tmle:Targeted Maximum Likelihood Estimation
Targeted maximum likelihood estimation of point treatment effects (Targeted Maximum Likelihood Learning, The
International Journal of Biostatistics, 2(1), 2006. This
version automatically estimates the additive treatment effect
among the treated (ATT) and among the controls (ATC). The
tmle() function calculates the adjusted marginal difference in
mean outcome associated with a binary point treatment, for
continuous or binary outcomes. Relative risk and odds ratio
estimates are also reported for binary outcomes. Missingness in
the outcome is allowed, but not in treatment assignment or
baseline covariate values. The population mean is calculated
when there is missingness, and no variation in the treatment
assignment. The tmleMSM() function estimates the parameters of
a marginal structural model for a binary point treatment
effect. Effect estimation stratified by a binary mediating
variable is also available. An ID argument can be used to
identify repeated measures. Default settings call
'SuperLearner' to estimate the Q and g portions of the
likelihood, unless values or a user-supplied regression
function are passed in as arguments.