Book contents
- Frontmatter
- Contents
- Contributor Acknowledgments
- Matched Sampling for Causal Effects
- My Introduction to Matched Sampling
- PART I THE EARLY YEARS AND THE INFLUENCE OF WILLIAM G. COCHRAN
- PART II UNIVARIATE MATCHING METHODS AND THE DANGERS OF REGRESSION ADJUSTMENT
- PART III BASIC THEORY OF MULTIVARIATE MATCHING
- PART IV FUNDAMENTALS OF PROPENSITY SCORE MATCHING
- PART V AFFINELY INVARIANT MATCHING METHODS WITH ELLIPSOIDALLY SYMMETRIC DISTRIBUTIONS, THEORY AND METHODOLOGY
- PART VI SOME APPLIED CONTRIBUTIONS
- 19 Causal Inference in Retrospective Studies
- 20 The Design of the New York School Choice Scholarships Program Evaluation
- 21 Estimating and Using Propensity Scores with Partially Missing Data
- 22 Using Propensity Scores to Help Design Observational Studies: Application to the Tobacco Litigation
- PART VII SOME FOCUSED APPLICATIONS
- Conclusion: Advice to the Investigator
- References
- Author Index
- Subject Index
21 - Estimating and Using Propensity Scores with Partially Missing Data
Published online by Cambridge University Press: 05 June 2012
- Frontmatter
- Contents
- Contributor Acknowledgments
- Matched Sampling for Causal Effects
- My Introduction to Matched Sampling
- PART I THE EARLY YEARS AND THE INFLUENCE OF WILLIAM G. COCHRAN
- PART II UNIVARIATE MATCHING METHODS AND THE DANGERS OF REGRESSION ADJUSTMENT
- PART III BASIC THEORY OF MULTIVARIATE MATCHING
- PART IV FUNDAMENTALS OF PROPENSITY SCORE MATCHING
- PART V AFFINELY INVARIANT MATCHING METHODS WITH ELLIPSOIDALLY SYMMETRIC DISTRIBUTIONS, THEORY AND METHODOLOGY
- PART VI SOME APPLIED CONTRIBUTIONS
- 19 Causal Inference in Retrospective Studies
- 20 The Design of the New York School Choice Scholarships Program Evaluation
- 21 Estimating and Using Propensity Scores with Partially Missing Data
- 22 Using Propensity Scores to Help Design Observational Studies: Application to the Tobacco Litigation
- PART VII SOME FOCUSED APPLICATIONS
- Conclusion: Advice to the Investigator
- References
- Author Index
- Subject Index
Summary
Abstract: Investigators in observational studies have no control over treatment assignment. As a result, large differences can exist between the treatment and control groups on observed covariates, which can lead to badly biased estimates of treatment effects. Propensity score methods are an increasingly popular method for balancing the distribution of the covariates in the two groups to reduce this bias; for example, using matching or subclassification, sometimes in combination with model-based adjustment. To estimate propensity scores, which are the conditional probabilities of being treated given a vector of observed covariates, we must model the distribution of the treatment indicator given these observed covariates. Much work has been done in the case where covariates are fully observed. We address the problem of calculating propensity scores when covariates can have missing values. In such cases, which commonly arise in practice, the pattern of missing covariates can be prognostically important, and then propensity scores should condition both on observed values of covariates and on the observed missing-data indicators. Using the resulting generalized propensity scores to adjust for the observed background differences between treatment and control groups leads, in expectation, to balanced distributions of observed covariates in the treatment and control groups, as well as balanced distributions of patterns of missing data. The methods are illustrated using the generalized propensity scores to create matched samples in a study of the effects of postterm pregnancy.
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- Matched Sampling for Causal Effects , pp. 347 - 364Publisher: Cambridge University PressPrint publication year: 2006