LocalControl - Nonparametric Methods for Generating High Quality Comparative
Effectiveness Evidence
Implements novel nonparametric approaches to address
biases and confounding when comparing treatments or exposures
in observational studies of outcomes. While designed and
appropriate for use in studies involving medicine and the life
sciences, the package can be used in other situations involving
outcomes with multiple confounders. The package implements a
family of methods for non-parametric bias correction when
comparing treatments in observational studies, including
survival analysis settings, where competing risks and/or
censoring may be present. The approach extends to
bias-corrected personalized predictions of treatment outcome
differences, and analysis of heterogeneity of treatment
effect-sizes across patient subgroups. For further details,
please see: Lauve NR, Nelson SJ, Young SS, Obenchain RL,
Lambert CG. LocalControl: An R Package for Comparative Safety
and Effectiveness Research. Journal of Statistical Software.
2020. p. 1–32. Available from <doi:10.18637/jss.v096.i04>.