Generalizing Trial Evidence to Target Populations in Non-Nested Designs: Applications to AIDS Clinical Trials

Author:

Li Fan1234,Buchanan Ashley L.567,Cole Stephen R.89

Affiliation:

1. Department of Biostatistics , , New Haven , Connecticut , USA

2. Yale University School of Public Health , , New Haven , Connecticut , USA

3. Center for Methods in Implementation and Prevention Science , , New Haven , Connecticut , USA

4. Yale University , , New Haven , Connecticut , USA

5. Department of Pharmacy Practice , Kingston , Rhode Island , USA

6. College of Pharmacy , Kingston , Rhode Island , USA

7. University of Rhode Island , Kingston , Rhode Island , USA

8. Department of Epidemiology, Gillings School of Public Health , Chapel Hill , North Carolina , USA

9. University of North Carolina at Chapel Hill , Chapel Hill , North Carolina , USA

Abstract

Abstract Comparative effectiveness evidence from randomized trials may not be directly generalizable to a target population of substantive interest when, as in most cases, trial participants are not randomly sampled from the target population. Motivated by the need to generalize evidence from two trials conducted in the AIDS Clinical Trials Group (ACTG), we consider weighting, regression and doubly robust estimators to estimate the causal effects of HIV interventions in a specified population of people living with HIV in the USA. We focus on a non-nested trial design and discuss strategies for both point and variance estimation of the target population average treatment effect. Specifically in the generalizability context, we demonstrate both analytically and empirically that estimating the known propensity score in trials does not increase the variance for each of the weighting, regression and doubly robust estimators. We apply these methods to generalize the average treatment effects from two ACTG trials to specified target populations and operationalize key practical considerations. Finally, we report on a simulation study that investigates the finite-sample operating characteristics of the generalizability estimators and their sandwich variance estimators.

Publisher

Oxford University Press (OUP)

Subject

Statistics, Probability and Uncertainty,Statistics and Probability

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