Real World Health Care Data Analysis: Causal Methods and Implementation Using SAS

  • 8h 20m
  • Douglas Faries, et al.
  • SAS Institute
  • 2020

Discover best practices for real world data research with SAS code and examples

Real world health care data is common and growing in use with sources such as observational studies, patient registries, electronic medical record databases, insurance healthcare claims databases, as well as data from pragmatic trials. This data serves as the basis for the growing use of real world evidence in medical decision-making. However, the data itself is not evidence. Analytical methods must be used to turn real world data into valid and meaningful evidence. Real World Health Care Data Analysis: Causal Methods and Implementation Using SAS brings together best practices for causal comparative effectiveness analyses based on real world data in a single location and provides SAS code and examples to make the analyses relatively easy and efficient.

The book focuses on analytic methods adjusted for time-independent confounding, which are useful when comparing the effect of different potential interventions on some outcome of interest when there is no randomization. These methods include:

  • propensity score matching, stratification methods, weighting methods, regression methods, and approaches that combine and average across these methods
  • methods for comparing two interventions as well as comparisons between three or more interventions
  • algorithms for personalized medicine
  • sensitivity analyses for unmeasured confounding

In this Book

  • About the Book
  • Introduction to Observational and Real World Evidence Research
  • Causal Inference and Comparative Effectiveness: A Foundation
  • Data Examples and Simulations
  • The Propensity Score
  • Before You Analyze – Feasibility Assessment
  • Matching Methods for Estimating Causal Treatment Effects
  • Stratification for Estimating Causal Treatment Effects
  • Inverse Weighting and Balancing Algorithms for Estimating Causal Treatment Effects
  • Putting it All Together—Model Averaging
  • Generalized Propensity Score Analyses (> 2 Treatments)
  • Marginal Structural Models with Inverse Probability Weighting
  • A Target Trial Approach with Dynamic Treatment Regimes and Replicates Analyses
  • Evaluating the Impact of Unmeasured Confounding in Observational Research
  • Using Real World Data to Examine the Generalizability of Randomized Trials
  • Personalized Medicine, Machine Learning, and Real World Data
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