TY - BOOK AU - Sheingold, Steven AU - Bir, Anupa TI - Evaluation for health policy and health care: a contemporary data-driven approach SN - 9781544333717 U1 - 362.10727 PY - 2020/// CY - California PB - Sage Publications, Inc. KW - Medical policy-Evaluation-Statistical methods KW - Medical care-Evaluation-Statistical methods N1 - Content: List of Figures and Tables Preface Acknowledgments About the Editors PART I. SETTING UP FOR EVALUATION Chapter 1. Introduction Background: Challenges and Opportunities Evaluation and Health Care Delivery System Transformation The Global Context for Considering Evaluation Methods and Evidence-Based Decision Making Book’s Intent Chapter 2. Setting the Stage Typology for Program Evaluation Planning an Evaluation: How Are the Changes Expected to Occur? Developing Evaluations: Some Preliminary Methodological Thoughts Prospectively Planned and Integrated Program Evaluation Summary Chapter 3. Measurement and Data Guiding Principles Measure Types Measures of Structure Measures of Process Measures of Outcomes Selecting Appropriate Measures Data Sources Looking Ahead Summary PART II. EVALUATION METHODS Chapter 4. Causality and Real-World Evaluation Evaluating Program/Policy Effectiveness: The Basics of Inferring Causality Defining Causality Assignment Mechanisms Three Key Treatment Effects Statistical and Real-World Considerations for Estimating Treatment Effects Summary Chapter 5. Randomized Designs Randomized Controlled Trials Stratified Randomization Group Randomized Trials Randomized Designs for Health Care Summary Chapter 6. Quasi-experimental Methods: Propensity Score Techniques Dealing With Selection Bias Comparison Group Formation and Propensity Scores Regression and Regression on the Propensity Score to Estimate Treatment Effects Summary Chapter 7. Quasi-experimental Methods: Regression Modeling and Analysis Interrupted Time Series Designs Comparative Interrupted Time Series Difference-in-Difference Designs Confounded Designs Instrument Variables to Estimate Treatment Effects Regression Discontinuity to Estimate Treatment Effects Fuzzy Regression Discontinuity Design Additional Considerations: Dealing With Nonindependent Data Summary Chapter 8. Treatment Effect Variations Among the Treatment Group Context: Factors Internal to the Organization Evaluation Approaches and Data Sources to Incorporate Contextual Factors Context: External Factors That Affect the Delivery or Potential Effectiveness of the Treatment Individual-Level Factors That May Cause Treatment Effect to Vary Methods for Examining the Individual Level Heterogeneity of Treatment Effects Multilevel Factors Importance of Incorporating Contextual Factors Into an Evaluation Summary Chapter 9. The Impact of Organizational Context on Heterogeneity of Outcomes: Lessons for Implementation Science Context for the Evaluation: Some Examples From Centers for Medicare and Medicaid Innovation Evaluation for Complex Systems Change Frameworks for Implementation Research Organizational Assessment Tools Analyzing Implementation Characteristics Summary PART III. MAKING EVALUATION MORE RELEVANT TO POLICY Chapter 10. Evaluation Model Case Study: The Learning System at the Center for Medicare and Medicaid Innovation Step 1: Establish Clear Aims Step 2: Develop an Explicit Theory of Change Step 3: Create the Context Necessary for a Test of the Model Step 4: Develop the Change Strategy Step 5: Test the Changes Step 6: Measure Progress Toward Aim Step 7: Plan for Spread Summary Chapter 11. Program Monitoring: Aligning Decision Making With Evaluation Nature of Decisions Cases: Examples of Decisions Evidence Thresholds for Decision Making in Rapid-Cycle Evaluation Summary Chapter 12. Alternative Ways of Analyzing Data in Rapid-Cycle Evaluation Statistical Process Control Methods Regression Analysis for Rapid-Cycle Evaluation A Bayesian Approach to Program Evaluation Summary Chapter 13. Synthesizing Evaluation Findings Meta-analysis Meta-evaluation Development for Health Care Demonstrations Meta-regression Analysis Bayesian Meta-analysis Putting It Together Summary Chapter 14. Decision Making Using Evaluation Results Research, Evaluation, and Policymaking Program/Policy Decision Making Using Evidence: A Conceptual Model Multiple Alternatives for Decisions A Research Evidence/Policy Analysis Example: Socioeconomic Status and the Hospital Readmission Reduction Program Other Policy Factors Considered Advice for Researchers and Evaluators Chapter 15. Communicating Research and Evaluation Results to Policymakers Suggested Strategies for Addressing Communication Issues Other Considerations for Tailoring and Presenting Results Closing Thoughts on Communicating Research Results Appendix A: The Primer Measure Set Appendix B: Quasi-experimental Methods That Correct for Selection Bias: Further Comments and Mathematical Derivations Propensity Score Methods An Alternative to Propensity Score Methods Assessing Unconfoundedness Using Propensity Scores to Estimate Treatment Effects Unconfounded Design When Assignment Is at the Group Level Index N2 - Evaluation for Health Policy and Health Care: A Contemporary Data-Driven Approach explores the best practices and applications for producing, synthesizing, visualizing, using, and disseminating health care evaluation research and reports. This graduate-level text will appeal to those interested in cutting-edge health program and health policy evaluation in this era of health care innovation. Editors Steven Sheingold and Anupa Bir’s core text focuses on quantitative, qualitative, and meta-analytic approaches to analysis, providing a guide for both those executing evaluations and those using the data to make policy decisions. It is designed to provide real-world applications within health policy to make learning more accessible and relevant, and to highlight the remaining challenges for using evidence to develop policy. (https://us.sagepub.com/en-us/nam/evaluation-for-health-policy-and-health-care/book262472#description) ER -