Usage
fit_logistic(
data,
variables = list(response = "Response", arm = "ARMCD", covariates = NULL, interaction =
NULL, strata = NULL),
response_definition = "response"
)Arguments
- data
(
data.frame)
the data frame on which the model was fit.- variables
(named
listofstring)
list of additional analysis variables.- response_definition
(
string)
the definition of what an event is in terms ofresponse. This will be used when fitting the (conditional) logistic regression model on the left hand side of the formula.
Model Specification
The variables list needs to include the following elements:
arm: Treatment arm variable name.response: The response arm variable name. Usually this is a 0/1 variable.covariates: This is eitherNULL(no covariates) or a character vector of covariate variable names.interaction: This is eitherNULL(no interaction) or a string of a single covariate variable name already included incovariates. Then the interaction with the treatment arm is included in the model.
Examples
library(dplyr)
adrs_f <- tern_ex_adrs %>%
filter(PARAMCD == "BESRSPI") %>%
filter(RACE %in% c("ASIAN", "WHITE", "BLACK OR AFRICAN AMERICAN")) %>%
mutate(
Response = case_when(AVALC %in% c("PR", "CR") ~ 1, TRUE ~ 0),
RACE = factor(RACE),
SEX = factor(SEX)
)
formatters::var_labels(adrs_f) <- c(formatters::var_labels(tern_ex_adrs), Response = "Response")
mod1 <- fit_logistic(
data = adrs_f,
variables = list(
response = "Response",
arm = "ARMCD",
covariates = c("AGE", "RACE")
)
)
#> Warning: glm.fit: fitted probabilities numerically 0 or 1 occurred
mod2 <- fit_logistic(
data = adrs_f,
variables = list(
response = "Response",
arm = "ARMCD",
covariates = c("AGE", "RACE"),
interaction = "AGE"
)
)
#> Warning: glm.fit: fitted probabilities numerically 0 or 1 occurred