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Constructing Inverse Probability Weights for Marginal Structural Models

Overview
Journal Am J Epidemiol
Specialty Public Health
Date 2008 Aug 7
PMID 18682488
Citations 1179
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Abstract

The method of inverse probability weighting (henceforth, weighting) can be used to adjust for measured confounding and selection bias under the four assumptions of consistency, exchangeability, positivity, and no misspecification of the model used to estimate weights. In recent years, several published estimates of the effect of time-varying exposures have been based on weighted estimation of the parameters of marginal structural models because, unlike standard statistical methods, weighting can appropriately adjust for measured time-varying confounders affected by prior exposure. As an example, the authors describe the last three assumptions using the change in viral load due to initiation of antiretroviral therapy among 918 human immunodeficiency virus-infected US men and women followed for a median of 5.8 years between 1996 and 2005. The authors describe possible tradeoffs that an epidemiologist may encounter when attempting to make inferences. For instance, a tradeoff between bias and precision is illustrated as a function of the extent to which confounding is controlled. Weight truncation is presented as an informal and easily implemented method to deal with these tradeoffs. Inverse probability weighting provides a powerful methodological tool that may uncover causal effects of exposures that are otherwise obscured. However, as with all methods, diagnostics and sensitivity analyses are essential for proper use.

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References
1.
Petersen M, Wang Y, van der Laan M, Bangsberg D . Assessing the effectiveness of antiretroviral adherence interventions. Using marginal structural models to replicate the findings of randomized controlled trials. J Acquir Immune Defic Syndr. 2006; 43 Suppl 1:S96-S103. DOI: 10.1097/01.qai.0000248344.95135.8d. View

2.
Ko H, Hogan J, Mayer K . Estimating causal treatment effects from longitudinal HIV natural history studies using marginal structural models. Biometrics. 2003; 59(1):152-62. DOI: 10.1111/1541-0420.00018. View

3.
Patel K, Hernan M, Williams P, Seeger J, McIntosh K, Van Dyke R . Long-term effectiveness of highly active antiretroviral therapy on the survival of children and adolescents with HIV infection: a 10-year follow-up study. Clin Infect Dis. 2008; 46(4):507-15. DOI: 10.1086/526524. View

4.
Lopez-Gatell H, Cole S, Hessol N, French A, Greenblatt R, Landesman S . Effect of tuberculosis on the survival of women infected with human immunodeficiency virus. Am J Epidemiol. 2007; 165(10):1134-42. DOI: 10.1093/aje/kwk116. View

5.
Hernan M, Robins J . Estimating causal effects from epidemiological data. J Epidemiol Community Health. 2006; 60(7):578-86. PMC: 2652882. DOI: 10.1136/jech.2004.029496. View