The impact of adjustment for covariates on meta-analysis of randomised intervention studies for binary outcome

<p><b>Background</b></p> <p>Covariate adjustment analysis is often used in epidemiological studies but is less common in randomised controlled trials (RCTs) and RCT meta-analyses. There is a lack of consensus on whether the analysis of RCT data should adjust for importa...

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Main Author: Yu, L
Other Authors: Altman, D
Format: Thesis
Language:English
Published: 2015
Subjects:
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author Yu, L
author2 Altman, D
author_facet Altman, D
Yu, L
author_sort Yu, L
collection OXFORD
description <p><b>Background</b></p> <p>Covariate adjustment analysis is often used in epidemiological studies but is less common in randomised controlled trials (RCTs) and RCT meta-analyses. There is a lack of consensus on whether the analysis of RCT data should adjust for important baseline covariates. The estimated treatment effect of a binary covariate can differ when logistic regression is carried out, even when the covariate is balanced between treatment groups.</p> <p><b>Objectives</b></p> <p>The objectives of this study were to examine the factors that affect the impact of adjusted analysis in different RCT scenarios and to explore the impact of adjusted analysis in RCT meta-analysis.</p> <p><b>Methods</b></p> <p>Simulation and sampling studies were conducted to identify the factors that affect the impact of using an adjusted logistic regression model. Two covariates, one continuous and one binary, were considered simultaneously. The event rate, treatment effect, binary and continuous variable distributions, covariate prognostic strengths, and correlation between the covariates were varied during the simulations. The impact of adjustment on RCT meta-analysis was investigated using individual participant data obtained from the Perinatal Antiplatelet Review of International Studies. Different methods of performing unadjusted and adjusted meta-analysis were compared.</p> <p><b>Results</b></p> <p>The simulation results suggest that adjustment only has a notable effect in extreme scenarios, such as a very large treatment effect or highly prognostic covariates. The relative difference between the unadjusted and adjusted odds ratios was found to be larger than 50% under these extreme scenarios. Covariate adjustment is likely to have a small effect on meta-analyses with many studies.</p> <p><b>Summary</b></p> <p>Adjusted analysis should be carried out by design. Performing adjusted analysis in a meta-analysis can be challenging as sufficient information about the covariates is often not available.</p>
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spelling oxford-uuid:970440ee-b772-43d6-89c2-62e7ae3b89102022-03-26T23:56:45ZThe impact of adjustment for covariates on meta-analysis of randomised intervention studies for binary outcomeThesishttp://purl.org/coar/resource_type/c_db06uuid:970440ee-b772-43d6-89c2-62e7ae3b8910Medical statisticsEnglishORA Deposit2015Yu, LAltman, D<p><b>Background</b></p> <p>Covariate adjustment analysis is often used in epidemiological studies but is less common in randomised controlled trials (RCTs) and RCT meta-analyses. There is a lack of consensus on whether the analysis of RCT data should adjust for important baseline covariates. The estimated treatment effect of a binary covariate can differ when logistic regression is carried out, even when the covariate is balanced between treatment groups.</p> <p><b>Objectives</b></p> <p>The objectives of this study were to examine the factors that affect the impact of adjusted analysis in different RCT scenarios and to explore the impact of adjusted analysis in RCT meta-analysis.</p> <p><b>Methods</b></p> <p>Simulation and sampling studies were conducted to identify the factors that affect the impact of using an adjusted logistic regression model. Two covariates, one continuous and one binary, were considered simultaneously. The event rate, treatment effect, binary and continuous variable distributions, covariate prognostic strengths, and correlation between the covariates were varied during the simulations. The impact of adjustment on RCT meta-analysis was investigated using individual participant data obtained from the Perinatal Antiplatelet Review of International Studies. Different methods of performing unadjusted and adjusted meta-analysis were compared.</p> <p><b>Results</b></p> <p>The simulation results suggest that adjustment only has a notable effect in extreme scenarios, such as a very large treatment effect or highly prognostic covariates. The relative difference between the unadjusted and adjusted odds ratios was found to be larger than 50% under these extreme scenarios. Covariate adjustment is likely to have a small effect on meta-analyses with many studies.</p> <p><b>Summary</b></p> <p>Adjusted analysis should be carried out by design. Performing adjusted analysis in a meta-analysis can be challenging as sufficient information about the covariates is often not available.</p>
spellingShingle Medical statistics
Yu, L
The impact of adjustment for covariates on meta-analysis of randomised intervention studies for binary outcome
title The impact of adjustment for covariates on meta-analysis of randomised intervention studies for binary outcome
title_full The impact of adjustment for covariates on meta-analysis of randomised intervention studies for binary outcome
title_fullStr The impact of adjustment for covariates on meta-analysis of randomised intervention studies for binary outcome
title_full_unstemmed The impact of adjustment for covariates on meta-analysis of randomised intervention studies for binary outcome
title_short The impact of adjustment for covariates on meta-analysis of randomised intervention studies for binary outcome
title_sort impact of adjustment for covariates on meta analysis of randomised intervention studies for binary outcome
topic Medical statistics
work_keys_str_mv AT yul theimpactofadjustmentforcovariatesonmetaanalysisofrandomisedinterventionstudiesforbinaryoutcome
AT yul impactofadjustmentforcovariatesonmetaanalysisofrandomisedinterventionstudiesforbinaryoutcome