Adjusting for misclassification of an exposure in an individual participant data meta-analysis

11/02/2021
by   Valentijn M. T. de Jong, et al.
0

A common problem in the analysis of multiple data sources, including individual participant data meta-analysis (IPD-MA), is the misclassification of binary variables. Misclassification may lead to biased estimates of model parameters, even when the misclassification is entirely random. We aimed to develop statistical methods that facilitate unbiased estimation of adjusted and unadjusted exposure-outcome associations and between-study heterogeneity in IPD-MA, where the extent and nature of exposure misclassification may vary across studies. We present Bayesian methods that allow misclassification of binary exposure variables to depend on study- and participant-level characteristics. In an example of the differential diagnosis of dengue using two variables, where the gold standard measurement for the exposure variable was unavailable for some studies which only measured a surrogate prone to misclassification, our methods yielded more accurate estimates than analyses naive with regard to misclassification or based on gold standard measurements alone. In a simulation study, the evaluated misclassification model yielded valid estimates of the exposure-outcome association, and was more accurate than analyses restricted to gold standard measurements. Our proposed framework can appropriately account for the presence of binary exposure misclassification in IPD-MA. It requires that some studies supply IPD for the surrogate and gold standard exposure and misclassification is exchangeable across studies conditional on observed covariates (and outcome). The proposed methods are most beneficial when few large studies that measured the gold standard are available, and when misclassification is frequent.

READ FULL TEXT

page 6

page 8

page 10

page 12

page 13

page 19

page 21

page 22

research
11/01/2018

Simple Sensitivity Analysis for Differential Measurement Error

Simple sensitivity analysis results are given for differential measureme...
research
05/30/2023

Correcting for bias due to categorisation based on cluster analysis using multiple continuous error-prone exposures

The association between multidimensional exposure patterns and outcomes ...
research
03/17/2023

Statistical inference for association studies in the presence of binary outcome misclassification

In biomedical and public health association studies, binary outcome vari...
research
11/14/2020

Measurement Error in Meta-Analysis (MEMA) – a Bayesian framework for continuous outcome data

Ideally, a meta-analysis will summarize data from several unbiased studi...
research
09/25/2022

Issues in Implementing Regression Calibration Analyses

Regression calibration is a popular approach for correcting biases in es...
research
06/08/2023

Surrogate method for partial association between mixed data with application to well-being survey analysis

This paper is motivated by the analysis of a survey study of college stu...
research
09/29/2020

Efficient Study Design with Multiple Measurement Instruments

Outcomes from studies assessing exposure often use multiple measurements...

Please sign up or login with your details

Forgot password? Click here to reset