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Evaluation of Approaches to Deal with Low-Frequency Nuisance Covariates in Population Pharmacokinetic Analyses

机译:人口药代动力学分析中低频干扰协变量处理方法的评估

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摘要

Clinical studies include occurrences of rare variables, like genotypes, which due to their frequency and strength render their effects difficult to estimate from a dataset. Variables that influence the estimated value of a model-based parameter are termed covariates. It is often difficult to determine if such an effect is significant, since type I error can be inflated when the covariate is rare. Their presence may have either an insubstantial effect on the parameters of interest, hence are ignorable, or conversely they may be influential and therefore non-ignorable. In the case that these covariate effects cannot be estimated due to power and are non-ignorable, then these are considered nuisance, in that they have to be considered but due to type 1 error are of limited interest. This study assesses methods of handling nuisance covariate effects. The specific objectives include (1) calibrating the frequency of a covariate that is associated with type 1 error inflation, (2) calibrating its strength that renders it non-ignorable and (3) evaluating methods for handling these non-ignorable covariates in a nonlinear mixed effects model setting. Type 1 error was determined for the Wald test. Methods considered for handling the nuisance covariate effects were case deletion, Box-Cox transformation and inclusion of a specific fixed effects parameter. Non-ignorable nuisance covariates were found to be effectively handled through addition of a fixed effect parameter.
机译:临床研究包括出现罕见的变量,例如基因型,由于频率和强度的原因,很难从数据集中估算其影响。影响基于模型的参数的估计值的变量称为协变量。通常很难确定这种影响是否显着,因为当协变量很少时,I型错误会被夸大。它们的存在可能对目标参数没有实质性影响,因此是可忽略的,或者相反,它们可能具有影响力,因此是不可忽略的。如果这些协变量效应由于功效而无法估计且不可忽略,则认为它们是令人讨厌的,因为必须考虑它们,但由于类型1错误而引起的关注有限。本研究评估了处理有害协变量效应的方法。具体目标包括(1)校准与类型1错误膨胀相关联的协变量的频率,(2)校准使其不可忽略的强度以及(3)评估在非线性中处理这些不可忽略协变量的方法混合效果模型设置。为Wald测试确定了类型1错误。考虑的用于处理令人讨厌的协变量效应的方法是案例删除,Box-Cox变换和包含特定的固定效应参数。发现不可忽略的有害协变量可以通过添加固定效应参数来有效处理。

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