Comparison of Logistic Regression versus Propensity Score When the Number of Events Is Low and There Are Multiple Confounders
Pontificia Universidad Javeriana
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Abstract
The aim of this study was to use Monte Carlo simulations to compare logistic regression with propensity scores in terms of bias, precision, empirical coverage probability, empirical power, and robustness when the number of events is low relative to the number of confounders. The authors simulated a cohort study and performed 252,480 trials. In the logistic regression, the bias decreased as the number of events per confounder increased. In the propensity score, the bias decreased as the strength of the association of the exposure with the outcome increased. Propensity scores produced estimates that were less biased, more robust, and more precise than the logistic regression estimates when there were seven or…
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Authors
1Topics & keywords
Topics
Keywords
- Propensity score matching
- Confounding
- Logistic regression
- Statistics
- Medicine
- Regression
- Odds ratio
- Regression analysis
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