Simple Optimal Weighting of Cases and Controls in Case-Control Studies
Researchers of uncommon diseases are often interested in assessing potential risk factors. Given the low incidence of disease, these studies are frequently case-control in design. Such a design allows a sufficient number of cases to be obtained without extensive sampling and can increase efficiency; however, these case-control samples are then biased since the proportion of cases in the sample is not the same as the population of interest. Methods for analyzing case-control studies have focused on utilizing logistic regression models that provide conditional and not causal estimates of the odds ratio. This article will demonstrate the use of the prevalence probability and case-control weighted targeted maximum likelihood estimation (MLE), as described by van der Laan (2008), in order to obtain causal estimates of the parameters of interest (risk difference, relative risk, and odds ratio). It is meant to be used as a guide for researchers, with step-by-step directions to implement this methodology. We will also present simulation studies that show the improved efficiency of the case-control weighted targeted MLE compared to other techniques.
Year of publication: |
2008
|
---|---|
Authors: | Sherri, Rose ; van der Laan Mark J. |
Published in: |
The International Journal of Biostatistics. - De Gruyter, ISSN 1557-4679. - Vol. 4.2008, 1, p. 1-24
|
Publisher: |
De Gruyter |
Saved in:
Saved in favorites
Similar items by person
-
A Targeted Maximum Likelihood Estimator for Two-Stage Designs
Sherri, Rose, (2011)
-
Why Match? Investigating Matched Case-Control Study Designs with Causal Effect Estimation
Sherri, Rose, (2009)
-
Estimating the Effect of a Community-Based Intervention with Two Communities
van der Laan Mark J., (2013)
- More ...