sensitivityCalibration:A Calibrated Sensitivity Analysis for Matched Observational
Studies
Implements the calibrated sensitivity analysis approach for matched observational studies. Our sensitivity analysis
framework views matched sets as drawn from a super-population.
The unmeasured confounder is modeled as a random variable. We
combine matching and model-based covariate-adjustment methods
to estimate the treatment effect. The hypothesized unmeasured
confounder enters the picture as a missing covariate. We adopt
a state-of-art Expectation Maximization (EM) algorithm to
handle this missing covariate problem in generalized linear
models (GLMs). As our method also estimates the effect of each
observed covariate on the outcome and treatment assignment, we
are able to calibrate the unmeasured confounder to observed
covariates. Zhang, B., Small, D. S. (2018). <arXiv:1812.00215>.