Nothing
#' Print calibration results
#'
#' Print calibration results
#'
#' @param x An object returned by \code{\link{calibrate}}.
#' @param ... Other parameters (not used).
#'
#' @method print hdnom.calibrate
#'
#' @export
#'
#' @examples
#' NULL
print.hdnom.calibrate <- function(x, ...) {
method <- setdiff(class(x), "hdnom.calibrate")
switch(method,
glmnet.calibrate.fitting = {
cat("High-Dimensional Cox Model Calibration Object\n")
cat("Random seed:", attr(x, "seed"), "\n")
cat("Calibration method: fitting\n")
cat("Model type:", attr(x, "model.type"), "\n")
cat("glmnet model alpha:", attr(x, "alpha"), "\n")
cat("glmnet model lambda:", attr(x, "lambda"), "\n")
if (is.null(attr(x, "pen.factor"))) {
cat("glmnet model penalty factor: not specified\n")
} else {
cat("glmnet model penalty factor: specified\n")
}
cat("Calibration time point:", attr(x, "pred.at"), "\n")
cat("Number of groups formed for calibration:", attr(x, "ngroup"), "\n")
},
glmnet.calibrate.bootstrap = {
cat("High-Dimensional Cox Model Calibration Object\n")
cat("Random seed:", attr(x, "seed"), "\n")
cat("Calibration method: bootstrap\n")
cat("Bootstrap samples:", attr(x, "boot.times"), "\n")
cat("Model type:", attr(x, "model.type"), "\n")
cat("glmnet model alpha:", attr(x, "alpha"), "\n")
cat("glmnet model lambda:", attr(x, "lambda"), "\n")
if (is.null(attr(x, "pen.factor"))) {
cat("glmnet model penalty factor: not specified\n")
} else {
cat("glmnet model penalty factor: specified\n")
}
cat("Calibration time point:", attr(x, "pred.at"), "\n")
cat("Number of groups formed for calibration:", attr(x, "ngroup"), "\n")
},
glmnet.calibrate.cv = {
cat("High-Dimensional Cox Model Calibration Object\n")
cat("Random seed:", attr(x, "seed"), "\n")
cat("Calibration method: k-fold cross-validation\n")
cat("Cross-validation folds:", attr(x, "nfolds"), "\n")
cat("Model type:", attr(x, "model.type"), "\n")
cat("glmnet model alpha:", attr(x, "alpha"), "\n")
cat("glmnet model lambda:", attr(x, "lambda"), "\n")
if (is.null(attr(x, "pen.factor"))) {
cat("glmnet model penalty factor: not specified\n")
} else {
cat("glmnet model penalty factor: specified\n")
}
cat("Calibration time point:", attr(x, "pred.at"), "\n")
cat("Number of groups formed for calibration:", attr(x, "ngroup"), "\n")
},
glmnet.calibrate.repeated.cv = {
cat("High-Dimensional Cox Model Calibration Object\n")
cat("Random seed:", attr(x, "seed"), "\n")
cat("Calibration method: repeated cross-validation\n")
cat("Cross-validation folds:", attr(x, "nfolds"), "\n")
cat("Cross-validation repeated times:", attr(x, "rep.times"), "\n")
cat("Model type:", attr(x, "model.type"), "\n")
cat("glmnet model alpha:", attr(x, "alpha"), "\n")
cat("glmnet model lambda:", attr(x, "lambda"), "\n")
if (is.null(attr(x, "pen.factor"))) {
cat("glmnet model penalty factor: not specified\n")
} else {
cat("glmnet model penalty factor: specified\n")
}
cat("Calibration time point:", attr(x, "pred.at"), "\n")
cat("Number of groups formed for calibration:", attr(x, "ngroup"), "\n")
},
ncvreg.calibrate.fitting = {
cat("High-Dimensional Cox Model Calibration Object\n")
cat("Random seed:", attr(x, "seed"), "\n")
cat("Calibration method: fitting\n")
cat("Model type:", attr(x, "model.type"), "\n")
cat("ncvreg model gamma:", attr(x, "gamma"), "\n")
cat("ncvreg model alpha:", attr(x, "alpha"), "\n")
cat("ncvreg model lambda:", attr(x, "lambda"), "\n")
cat("Calibration time point:", attr(x, "pred.at"), "\n")
cat("Number of groups formed for calibration:", attr(x, "ngroup"), "\n")
},
ncvreg.calibrate.bootstrap = {
cat("High-Dimensional Cox Model Calibration Object\n")
cat("Random seed:", attr(x, "seed"), "\n")
cat("Calibration method: bootstrap\n")
cat("Bootstrap samples:", attr(x, "boot.times"), "\n")
cat("Model type:", attr(x, "model.type"), "\n")
cat("ncvreg model gamma:", attr(x, "gamma"), "\n")
cat("ncvreg model alpha:", attr(x, "alpha"), "\n")
cat("ncvreg model lambda:", attr(x, "lambda"), "\n")
cat("Calibration time point:", attr(x, "pred.at"), "\n")
cat("Number of groups formed for calibration:", attr(x, "ngroup"), "\n")
},
ncvreg.calibrate.cv = {
cat("High-Dimensional Cox Model Calibration Object\n")
cat("Random seed:", attr(x, "seed"), "\n")
cat("Calibration method: k-fold cross-validation\n")
