tip_with_binary {tipr} | R Documentation |
Tip a result with a binary confounder.
Description
Choose two of the following three to specify, and the third will be estimated:
-
exposed_confounder_prev
-
unexposed_confounder_prev
-
confounder_outcome_effect
Alternatively, specify all three and the function will return the number of unmeasured confounders specified needed to tip the analysis.
Usage
tip_with_binary(
effect_observed,
exposed_confounder_prev = NULL,
unexposed_confounder_prev = NULL,
confounder_outcome_effect = NULL,
verbose = getOption("tipr.verbose", TRUE),
correction_factor = "none"
)
tip_b(
effect_observed,
exposed_confounder_prev = NULL,
unexposed_confounder_prev = NULL,
confounder_outcome_effect = NULL,
verbose = getOption("tipr.verbose", TRUE),
correction_factor = "none"
)
Arguments
effect_observed |
Numeric positive value. Observed exposure - outcome effect (assumed to be the exponentiated coefficient, so a risk ratio, odds ratio, or hazard ratio). This can be the point estimate, lower confidence bound, or upper confidence bound. |
exposed_confounder_prev |
Numeric between 0 and 1. Estimated prevalence of the unmeasured confounder in the exposed population |
unexposed_confounder_prev |
Numeric between 0 and 1. Estimated prevalence of the unmeasured confounder in the unexposed population |
confounder_outcome_effect |
Numeric positive value. Estimated relationship between the unmeasured confounder and the outcome |
verbose |
Logical. Indicates whether to print informative message.
Default: |
correction_factor |
Character string. Options are "none", "hr", "or". For common outcomes (>15%), the odds ratio or hazard ratio is not a good estimate for the risk ratio. In these cases, we can apply a correction factor. If you are supplying a hazard ratio for a common outcome, set this to "hr"; if you are supplying an odds ratio for a common outcome, set this to "or"; if you are supplying a risk ratio or your outcome is rare, set this to "none" (default). |
Details
tip_b()
is an alias for tip_with_binary()
.
Examples
## to estimate the relationship between an unmeasured confounder and outcome
## needed to tip analysis
tip_with_binary(1.2, exposed_confounder_prev = 0.5, unexposed_confounder_prev = 0)
## to estimate the number of unmeasured confounders specified needed to tip
## the analysis
tip_with_binary(1.2,
exposed_confounder_prev = 0.5,
unexposed_confounder_prev = 0,
confounder_outcome_effect = 1.1)
## Example with broom
if (requireNamespace("broom", quietly = TRUE) &&
requireNamespace("dplyr", quietly = TRUE)) {
glm(am ~ mpg, data = mtcars, family = "binomial") %>%
broom::tidy(conf.int = TRUE, exponentiate = TRUE) %>%
dplyr::filter(term == "mpg") %>%
dplyr::pull(conf.low) %>%
tip_with_binary(exposed_confounder_prev = 1, confounder_outcome_effect = 1.15)
}