Abstract

BackgroundConfounding bias is a common concern in epidemiological research. Its presence is often determined by comparing exposure effects between univariable- and multivariable regression models, using an arbitrary threshold of a 10% difference to indicate confounding bias. However, many clinical researchers are not aware that the use of this change-in-estimate criterion may lead to wrong conclusions when applied to logistic regression coefficients. This is due to a statistical phenomenon called noncollapsibility, which manifests itself in logistic regression models. This paper aims to clarify the role of noncollapsibility in logistic regression and to provide guidance in determining the presence of confounding bias.MethodsA Monte Carlo simulation study was designed to uncover patterns of confounding bias and noncollapsibility effects in logistic regression. An empirical data example was used to illustrate the inability of the change-in-estimate criterion to distinguish confounding bias from noncollapsibility effects.ResultsThe simulation study showed that, depending on the sign and magnitude of the confounding bias and the noncollapsibility effect, the difference between the effect estimates from univariable- and multivariable regression models may underestimate or overestimate the magnitude of the confounding bias. Because of the noncollapsibility effect, multivariable regression analysis and inverse probability weighting provided different but valid estimates of the confounder-adjusted exposure effect. In our data example, confounding bias was underestimated by the change in estimate due to the presence of a noncollapsibility effect.ConclusionIn logistic regression, the difference between the univariable- and multivariable effect estimate might not only reflect confounding bias but also a noncollapsibility effect. Ideally, the set of confounders is determined at the study design phase and based on subject matter knowledge. To quantify confounding bias, one could compare the unadjusted exposure effect estimate and the estimate from an inverse probability weighted model.

Highlights

  • Confounding bias is a common concern in epidemiological research

  • This method may lead to wrong conclusions about the presence and magnitude of confounding bias, as in logistic regression covariates may affect the effect estimate through two separate mechanisms: through confounding when covariates are associated with both the exposure and the outcome, and through noncollapsibility which is present when covariates are associated with the outcome [8]

  • The total difference between the effect estimate from a univariable- and multivariable regression model may be decomposed into an estimate of confounding bias and an estimate of the noncollapsibility effect [7, 9]

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Summary

Introduction

Confounding bias is a common concern in epidemiological research. Its presence is often determined by comparing exposure effects between univariable- and multivariable regression models, using an arbitrary threshold of a 10% difference to indicate confounding bias. Many clinical researchers are not aware that the use of this change-in-estimate criterion may lead to wrong conclusions when applied to logistic regression coefficients This is due to a statistical phenomenon called noncollapsibility, which manifests itself in logistic regression models. Oftentimes the confounding bias is quantified by comparing the exposure effect between a univariable- and a multivariable regression model, called the change-in-estimate criterion [4, 6, 7] This method may lead to wrong conclusions about the presence and magnitude of confounding bias, as in logistic regression covariates may affect the effect estimate through two separate mechanisms: through confounding when covariates are associated with both the exposure and the outcome, and through noncollapsibility which is present when covariates are associated with the outcome [8]. The change-in-estimate may misrepresent the true confounding bias [4]

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