Lecture 5: PROPENSITY SCORE METHODS
Peter Austin
Senior Scientist, Institute for Clinical Evaluative Sciences.
Departments of Public Health Sciences and Health Policy, Management and
Evaluation, UToronto
The propensity score is defined as a subject's probability of exposure
to a given treatment conditional on their observed characteristics. Propensity
score methods are increasingly being used to make causal inferences about
treatment effects using observational or non-randomized data. In this
session we will describe the propensity score, illustrate how to develop
a good propensity score model, methods for determining the performance
of the derived propensity score model, and different statistical methods
for using the propensity score method to estimate treatment effects.
Instructor:
Peter Austin is a senior scientist at the Institute for Clinical Evaluative
Sciences and an Associate Professor in the departments of Public Health
Sciences and Health Policy, Management and Evaluation at the University
of Toronto. His research is supported by the Natural Sciences and Engineering
Research Council (NSERC) and the Canadian Institutes of Health Research
(CIHR). His research interests include propensity score methods; hierarchical
and multilevel models; Bayesian methods in health care research; flexible
regression methods in medical research. He has published several research
articles on propensity score methods in the statistical literature.
Contact
Peter
Austin, PhD
Senior Scientist, Institute for Clinical Evaluative Sciences.
Associate Professor, Departments of Public Health Sciences and Health
Policy, Management and Evaluation, University of Toronto.
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