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Multiple imputation of missing covariates with non-linear effects and interactions: an evaluation of statistical methods

机译:具有非线性效应和相互作用的协变量缺失的多重插补:对统计方法的评估

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Background Multiple imputation is often used for missing data. When a model contains as covariates more than one function of a variable, it is not obvious how best to impute missing values in these covariates. Consider a regression with outcome Y and covariates X and X2. In 'passive imputation' a value X* is imputed for X and then X2 is imputed as (X*)2. A recent proposal is to treat X2 as 'just another variable' (JAV) and impute X and X2 under multivariate normality. Methods We use simulation to investigate the performance of three methods that can easily be implemented in standard software: 1) linear regression of X on Y to impute X then passive imputation of X2; 2) the same regression but with predictive mean matching (PMM); and 3) JAV. We also investigate the performance of analogous methods when the analysis involves an interaction, and study the theoretical properties of JAV. The application of the methods when complete or incomplete confounders are also present is illustrated using data from the EPIC Study. Results JAV gives consistent estimation when the analysis is linear regression with a quadratic or interaction term and X is missing completely at random. When X is missing at random, JAV may be biased, but this bias is generally less than for passive imputation and PMM. Coverage for JAV was usually good when bias was small. However, in some scenarios with a more pronounced quadratic effect, bias was large and coverage poor. When the analysis was logistic regression, JAV's performance was sometimes very poor. PMM generally improved on passive imputation, in terms of bias and coverage, but did not eliminate the bias. Conclusions Given the current state of available software, JAV is the best of a set of imperfect imputation methods for linear regression with a quadratic or interaction effect, but should not be used for logistic regression.
机译:背景技术多重插补通常用于丢失数据。当一个模型包含多个协变量时,如何最好地在这些协变量中推算缺失值并不明显。考虑具有结果Y的回归以及X和X 2 的协变量。在“被动估算”中,为X估算值X *,然后将X 2 估算为(X *) 2 。最近的一项提议是将X 2 视为“另一个变量”(JAV),并根据多元正态性推算X和X 2 。方法我们使用模拟方法来研究三种可以在标准软件中轻松实现的方法的性能:1)X在Y上的线性回归以推算X,然后被动推算X 2 ; 2)相同的回归,但具有预测均值匹配(PMM);和3)JAV。当分析涉及相互作用时,我们还研究了类似方法的性能,并研究了JAV的理论特性。使用来自EPIC研究的数据说明了当存在完全或不完全的混杂因素时该方法的应用。结果当分析为具有二次项或相互作用项的线性回归并且X随机完全缺失时,JAV给出一致的估计。当X随机丢失时,JAV可能会有偏差,但该偏差通常小于无源插补和PMM的偏差。偏差较小时,JAV的覆盖率通常很好。但是,在某些具有更为明显的二次效应的情况下,偏差较大且覆盖范围较差。当分析是逻辑回归时,JAV的性能有时会很差。在偏见和覆盖方面,PMM通常在被动归因方面有所改善,但并未消除偏见。结论鉴于可用软件的当前状态,对于线性回归具有二次或交互作用的情况,JAV是一组不完美的插补方法中最好的,但不应用于逻辑回归。

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