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Understanding Healthcare Delivery Science

Understanding Healthcare Delivery Science

9781260026481
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Opis
A new title in the acclaimed Understanding series that focuses on the science of healthcare delivery

Over the past decade, the subject of Systems Science has skyrocketed in importance in the healthcare field. With its engaging, clinically relevant style, Understanding Healthcare Delivery Science is the perfect introduction to this timely topic. It covers every aspect of what actually constitutes “best care” and how it can be most efficiently delivered from an operational standpoint. The book is exceptional for two other reasons:: numerous case vignettes put the content in a clinically relevant framework, and its comprehensive coverage spans everything from quality and safety to data and policy. Readers will find a valuable opening section that delivers an outstanding introductory discussion of Healthcare Delivery Science

Co-author Dr. Michael Howell is a nationally recognized expert on healthcare quality, whose research has been covered by The New York Times, CNN, and Consumer Reports. He has served on national quality- and safety-related national advisory panels for the CDC, Society of Critical Care Medicine, CMS, and others. An active healthcare delivery scientist, Dr. Howell has published more than 90 research articles, editorials, and book chapters on topics related to quality, safety, patient-centeredness, and critical care. 


Szczegóły produktu
60790
9781260026481
9781260026481

Opis

Rok wydania
2020
Numer wydania
1
Oprawa
miękka foliowana
Wymiary (mm)
188 x 234
Waga (g)
846
  • PART I: WHAT IS HEALTHCARE DELIVERY SCIENCE, AND WHY DO WE NEED IT?

    Chapter 1
    Introduction
    The Problem: How Research and Operations Are Organized in Healthcare Today
    Historical Context: How Did It Get This Way?
    Why Now Is Different: Two Key Changes in Context
    Why It Matters: Problems with Thinking Too Simply About Healthcare
    Healthcare Delivery Science
    References

    Chapter 2
    Complexity
    What Happens When We View Healthcare as Complicated?
    What Is a Complex Adaptive System?
    Why It Matters: Fitting the Right Measurement Tool to the Question
    Healthcare Delivery Science: A Field of Research Where Healthcare Itself Is the Organism Under Study
    References

    Chapter 3
    Quality and Safety in Healthcare
    The Best the World Has Ever Seen
    Three Critical Papers to Know
    An Inflection Point: To Err Is Human and Crossing the Quality Chasm
    More Recent Estimates About Deaths from Medical Error
    International Comparisons
    Have Improvement Efforts Worked?
    How We Put It All Together
    References

    Chapter 4
    What Does the Future Hold?
    Introduction
    Value Drives Change
    The “Postsafety” Era
    Healthcare Delivery That Delivers Health
    Consumerism Versus Personalization
    The Doctor Will See You Now?
    Informed Healthcare Information Technology (IT)
    Conclusions
    References

    PART II: MAKING CHANGE IN THE REAL WORLD—TOOLS FOR HEALTHCARE IMPROVEMENT

    Chapter 5
    Human Factors
    Human Factors: An Introduction
    Cognitive Reasoning, Errors, and Biases in Healthcare
    Hierarchy: What Is It, How Do We Measure It, and Why Does It Matter?
    Tools for Understanding Complex Systems
    Conclusions
    References

    Chapter 6
    How Teams Work
    Types of Teams
    What Do Teams Need to Succeed?
    Poorly Functioning Teams in Healthcare
    Teams in Aviation and the Birth of Crew Resource Management (CRM)
    CRM in Healthcare
    Leading Teams Through Change
    References

    Chapter 7
    Leadership and Culture Change
    Leading Change Is Difficult
    Where to Start
    What Is Implementation Science?
    Implementation Science Frameworks
    Integrating Implementation Science Frameworks for the Purpose of Change Management 
    References 

    Chapter 8
    Standard Quality Improvement Tools and Techniques
    Introduction
    Preventing Adverse Events and Improving Patient Safety
    Identifying Patient Safety Events
    Root Cause Analysis (RCA)
    Failure Mode Effects (and Criticality) Analysis (FMEA and FMECA)
    Safety I and Safety II
    Process Improvement and Quality Improvement
    References

