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Methods to assess intended effects of drug treatment in observational studies are reviewed
Authors:Klungel Olaf H  Martens Edwin P  Psaty Bruce M  Grobbee Diederik E  Sullivan Sean D  Stricker Bruno H Ch  Leufkens Hubert G M  de Boer A
Affiliation:

aDepartment of Pharmacoepidemiology and Pharmacotherapy, Utrecht Institute of Pharmaceutical Sciences (UIPS), Utrecht University, Sorbonnelaan 16, 3584 CA Utrecht, the Netherlands

bCentre for Biostatistics, Utrecht University, Utrecht, the Netherlands

cCardiovascular Health Research Unit, Medicine, Health Services, and Epidemiology, University of Washington, Seattle, WA, USA

dJulius Centre for Health Sciences and Primary Care, Utrecht Medical Centre (UMC), Utrecht, the Netherlands

eDepartments of Pharmacy and Health Services, University of Washington, Seattle, WA, USA

fDepartment of Epidemiology and Biostatistics, Erasmus University Rotterdam, Rotterdam, the Netherlands

Abstract:BACKGROUND AND OBJECTIVE: To review methods that seek to adjust for confounding in observational studies when assessing intended drug effects. METHODS: We reviewed the statistical, economical and medical literature on the development, comparison and use of methods adjusting for confounding. RESULTS: In addition to standard statistical techniques of (logistic) regression and Cox proportional hazards regression, alternative methods have been proposed to adjust for confounding in observational studies. A first group of methods focus on the main problem of nonrandomization by balancing treatment groups on observed covariates: selection, matching, stratification, multivariate confounder score, and propensity score methods, of which the latter can be combined with stratification or various matching methods. Another group of methods look for variables to be used like randomization in order to adjust also for unobserved covariates: instrumental variable methods, two-stage least squares, and grouped-treatment approach. Identifying these variables is difficult, however, and assumptions are strong. Sensitivity analyses are useful tools in assessing the robustness and plausibility of the estimated treatment effects to variations in assumptions about unmeasured confounders. CONCLUSION: In most studies regression-like techniques are routinely used for adjustment for confounding, although alternative methods are available. More complete empirical evaluations comparing these methods in different situations are needed.
Keywords:Review   Confounding   Observational studies   Treatment effectiveness   Intended drug effects   Statistical methods
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