fixmodel_cont {NCC} | R Documentation |
Frequentist linear regression model analysis for continuous data adjusting for periods
Description
This function performs linear regression taking into account all trial data until the arm under study leaves the trial and adjusting for periods as factors.
Usage
fixmodel_cont(data, arm, alpha = 0.025, ncc = TRUE, check = TRUE, ...)
Arguments
data |
Data frame with trial data, e.g. result from the |
arm |
Integer. Index of the treatment arm under study to perform inference on (vector of length 1). This arm is compared to the control group. |
alpha |
Double. Significance level (one-sided). Default=0.025. |
ncc |
Logical. Indicates whether to include non-concurrent data into the analysis. Default=TRUE. |
check |
Logical. Indicates whether the input parameters should be checked by the function. Default=TRUE, unless the function is called by a simulation function, where the default is FALSE. |
... |
Further arguments passed by wrapper functions when running simulations. |
Details
The model-based analysis adjusts for the time effect by including the factor period (defined as a time interval bounded by any treatment arm entering or leaving the platform). The time is then modelled as a step-function with jumps at the beginning of each period.
Denoting by the continuous response for patient
, by
the arm patient
was allocated to, and by
the treatment arm under evaluation, the regression model is given by:
where is the response in the control arm in the first period;
represents the effect of treatment
compared to control for
, where
is the set of treatments
that were active in the trial during periods prior or up to the time when the investigated treatment arm left the trial;
indicates the stepwise period effect between periods 1 and
(
), where
denotes the period, in which the investigated treatment arm left the trial.
If the data consists of only one period (e.g. in case of a multi-arm trial), the period in not used as covariate.
Value
List containing the following elements regarding the results of comparing arm
to control:
-
p-val
- p-value (one-sided) -
treat_effect
- estimated treatment effect in terms of the difference in means -
lower_ci
- lower limit of the (1-2*alpha
)*100% confidence interval -
upper_ci
- upper limit of the (1-2*alpha
)*100% confidence interval -
reject_h0
- indicator of whether the null hypothesis was rejected or not (p_val
<alpha
) -
model
- fitted model
Author(s)
Pavla Krotka
References
On model-based time trend adjustments in platform trials with non-concurrent controls. Bofill Roig, M., Krotka, P., et al. BMC Medical Research Methodology 22.1 (2022): 1-16.
Examples
trial_data <- datasim_cont(num_arms = 3, n_arm = 100, d = c(0, 100, 250),
theta = rep(0.25, 3), lambda = rep(0.15, 4), sigma = 1, trend = "linear")
fixmodel_cont(data = trial_data, arm = 3)