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A Targeted Maximum Likelihood Estimator for Two-Stage Designs

Sherri Rose, University of California, Berkeley
Mark J. van der Laan, University of California, Berkeley

Abstract

We consider two-stage sampling designs, including so-called nested case control studies, where one takes a random sample from a target population and completes measurements on each subject in the first stage. The second stage involves drawing a subsample from the original sample, collecting additional data on the subsample. This data structure can be viewed as a missing data structure on the full-data structure collected in the second-stage of the study. Methods for analyzing two-stage designs include parametric maximum likelihood estimation and estimating equation methodology. We propose an inverse probability of censoring weighted targeted maximum likelihood estimator (IPCW-TMLE) in two-stage sampling designs and present simulation studies featuring this estimator.

Suggested Citation

Sherri Rose and Mark J. van der Laan. "A Targeted Maximum Likelihood Estimator for Two-Stage Designs" The International Journal of Biostatistics 7.1 (2011).
Available at: http://works.bepress.com/sherri_rose/14