calibrate_external {hdnom} | R Documentation |
Externally calibrate high-dimensional Cox models
Description
Externally calibrate high-dimensional Cox models
Usage
calibrate_external(
object,
x,
time,
event,
x_new,
time_new,
event_new,
pred.at,
ngroup = 5
)
Arguments
object |
Model object fitted by |
x |
Matrix of training data used for fitting the model. |
time |
Survival time of the training data.
Must be of the same length with the number of rows as |
event |
Status indicator of the training data,
normally 0 = alive, 1 = dead.
Must be of the same length with the number of rows as |
x_new |
Matrix of predictors for the external validation data. |
time_new |
Survival time of the external validation data.
Must be of the same length with the number of rows as |
event_new |
Status indicator of the external validation data,
normally 0 = alive, 1 = dead.
Must be of the same length with the number of rows as |
pred.at |
Time point at which external calibration should take place. |
ngroup |
Number of groups to be formed for external calibration. |
Examples
library("survival")
# Load imputed SMART data
data(smart)
# Use the first 1000 samples as training data
# (the data used for internal validation)
x <- as.matrix(smart[, -c(1, 2)])[1:1000, ]
time <- smart$TEVENT[1:1000]
event <- smart$EVENT[1:1000]
# Take the next 1000 samples as external calibration data
# In practice, usually use data collected in other studies
x_new <- as.matrix(smart[, -c(1, 2)])[1001:2000, ]
time_new <- smart$TEVENT[1001:2000]
event_new <- smart$EVENT[1001:2000]
# Fit Cox model with lasso penalty
fit <- fit_lasso(
x, Surv(time, event),
nfolds = 5, rule = "lambda.1se", seed = 11
)
# External calibration
cal.ext <- calibrate_external(
fit, x, time, event,
x_new, time_new, event_new,
pred.at = 365 * 5, ngroup = 5
)
print(cal.ext)
summary(cal.ext)
plot(cal.ext, xlim = c(0.6, 1), ylim = c(0.6, 1))
# # Test fused lasso, MCP, and Snet models
# data(smart)
# # Use first 500 samples as training data
# # (the data used for internal validation)
# x <- as.matrix(smart[, -c(1, 2)])[1:500, ]
# time <- smart$TEVENT[1:500]
# event <- smart$EVENT[1:500]
#
# # Take 1000 samples as external validation data.
# # In practice, usually use data collected in other studies.
# x_new <- as.matrix(smart[, -c(1, 2)])[1001:2000, ]
# time_new <- smart$TEVENT[1001:2000]
# event_new <- smart$EVENT[1001:2000]
#
# flassofit <- fit_flasso(x, survival::Surv(time, event), nfolds = 5, seed = 11)
# scadfit <- fit_mcp(x, survival::Surv(time, event), nfolds = 5, seed = 11)
# mnetfit <- fit_snet(x, survival::Surv(time, event), nfolds = 5, seed = 11)
#
# cal.ext1 <- calibrate_external(
# flassofit, x, time, event,
# x_new, time_new, event_new,
# pred.at = 365 * 5, ngroup = 5)
#
# cal.ext2 <- calibrate_external(
# scadfit, x, time, event,
# x_new, time_new, event_new,
# pred.at = 365 * 5, ngroup = 5)
#
# cal.ext3 <- calibrate_external(
# mnetfit, x, time, event,
# x_new, time_new, event_new,
# pred.at = 365 * 5, ngroup = 5)
#
# print(cal.ext1)
# summary(cal.ext1)
# plot(cal.ext1)
#
# print(cal.ext2)
# summary(cal.ext2)
# plot(cal.ext2)
#
# print(cal.ext3)
# summary(cal.ext3)
# plot(cal.ext3)