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Comparison of Methods for Handling Missing Covariate Data

机译:协变量缺失数据处理方法的比较

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摘要

Missing covariate data is a common problem in nonlinear mixed effects modelling of clinical data. The aim of this study was to implement and compare methods for handling missing covariate data in nonlinear mixed effects modelling under different missing data mechanisms. Simulations generated data for 200 individuals with a 50% difference in clearance between males and females. Three different types of missing data mechanisms were simulated and information about sex was missing for 50% of the individuals. Six methods for handling the missing covariate were compared in a stochastic simulations and estimations study where 200 data sets were simulated. The methods were compared according to bias and precision of parameter estimates. Multiple imputation based on weight and response, full maximum likelihood modelling using information on weight and full maximum likelihood modelling where the proportion of males among the individuals lacking information about sex was estimated (EST) gave precise and unbiased estimates in the presence of missing data when data were missing completely at random or missing at random. When data were missing not at random, the only method resulting in low bias and high parameter precision was EST.
机译:缺少协变量数据是临床数据的非线性混合效应建模中的常见问题。这项研究的目的是实现和比较在不同缺失数据机制下非线性混合效应模型中处理缺失协变量数据的方法。模拟生成了200个人的数据,男性和女性之间的清除率差异为50%。模拟了三种不同类型的缺失数据机制,并且50%的人缺少有关性别的信息。在随机模拟和估计研究中比较了处理缺失协变量的六种方法,其中模拟了200个数据集。根据参数估计的偏差和精度对方法进行了比较。基于权重和响应的多重推算,使用权重信息的完全最大似然模型和完全最大似然模型,其中在缺少性别信息的情况下,男性的比例被估计(EST),从而在缺少数据时给出准确无偏的估计数据完全随机丢失或随机丢失。当数据不是随机丢失时,导致低偏差和高参数精度的唯一方法是EST。

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