ALasso (AALasso), to take into account the ratio of the standard error of the maximum likelihood (ML) estimator to the ML coefficient as the initial weight in ALasso to deal with multicollinearity in non-linear mixed-effect models. The performance of AALasso was compared with that of ALasso and Lasso. PK data was simulated in four set-ups from a one-compartment bolus input model. Covariates were created by sampling from a multivariate standard normal distribution with no, low (0.2), moderate (0.5) or high (0.7) correlation. The true covariates influenced only clearance at different magnitudes. AALasso, ALasso and Lasso were compared in terms of mean absolute prediction error and error of the estimated covariate coefficient. The results show that AALasso performed better in small data sets, even in those in which a high correlation existed between covariates. This makes AALasso a promising method for covariate selection in nonlinear mixed-effect models.
群体药代动力学(PK)和药效学的一个重要目标是识别并量化参数与协变量之间的关系。套索算法(Lasso)已被提议作为一种用于同时估计和协变量选择的技术。在线性回归中,已表明套索算法不具有先验性质,这意味着它的渐近表现就好像真实的潜在模型是预先给定的一样。具有适当初始权重的自适应套索算法(ALasso)据称具有先验性质;然而,当协变量之间存在多重共线性时,它可能导致预测性能不佳。本模拟研究实施了一种新版本的ALasso,称为调整后的ALasso(AALasso),将最大似然(ML)估计器的标准误差与ML系数的比率作为ALasso中的初始权重,以处理非线性混合效应模型中的多重共线性。将AALasso的性能与ALasso和Lasso的性能进行了比较。从单室推注输入模型在四种设置下模拟了PK数据。通过从具有无、低(0.2)、中等(0.5)或高(0.7)相关性的多元标准正态分布中抽样来创建协变量。真实协变量仅在不同程度上影响清除率。从平均绝对预测误差和估计协变量系数的误差方面对AALasso、ALasso和Lasso进行了比较。结果表明,AALasso在小数据集中表现更好,即使在协变量之间存在高度相关性的数据集中也是如此。这使得AALasso成为非线性混合效应模型中协变量选择的一种有前景的方法。