Predict.Treat.ContCont {EffectTreat} | R Documentation |
Compute the predicted treatment effect on the true endpoint of a patient based on his or her observed pretreatment predictor value in the continuous-continuous setting
Description
This function computes the predicted \Delta T_j
of a patient based on the pretreatment value S_j
of a patient in the continuous-continuous setting.
Usage
Predict.Treat.ContCont(x, S, Beta, SS, mu_S)
Arguments
x |
An object of class |
S |
The observed pretreatment value |
Beta |
The estimated treatment effect on the true endpoint (in the validation sample). |
SS |
The estimated variance of the pretreatment predictor endpoint. |
mu_S |
The estimated mean of the pretreatment predictor (in the validation sample). |
Value
An object of class PCA.Predict.Treat.ContCont
with components,
Pred_T |
The predicted |
Var_Delta.T |
The variance |
T0T1 |
The correlation between the counterfactuals |
PCA |
The vector of |
Var_Delta.T_S |
The variance |
Author(s)
Wim Van der Elst, Ariel Alonso, & Geert Molenberghs
References
Alonso, A., Van der Elst, W., & Molenberghs, G. (submitted). Validating predictors of therapeutic success: a causal inference approach.
See Also
Examples
# Generate the vector of PCA.ContCont values when rho_T0S=.3, rho_T1S=.9,
# sigma_T0T0=2, sigma_T1T1=2,sigma_SS=2, and the grid of values {-1, -.99,
# ..., 1} is considered for the correlations between T0 and T1:
PCA <- PCA.ContCont(T0S=.3, T1S=.9, T0T0=2, T1T1=2, SS=2,
T0T1=seq(-1, 1, by=.01))
# Obtain the predicted value T for a patient who scores S = 10, using beta=5,
# SS=2, mu_S=4
Predict <- Predict.Treat.ContCont(x=PCA, S=10, Beta=5, SS=2, mu_S=4)
# examine the results
summary(Predict)
# plot Delta_T_j given S_T, for the mean value of the valid rho_T0T1
plot(Predict, Mean.T0T1=TRUE, Median.T0T1=FALSE)