Contents. Part 1 Introduction. Part 2 Cross-Sectional Selection Bias Adjustment

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From Analysis of Observational Health Care Data Using SAS. Full book available for purchase here. Contents Preface ix Part 1 Introduction Chapter 1 Introduction to Observational Studies... 3 1.1 Observational vs. Experimental Studies... 3 1.2 Issues in Observational Studies... 5 1.3 Study Design... 9 1.4 Methods... 10 1.5 Some Guidelines for Reporting... 13 Acknowledgments... 14 References... 15 Part 2 Cross-Sectional Selection Bias Adjustment Chapter 2 Propensity Score Stratification and Regression... 23 Abstract... 23 2.1 Introduction... 23 2.2 Propensity Score: Definition and Rationale... 24 2.3 Estimation of Propensity Scores... 24 2.4 Using Propensity Scores to Estimate Treatment Effects: Stratification and Regression Adjustment... 26 2.5 Evaluation of Propensity Scores... 27 2.6 Limitations and Advantages of Propensity Scores... 29 2.7 Example... 30 2.8 Summary... 46 Acknowledgments... 46 References... 46 Chapter 3 Propensity Score Matching for Estimating Treatment Effects... 51 Abstract... 51 3.1 Introduction... 52 3.2 Estimating the Propensity Score... 52 3.3 Forming Propensity Score Matched Sets... 53 3.4 Assessing Balance in Baseline Characteristics... 55

iv Contents 3.5 Estimating the Treatment Effect... 58 3.6 Sensitivity Analyses for Propensity Score Matching... 61 3.7 Propensity Score Matching Compared with Other Propensity Score Methods... 62 3.8 Case Study... 62 3.9 Summary... 81 Acknowledgments... 81 References... 82 Chapter 4 Doubly Robust Estimation of Treatment Effects... 85 Abstract... 85 4.1 Introduction... 85 4.2 Implemention with the DR Macro... 88 4.3 Sample Analysis... 95 4.4 Summary... 101 4.5 Conclusion... 102 References... 103 Chapter 5 Propensity Scoring with Missing Values... 105 Abstract... 105 5.1 Introduction... 105 5.2 Data Example... 107 5.3 Using SAS for IPW Estimation with Missing Values... 109 5.4 Sensitivity Analyses... 124 5.5 Discussion... 128 References... 128 Chapter 6 Instrumental Variable Method for Addressing Selection Bias... 131 Abstract... 131 6.1 Introduction... 131 6.2 Overview of Instrumental Variable Method to Control for Selection Bias... 132 6.3 Description of Case Study... 134 6.4 Traditional Ordinary Least Squares Regression Method Applied to Case Study... 138 6.5 Instrumental Variable Method Applied to Case Study... 139 6.6 Using PROC QLIM to Conduct IV Analysis... 143 6.7 Comparison to Traditional Regression Adjustment Method... 146

Contents v 6.8 Discussion... 147 6.9 Conclusion... 148 Acknowledgments... 149 References... 149 Chapter 7 Local Control Approach Using JMP... 151 Abstract... 151 7.1 Introduction... 152 7.2 Some Traditional Analyses of Hypothetical Patient Registry Data... 156 7.3 The Four Phases of a Local Control Analysis... 163 7.4 Conclusion... 182 Acknowledgments... 184 Appendix: Propensity Scores and Blocking/Balancing Scores... 185 References... 189 Part 3 Longitudinal Bias Adjustment Chapter 8 A Two-Stage Longitudinal Propensity Adjustment for Analysis of Observational Data... 195 Abstract... 195 8.1 Introduction... 195 8.2 Longitudinal Model of Propensity for Treatment... 196 8.3 Longitudinal Propensity-Adjusted Treatment Effectiveness Analyses... 197 8.4 Application... 198 8.5 Summary... 207 Acknowledgments... 208 References... 208 Chapter 9 Analysis of Longitudinal Observational Data Using Marginal Structural Models... 211 Abstract... 211 9.1 Introduction... 211 9.2 MSM Methodology... 213 9.3 Example: MSM Analysis of a Simulated Schizophrenia Trial... 214 9.4 Discussion... 227 References... 228

vi Contents Chapter 10 Structural Nested Models... 231 Abstract... 231 10.1 Introduction... 232 10.2 Time-Varying Causal Effect Moderation... 234 10.3 Estimation... 236 10.4 Empirical Example: Maximum Likelihood Data Analysis Using SAS PROC NLP... 239 10.5 Discussion... 251 Appendix 10.A... 253 Appendix 10.B... 256 Appendix 10.C... 259 References... 260 Chapter 11 Regression Models on Longitudinal Propensity Scores... 263 Abstract... 263 11.1 Introduction... 263 11.2 Estimation Using Regression on Longitudinal Propensity Scores... 265 11.3 Example... 266 11.4 Summary... 282 References... 282 Part 4 Claims Database Research Chapter 12 Good Research Practices for the Conduct of Observational Database Studies... 287 Abstract... 287 12.1 Introduction... 287 12.2 Checklist and Discussion... 289 Acknowledgments... 294 References... 294 Chapter 13 Dose-Response Safety Analyses Using Large Health Care Databases... 295 Abstract... 295 13.1 Introduction... 295 13.2 Data Structure... 297 13.3 Treatment Model and Censoring Model Setup... 300 13.4 Structural Model Implementation... 304

Contents vii 13.5 Discussion... 309 References... 310 Part 5 Pharmacoeconomics Chapter 14 Costs and Cost-Effectiveness Analysis Using Propensity Score Bin Bootstrapping... 315 Abstract... 315 14.1 Introduction... 315 14.2 Propensity Score Bin Bootstrapping... 319 14.3 Example: Schizophrenia Effectiveness Study... 320 14.4 Discussion... 334 References... 335 Chapter 15 Incremental Net Benefit... 339 Abstract... 339 15.1 Introduction... 340 15.2 Cost-Effectiveness Analysis... 341 15.3 Parameter Estimation... 346 15.4 Example... 351 15.5 Observational Studies... 359 15.6 Discussion... 359 Acknowledgments... 360 References... 360 Chapter 16 Cost and Cost-Effectiveness Analysis with Censored Data... 363 Abstract... 363 16.1 Introduction... 363 16.2 Statistical Methods... 366 16.3 Example... 369 16.4 Discussion... 379 Acknowledgments... 380 References... 381

viii Contents Part 6 Designing Observational Studies Chapter 17 Addressing Measurement and Sponsor Biases in Observational Research... 385 Abstract... 385 17.1 Introduction... 385 17.2 General Design Issues... 386 17.3 Addressing Measurement and Sponsor Bias... 388 17.4 Summary... 389 References... 390 Chapter 18 Sample Size Calculation for Observational Studies... 391 Abstract... 391 18.1 Introduction... 391 18.2 Continuous Variables... 392 18.3 Binary Variables... 398 18.4 Two-Sample Log-Rank Test for Survival Data... 405 18.5 Two-Sample Longitudinal Data... 410 18.6 Discussion... 423 Appendix: Asymptotic Distribution of Wilcoxon Rank Sum Test under H... 423 References... 424 Index... 427 From Analysis of Observational Health Care Data Using SAS by Douglas Faries, Andrew Leon, Josep Haro, and Robert Obenchain. Copyright 2010, SAS Institute Inc., Cary, North Carolina, USA. ALL RIGHTS RESERVED.