adjust_coef_with_binary() now assumes the coefficient is from a linear model rather than loglinear. Use loglinear = TRUE to get the old behavior. (#12, @malcolmbarrett)adjust_coef_with_binary function had the old parameter names (exposed_p and unexposed_p). These were changed to match the other new updates from version 1.0.0 to now be exposed_confounder_prev and unexposed_confounder_prev.Breaking changes. The names of several arguments were changed for increased clarity:
effect -> effect_observedoutcome_association -> confounder_outcome_effectsmd -> exposure_confounder_effectexposed_p -> exposed_confounder_prevunexposed_p -> unexposed_confounder_prevexposure_r2 -> confounder_exposure_r2outcome_r2 -> confounder_outcome_r2
Added two new example datasets: exdata_continuous and exdata_rr
adjusted_effect -> effect_adjusted)*_with_continuous() (long form of, the function names, the default unmeasured confounder is Normally distributed)tip_lm() to tip_coef().lm_tip() to tip_lm()tip_* functions into hazard ratio, odds ratio, and relative risktip_coef_with_r2(), adjust_coef_with_r2(), and r_value()lm_tip()tip() and tip_with_binary(). The parameter names are more self-explanatory.broom package.