Options
Quasi-experimental study designs series—paper 7: assessing the assumptions
Date Issued
2017
Author(s)
Bärnighausen, Till
Oldenburg, Catherine
Tugwell, Peter
Ebert, Cara
Barreto, Mauricio
Djimeu, Eric
Haber, Noah
Waddington, Hugh
Rockers, Peter
Sianesi, Barbara
Bor, Jacob
Fink, Günther
Valentine, Jeffrey
Tanner, Jeffrey
Stanley, Tom
Sierra, Eduardo
Tchetgen, Eric Tchetgen
Atun, Rifat
DOI
10.1016/j.jclinepi.2017.02.017
Abstract
Quasi-experimental designs are gaining popularity in epidemiology and health systems research—in particular for the evaluation of health care practice, programs, and policy—because they allow strong causal inferences without randomized controlled experiments. We describe the concepts underlying five important quasi-experimental designs: Instrumental Variables, Regression Discontinuity, Interrupted Time Series, Fixed Effects, and Difference-in-Differences designs. We illustrate each of the designs with an example from health research. We then describe the assumptions required for each of the designs to ensure valid causal inference and discuss the tests available to examine the assumptions.
File(s)
No Thumbnail Available
Name
2017_J Clin Epidemiol_vollmer_authors post-print.pdf
Size
580.43 KB
Checksum (MD5)
07997f1bee1a23e67bb1667887715f74