Display regression model results in table
This function takes a regression model object and returns a formatted table that is publication-ready. The function is highly customizable allowing the user to obtain a bespoke summary table of the regression model results. Review the tbl_regression vignette for detailed examples.
tbl_regression(x, ...) ## Default S3 method: tbl_regression( x, label = NULL, exponentiate = FALSE, include = everything(), show_single_row = NULL, conf.level = NULL, intercept = FALSE, estimate_fun = NULL, pvalue_fun = NULL, tidy_fun = NULL, add_estimate_to_reference_rows = FALSE, show_yesno = NULL, exclude = NULL, ... )
x |
Regression model object |
... |
Not used |
label |
List of formulas specifying variables labels,
e.g. |
exponentiate |
Logical indicating whether to exponentiate the
coefficient estimates. Default is |
include |
Variables to include in output. Input may be a vector of
quoted variable names, unquoted variable names, or tidyselect select helper
functions. Default is |
show_single_row |
By default categorical variables are printed on multiple rows. If a variable is dichotomous (e.g. Yes/No) and you wish to print the regression coefficient on a single row, include the variable name(s) here–quoted and unquoted variable name accepted. |
conf.level |
Must be strictly greater than 0 and less than 1. Defaults to 0.95, which corresponds to a 95 percent confidence interval. |
intercept |
Logical argument indicating whether to include the intercept
in the output. Default is |
estimate_fun |
Function to round and format coefficient estimates. Default is style_sigfig when the coefficients are not transformed, and style_ratio when the coefficients have been exponentiated. |
pvalue_fun |
Function to round and format p-values.
Default is style_pvalue.
The function must have a numeric vector input (the numeric, exact p-value),
and return a string that is the rounded/formatted p-value (e.g.
|
tidy_fun |
Option to specify a particular tidier function if the
model. Default is to use |
add_estimate_to_reference_rows |
add a reference value. Default is FALSE |
show_yesno |
DEPRECATED |
exclude |
DEPRECATED |
A tbl_regression
object
The default method for tbl_regression()
model summary uses broom::tidy(x)
to perform the initial tidying of the model object. There are, however,
a few models that use modifications.
"survreg"
: The scale parameter is removed, broom::tidy(x) %>% dplyr::filter(term != "Log(scale)")
"multinom"
: This multinomial outcome is complex, with one line per covariate per outcome (less the reference group)
"gam"
: Uses the internal tidier tidy_gam()
to print both parametric and smooth terms.
"lmerMod"
, "glmerMod"
, "glmmTMB"
, "glmmadmb"
, "stanreg"
, "brmsfit"
: These mixed effects
models use broom.mixed::tidy(x, effects = "fixed")
. Specify tidy_fun = broom.mixed::tidy
to print the random components.
The N reported in the output is the number of observations
in the data frame model.frame(x)
. Depending on the model input, this N
may represent different quantities. In most cases, it is the number of people or
units in your model. Here are some common exceptions.
Survival regression models including time dependent covariates.
Random- or mixed-effects regression models with clustered data.
GEE regression models with clustered data.
This list is not exhaustive, and care should be taken for each number reported.
Example 1
Example 2
Example 3
Daniel D. Sjoberg
See tbl_regression vignette for detailed examples
Other tbl_regression tools:
add_global_p()
,
add_q()
,
bold_italicize_labels_levels
,
combine_terms()
,
inline_text.tbl_regression()
,
modify
,
tbl_merge()
,
tbl_stack()
# Example 1 ---------------------------------- library(survival) tbl_regression_ex1 <- coxph(Surv(ttdeath, death) ~ age + marker, trial) %>% tbl_regression(exponentiate = TRUE) # Example 2 ---------------------------------- tbl_regression_ex2 <- glm(response ~ age + grade, trial, family = binomial(link = "logit")) %>% tbl_regression(exponentiate = TRUE) # Example 3 ---------------------------------- suppressMessages(library(lme4)) tbl_regression_ex3 <- glmer(am ~ hp + (1 | gear), mtcars, family = binomial) %>% tbl_regression(exponentiate = TRUE)
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