Adjust an observed coefficient from a regression model with a binary confounder
adjust_coef_with_binary(
effect_observed,
exposed_confounder_prev,
unexposed_confounder_prev,
confounder_outcome_effect,
loglinear = FALSE,
verbose = getOption("tipr.verbose", TRUE)
)
Data frame.
Numeric. Observed exposure - outcome effect from a loglinear model. This can be the beta coefficient, the lower confidence bound of the beta coefficient, or the upper confidence bound of the beta coefficient.
Numeric between 0 and 1. Estimated prevalence of the unmeasured confounder in the exposed population
Numeric between 0 and 1. Estimated prevalence of the unmeasured confounder in the unexposed population
Numeric. Estimated relationship between the unmeasured confounder and the outcome.
Logical. Calculate the adjusted coefficient from a loglinear
model instead of a linear model (the default). When loglinear = FALSE
,
adjust_coef_with_binary()
is equivalent to adjust_coef()
where
exposure_confounder_effect
is the difference in prevalences.
Logical. Indicates whether to print informative message.
Default: TRUE
adjust_coef_with_binary(1.1, 0.5, 0.3, 1.3)
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