2018
DOI: 10.1177/1740774518760300
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Beyond total treatment effects in randomised controlled trials: Baseline measurement of intermediate outcomes needed to reduce confounding in mediation investigations

Abstract: Background:Random allocation avoids confounding bias when estimating the average treatment effect. For continuous outcomes measured at post-treatment as well as prior to randomisation (baseline), analyses based on (A) post-treatment outcome alone, (B) change scores over the treatment phase or (C) conditioning on baseline values (analysis of covariance) provide unbiased estimators of the average treatment effect. The decision to include baseline values of the clinical outcome in the analysis is based on precisi… Show more

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Cited by 34 publications
(17 citation statements)
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“…Moreover, by analyzing possible mediation by total activity, we took a first step to gaining more insight into the contribution of different elements of MULTI to the observed improvements. Finally, by including baseline measures in this analysis, our mediation analysis is mathematically in line with a covariance approach, which was the recommended method for mediation analyses (58, 59).…”
Section: Discussionmentioning
confidence: 99%
“…Moreover, by analyzing possible mediation by total activity, we took a first step to gaining more insight into the contribution of different elements of MULTI to the observed improvements. Finally, by including baseline measures in this analysis, our mediation analysis is mathematically in line with a covariance approach, which was the recommended method for mediation analyses (58, 59).…”
Section: Discussionmentioning
confidence: 99%
“…Causal mediation analysis will be based on parametric regression models [ 50 ]. For each mediator separately, this involves estimating a linear model for each mediator with random allocation, baseline outcome, baseline mediator, site and characterisation as covariates, and separately estimating a linear model for each outcome with the mediator, random allocation, baseline outcome, baseline mediator, site and characterisation as covariates.…”
Section: Methodsmentioning
confidence: 99%
“…The analysis used causal mediation analysis based on parametric regression models. 54 This involved estimating a linear model for each mediator with random assignment, baseline outcome, baseline mediator, site and paranoia cut-off point at baseline as covariates, and separately estimating a linear model for each outcome with the mediator, group assignment, baseline outcome, baseline mediator, site and paranoid cut-off point as covariates. The effect of group assignment on the mediator is multiplied by the effect of the mediator on outcome to estimate the indirect effect, and the effect of SlowMo on outcome in the model including mediator is an estimate of the direct effect.…”
Section: (B-a)]mentioning
confidence: 99%