    Chapter 9
    Lean Improvement Techniques in Healthcare
    A Brief History of Lean
    The Rules of Lean
    A Concrete Definition of the Ideal
    The 8 Wastes
    Tools from Lean
    Summary
    References

    Chapter 10
    Partnering with Community, Professional, and Policy Organizations
    Introduction
    How Health Is Created
    Key Stakeholders in Shaping Health
    Engaging with Local Public Health Agencies
    Approaches to Successful Partnerships
    Concluding Thoughts
    Acknowledgments
    References

    PART III: SEEING THE TRUTH—ANALYTICS IN HEALTHCARE

    Chapter 11
    Data in Healthcare
    Part 1: Fundamental Issues in Healthcare Data
    Part 2: The Importance of Understanding Data Lineage, and How This Leads Mature Organizations to Both Informal and Formal Data Governance
    Part 3: Basic Understanding of Relational Database Structures
    Part 4: Review of Common Approaches to Actually Accessing Healthcare Data
    Conclusion
    References

    Chapter 12
    Measuring Quality and Safety
    Quality Measurement Frameworks
    What Are You Trying to Achieve? Improvement, Comparison, or Accountability
    What Makes a Good Measure?
    Challenges
    Common Measure Sets and Major Pay-For-Performance Programs
    References

    Chapter 13
    Overview of Analytic Techniques and Common Pitfalls
    Dinosaur Footprints and What They Tell Us About Data Analysis in Healthcare
    The Four Horsemen of Mistaken Conclusions
    The Critical Importance of Missing Data
    The Shape of Data: Categories of Data and Why They Matter
    Overview of Analytic Methods
    References

    Chapter 14
    Everyday Analytics
    Summarizing Your Data
    Displaying Data
    Outcomes Over Time, Part I – Run Charts
    How to Tell if Two Groups Are Different: Univariable Tests of Difference and Measures of Comparison
    Outcomes Over Time, Part 2—Statistical Process Control (SPC) Charts
    Everyday Analytics
    References

    Chapter 15
    Survey-Based Data
    Introduction
    Perhaps the Most Important Thing Youll Learn in This Chapter
    What Are Some of the Main Purposes of Surveys?
    Overview of Conducting a Survey
    Some Pitfalls
    References

    Chapter 16
    Predictive Modeling 1.0 and 2.0
    What to Expect in This Chapter
    Predictive Modeling 1.0
    Predictive Modeling 2.0
    Taking Predictions to the Next Level
    References

    Chapter 17
    Predictive Modeling 3.0: Machine Learning
    Definitions: What Is Artificial Intelligence? Machine Learning?
    A Brief History of Artificial Intelligence
    Translating Epidemiology to Machine Learning
    Categories of Machine Learning Used in Healthcare
    Pitfalls in Using Machine Learning in Healthcare
    The Future
    References

    Chapter 18
    What Everyone Should Know About Risk Adjustment
    What Is Risk Adjustment, and Why We Should Care?
    What Risk Adjustments Are Available, and How Should We Assess Them?
    Examples of Risk Adjustment Gone Awry
    Using Risk Adjustment in Local Healthcare Delivery Science
    References

    Chapter 19
    Modeling Patient Flow: Understanding Throughput and Census
    Why Does Understanding Patient Flow Matter?
    Understanding Patient Flow Conceptually
    Analytical Approaches to Understanding Patient Flow
    Summary
    References

    Chapter 20
    Program Evaluation
    Causal Methods
    Quasi-Experimental Designs—Causal Inference in Observational Data
    Evaluations in the Real World
    References

    Chapter 21
    How to Embed Healthcare Delivery Science Into Your Health System
    Introduction
    How Do I Join (or Build) a Community of Healthcare Delivery Science?
    How to Embed Healthcare Delivery Science in Your Health System
    Summary
    Reference

    Index

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