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
- 15 Affinely Invariant Matching Methods with Ellipsoidal Distributions
- 16 Characterizing the Effect of Matching Using Linear Propensity Score Methods with Normal Distributions
- 17 Matching Using Estimated Propensity Scores: Relating Theory to Practice
- 18 Combining Propensity Score Matching with Additional Adjustments for Prognostic Covariates
- PART VI SOME APPLIED CONTRIBUTIONS
- PART VII SOME FOCUSED APPLICATIONS
- Conclusion: Advice to the Investigator
- References
- Author Index
- Subject Index
18 - Combining Propensity Score Matching with Additional Adjustments for Prognostic Covariates
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
- 15 Affinely Invariant Matching Methods with Ellipsoidal Distributions
- 16 Characterizing the Effect of Matching Using Linear Propensity Score Methods with Normal Distributions
- 17 Matching Using Estimated Propensity Scores: Relating Theory to Practice
- 18 Combining Propensity Score Matching with Additional Adjustments for Prognostic Covariates
- PART VI SOME APPLIED CONTRIBUTIONS
- PART VII SOME FOCUSED APPLICATIONS
- Conclusion: Advice to the Investigator
- References
- Author Index
- Subject Index
Summary
Abstract: Propensity score matching refers to a class of multivariate methods used in comparative studies to construct treated and matched control samples that have similar distributions on many covariates. This matching is the observational study analog of randomization in ideal experiments, but is far less complete as it can only balance the distribution of observed covariates, whereas randomization balances the distribution of all covariates, both observed and unobserved. An important feature of propensity score matching is that it can be easily combined with model-based regression adjustments or with matching on a subset of special prognostic covariates or combinations of prognostic covariates that have been identified as being especially predictive of the outcome variables. We extend earlier results by developing approximations for the distributions of covariates in matched samples created with linear propensity score methods for the practically important situation where matching uses both the estimated linear propensity scores and a set of special prognostic covariates. Such matching on a subset of special prognostic covariates is an observational study analog of blocking in a randomized experiment. An example combining propensity score matching with Mahalanobis metric matching and regression adjustment is presented that demonstrates the flexibility of these methods for designing an observational study that effectively reduces both bias due to many observed covariates and bias and variability due to a more limited subset of covariates.
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- Matched Sampling for Causal Effects , pp. 282 - 304Publisher: Cambridge University PressPrint publication year: 2006