TY - JOUR
T1 - Assessing the effectiveness of antiretroviral adherence interventions
T2 - Using marginal structural models to replicate the findings of randomized controlled trials
AU - Petersen, Maya L.
AU - Wang, Yue
AU - Van Der Laan, Mark J.
AU - Bangsberg, David R.
N1 - Funding Information:
This work has been supported by the Deutsche Forschungsgemei nschaft. Stimulating discussions with E. Sigmund, G. Wegner and M. Mehring are gratefully acknowledged.
PY - 2006/12
Y1 - 2006/12
N2 - Randomized controlled trials of interventions to improve adherence to antiretroviral medications are not always feasible. Marginal structural models (MSM) are a statistical methodology that aims to replicate the findings of randomized controlled trials using observational data. Under the assumption of no unmeasured confounders, 3 MSM estimators are available to estimate the causal effect of an intervention. Two of these estimators, G-computation and inverse probability of treatment weighted (IPTW), can be implemented using standard software. G-computation relies on fitting a multivariable regression of adherence on the intervention and confounders. Thus, it is related to the standard multivariable regression approach to estimating causal effects. In contrast, IPTW relies on fitting a multivariable logistic regression of the intervention on confounders. This article reviews the implementation of these methods, the assumptions underlying them, and interpretation of results. Findings are illustrated with a theoretic data example in which MSM are used to estimate the effect of a behavioral intervention on adherence to antiretroviral therapy.
AB - Randomized controlled trials of interventions to improve adherence to antiretroviral medications are not always feasible. Marginal structural models (MSM) are a statistical methodology that aims to replicate the findings of randomized controlled trials using observational data. Under the assumption of no unmeasured confounders, 3 MSM estimators are available to estimate the causal effect of an intervention. Two of these estimators, G-computation and inverse probability of treatment weighted (IPTW), can be implemented using standard software. G-computation relies on fitting a multivariable regression of adherence on the intervention and confounders. Thus, it is related to the standard multivariable regression approach to estimating causal effects. In contrast, IPTW relies on fitting a multivariable logistic regression of the intervention on confounders. This article reviews the implementation of these methods, the assumptions underlying them, and interpretation of results. Findings are illustrated with a theoretic data example in which MSM are used to estimate the effect of a behavioral intervention on adherence to antiretroviral therapy.
KW - Causal inference
KW - Counterfactual
KW - G-computation
KW - HIV
KW - Inverse probability of treatment
KW - Randomized controlled trial
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U2 - 10.1097/01.qai.0000248344.95135.8d
DO - 10.1097/01.qai.0000248344.95135.8d
M3 - Review article
C2 - 17133209
AN - SCOPUS:33845367425
SN - 1525-4135
VL - 43
SP - S96-S103
JO - Journal of Acquired Immune Deficiency Syndromes and Human Retrovirology
JF - Journal of Acquired Immune Deficiency Syndromes and Human Retrovirology
IS - SUPPL. 1
ER -