High-dimensional Propensity Score Adjustment in Studies of Treatment Effects Using Health Care Claims Data
Abstract
Adjusting for large numbers of covariates ascertained from patients' health care claims data may improve control of confounding, as these variables may collectively be proxies for unobserved factors. Here, we develop and test an algorithm that empirically identifies candidate covariates, prioritizes covariates, and integrates them into a propensity-score-based confounder adjustment model.
We developed a multistep algorithm to implement high-dimensional proxy adjustment in claims data. Steps include (1) identifying data dimensions, eg, diagnoses, procedures, and medications; (2) empirically identifying candidate covariates; (3) assessing recurrence of codes; (4) prioritizing covariates; (5) selecting covariates for adjustment; (6) estimating the exposure propensity score; and (7) estimating an outcome model. This algorithm was tested in Medicare claims data, including a study on the effect of Cox-2 inhibitors on reduced gastric toxicity compared with nonselective nonsteroidal anti-inflammatory drugs (NSAIDs).
Citation impact
- FWCI
- 30.65
- Percentile
- 100%
- References
- 45
Authors
6Topics & keywords
- Propensity score matching
- Covariate
- Medicine
- Confounding
- Confidence interval
- Proportional hazards model
- Hazard ratio
- Relative risk
- Good health and well-being