trial_msm | R Documentation |
trial_msm(
data,
outcome_cov = ~1,
estimand_type = c("ITT", "PP", "As-Treated"),
model_var = NULL,
first_followup = NA,
last_followup = NA,
analysis_weights = c("asis", "unweighted", "p99", "weight_limits"),
weight_limits = c(0, Inf),
include_followup_time = ~followup_time + I(followup_time^2),
include_trial_period = ~trial_period + I(trial_period^2),
where_case = NA,
glm_function = c("glm", "parglm"),
use_sample_weights = TRUE,
quiet = FALSE,
...
)
data |
A |
outcome_cov |
A RHS formula with baseline covariates to be adjusted for in the marginal structural model for the
emulated trials. Note that if a time-varying covariate is specified in |
estimand_type |
Specify the estimand for the causal analyses in the sequence of emulated trials. |
model_var |
Treatment variables to be included in the marginal structural model for the emulated trials.
|
first_followup |
First follow-up time/visit in the trials to be included in the marginal structural model for the outcome event. |
last_followup |
Last follow-up time/visit in the trials to be included in the marginal structural model for the outcome event. |
analysis_weights |
Choose which type of weights to be used for fitting the marginal structural model for the outcome event.
|
weight_limits |
Lower and upper limits to truncate weights, given as |
include_followup_time |
The model to include the follow up time/visit of the trial ( |
include_trial_period |
The model to include the trial period ( |
where_case |
Define conditions using variables specified in |
glm_function |
Specify which glm function to use for the marginal structural model from the |
use_sample_weights |
Use case-control sampling weights in addition to inverse probability weights for treatment
and censoring. |
quiet |
Suppress the printing of progress messages and summaries of the fitted models. |
... |
Additional arguments passed to |
Apply a weighted pooled logistic regression to fit the marginal structural model for the sequence of emulated trials and calculates the robust covariance matrix of parameter using the sandwich estimator.
The model formula is constructed by combining the arguments outcome_cov
, model_var
,
include_followup_time
, and include_trial_period
.
Object of class TE_msm
containing
a glm
object
a list containing a summary table of estimated regression coefficients and the robust covariance matrix
a list contain the parameters used to prepare and fit the model
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