Propensity Score Methods for Merging Observational and Experimental Datasets
This project considers how one might augment a limited amount of data from randomized controlled trial (RCT) with more plentiful data from an observational database (ODB), in order to estimate a causal effect. In our motivating setting, the ODB has better external validity, while the RCT has genuine...
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Main Authors | , , , |
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Format | Journal Article |
Language | English |
Published |
20.04.2018
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Subjects | |
Online Access | Get full text |
DOI | 10.48550/arxiv.1804.07863 |
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Summary: | This project considers how one might augment a limited amount of data from
randomized controlled trial (RCT) with more plentiful data from an
observational database (ODB), in order to estimate a causal effect. In our
motivating setting, the ODB has better external validity, while the RCT has
genuine randomization. We work with strata defined by the propensity score in
the ODB. Subjects from the RCT are placed in strata defined by the propensity
they would have had, had they been in the ODB. Our first method simply spikes
the RCT data into their corresponding ODB strata. Our second method takes a
data-driven convex combination of the ODB and RCT treatment effect estimates
within each stratum. Using the delta method and simulations we show that the
spike-in method works best when the RCT covariates are drawn from the same
distribution as in the ODB. Our convex combination method is more robust than
the spike-in to covariate-based inclusion criteria that bias the RCT data. We
apply our methods to data from the Women's Health Initiative, a study of
thousands of postmenopausal women which has both observational and experimental
data on hormone therapy (HT). Using half of the RCT to define a gold standard,
we find that a version of the spiked-in estimate yields stable estimates of the
causal impact of HT on coronary heart disease. |
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DOI: | 10.48550/arxiv.1804.07863 |