A review and evaluation of standard methods to handle missing data on time-varying confounders in marginal structural models

11/28/2019
by   Clemence Leyrat, et al.
0

Marginal structural models (MSMs) are commonly used to estimate causal intervention effects in longitudinal non-randomised studies. A common issue when analysing data from observational studies is the presence of incomplete confounder data, which might lead to bias in the intervention effect estimates if they are not handled properly in the statistical analysis. However, there is currently no recommendation on how to address missing data on covariates in MSMs under a variety of missingness mechanisms encountered in practice. We reviewed existing methods to handling missing data in MSMs and performed a simulation study to compare the performance of complete case (CC) analysis, the last observation carried forward (LOCF), the missingness pattern approach (MPA), multiple imputation (MI) and inverse-probability-of-missingness weighting (IPMW). We considered three mechanisms for non-monotone missing data which are common in observational studies using electronic health record data. Whereas CC analysis lead to biased estimates of the intervention effect in almost all scenarios, the performance of the other approaches varied across scenarios. The LOCF approach led to unbiased estimates only under a specific non-random mechanism in which confounder values were missing when their values remained unchanged since the previous measurement. In this scenario, MI, the MPA and IPMW were biased. MI and IPMW led to the estimation of unbiased effects when data were missing at random, given the covariates or the treatment but only MI was unbiased when the outcome was a predictor of missingness. Furthermore, IPMW generally lead to very large standard errors. Lastly, regardless of the missingness mechanism, the MPA led to unbiased estimates only when the failure to record a confounder at a given time-point modified the subsequent relationships between the partially observed covariate and the outcome.

READ FULL TEXT
research
12/10/2021

Handling missing data when estimating causal effects with Targeted Maximum Likelihood Estimation

Causal inference from longitudinal studies is central to epidemiologic r...
research
08/04/2022

Using Instruments for Selection to Adjust for Selection Bias in Mendelian Randomization

Selection bias is a common concern in epidemiologic studies. In the lite...
research
08/09/2022

Analysis of Longitudinal Data with Missing Values in the Response and Covariates Using the Stochastic EM Algorithm

In longitudinal data a response variable is measured over time, or under...
research
10/20/2022

Evaluation of multiple imputation to address intended and unintended missing data in case-cohort studies with a binary endpoint

Case-cohort studies are conducted within cohort studies, wherein collect...
research
01/17/2023

Recoverability and estimation of causal effects under typical multivariable missingness mechanisms

In the context of missing data, the identifiability or "recoverability" ...
research
02/22/2023

Bias through time-varying covariates in the analysis of cohort stepped wedge trials: a simulation study

In stepped wedge cluster randomized trials (SW-CRTs), observations colle...
research
05/05/2021

Inverse probability of censoring weighting for visual predictive checks of time-to-event models with time-varying covariates

When constructing models to summarize clinical data to be used for simul...

Please sign up or login with your details

Forgot password? Click here to reset