poolmodel_cont {NCC}R Documentation

Pooled analysis for continuous data

Description

This function performs pooled analysis (naively pooling concurrent and non-concurrent controls without adjustment) using a linear model.

Usage

poolmodel_cont(data, arm, alpha = 0.025, check = TRUE, ...)

Arguments

data

Data frame with trial data, e.g. result from the datasim_cont() function. Must contain columns named 'treatment', 'response' and 'period'.

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.

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 pooled analysis takes into account only the data from the evaluated experimental treatment arm and the whole control arm and uses a linear regression model to evaluate the given treatment arm. Denoting by y_j the continuous response for patient j, by k_j the arm patient j was allocated to, and by M the treatment arm under evaluation, the regression model is given by:

E(y_j) = \eta_0 + \theta_M \cdot I(k_j=M)

where \eta_0 is the response in the control arm; \theta_M represents the treatment effect of treatment M as compared to control.

Value

List containing the following elements regarding the results of comparing arm to control:

Author(s)

Pavla Krotka

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")

poolmodel_cont(data = trial_data, arm = 3)


[Package NCC version 1.0 Index]