cat("Cross-validation folds:", attr(x, "nfolds"), "\n")
cat("Model type:", attr(x, "model.type"), "\n")
cat("ncvreg model gamma:", attr(x, "gamma"), "\n")
cat("ncvreg model alpha:", attr(x, "alpha"), "\n")
cat("ncvreg model lambda:", attr(x, "lambda"), "\n")
cat("Calibration time point:", attr(x, "pred.at"), "\n")
cat("Number of groups formed for calibration:", attr(x, "ngroup"), "\n")
},
ncvreg.calibrate.repeated.cv = {
cat("High-Dimensional Cox Model Calibration Object\n")
cat("Random seed:", attr(x, "seed"), "\n")
cat("Calibration method: repeated cross-validation\n")
cat("Cross-validation folds:", attr(x, "nfolds"), "\n")
cat("Cross-validation repeated times:", attr(x, "rep.times"), "\n")
cat("Model type:", attr(x, "model.type"), "\n")
cat("ncvreg model alpha:", attr(x, "gamma"), "\n")
cat("ncvreg model alpha:", attr(x, "alpha"), "\n")
cat("ncvreg model lambda:", attr(x, "lambda"), "\n")
cat("Calibration time point:", attr(x, "pred.at"), "\n")
cat("Number of groups formed for calibration:", attr(x, "ngroup"), "\n")
},
penalized.calibrate.fitting = {
cat("High-Dimensional Cox Model Calibration Object\n")
cat("Random seed:", attr(x, "seed"), "\n")
cat("Calibration method: fitting\n")
cat("Model type:", attr(x, "model.type"), "\n")
cat("Fused lasso model lambda1:", attr(x, "lambda1"), "\n")
cat("Fused lasso model lambda2:", attr(x, "lambda2"), "\n")
cat("Calibration time point:", attr(x, "pred.at"), "\n")
cat("Number of groups formed for calibration:", attr(x, "ngroup"), "\n")
},
penalized.calibrate.bootstrap = {
cat("High-Dimensional Cox Model Calibration Object\n")
cat("Random seed:", attr(x, "seed"), "\n")
cat("Calibration method: bootstrap\n")
cat("Bootstrap samples:", attr(x, "boot.times"), "\n")
cat("Model type:", attr(x, "model.type"), "\n")
cat("Fused lasso model lambda1:", attr(x, "lambda1"), "\n")
cat("Fused lasso model lambda2:", attr(x, "lambda2"), "\n")
cat("Calibration time point:", attr(x, "pred.at"), "\n")
cat("Number of groups formed for calibration:", attr(x, "ngroup"), "\n")
},
penalized.calibrate.cv = {
cat("High-Dimensional Cox Model Calibration Object\n")
cat("Random seed:", attr(x, "seed"), "\n")
cat("Calibration method: k-fold cross-validation\n")
cat("Cross-validation folds:", attr(x, "nfolds"), "\n")
cat("Model type:", attr(x, "model.type"), "\n")
cat("Fused lasso model lambda1:", attr(x, "lambda1"), "\n")
cat("Fused lasso model lambda2:", attr(x, "lambda2"), "\n")
cat("Calibration time point:", attr(x, "pred.at"), "\n")
cat("Number of groups formed for calibration:", attr(x, "ngroup"), "\n")
},
penalized.calibrate.repeated.cv = {
cat("High-Dimensional Cox Model Calibration Object\n")
cat("Random seed:", attr(x, "seed"), "\n")
cat("Calibration method: repeated cross-validation\n")
cat("Cross-validation folds:", attr(x, "nfolds"), "\n")
cat("Cross-validation repeated times:", attr(x, "rep.times"), "\n")
cat("Model type:", attr(x, "model.type"), "\n")
cat("Fused lasso model lambda1:", attr(x, "lambda1"), "\n")
cat("Fused lasso model lambda2:", attr(x, "lambda2"), "\n")
cat("Calibration time point:", attr(x, "pred.at"), "\n")
cat("Number of groups formed for calibration:", attr(x, "ngroup"), "\n")
}
)
invisible(x)
}
#' Summary of calibration results
#'
#' Summary of calibration results
#'
#' @param object An object returned by \code{\link{calibrate}}.
#' @param ... Other parameters (not used).
#'
#' @method summary hdnom.calibrate
#'
#' @export
#'
#' @examples
#' NULL
summary.hdnom.calibrate <- function(object, ...) {
method <- setdiff(class(object), "hdnom.calibrate")
x <- object
switch(method,
glmnet.calibrate.fitting = {
attr(x, "alpha") <- NULL
attr(x, "lambda") <- NULL
attr(x, "pen.factor") <- NULL
},
glmnet.calibrate.bootstrap = {
attr(x, "boot.times") <- NULL
attr(x, "alpha") <- NULL
attr(x, "lambda") <- NULL
attr(x, "pen.factor") <- NULL
},
glmnet.calibrate.cv = {
attr(x, "nfolds") <- NULL
attr(x, "alpha") <- NULL
attr(x, "lambda") <- NULL
attr(x, "pen.factor") <- NULL
},
glmnet.calibrate.repeated.cv = {
attr(x, "nfolds") <- NULL
attr(x, "rep.times") <- NULL
attr(x, "alpha") <- NULL
attr(x, "lambda") <- NULL
attr(x, "pen.factor") <- NULL
},
ncvreg.calibrate.fitting = {
attr(x, "alpha") <- NULL
attr(x, "lambda") <- NULL
attr(x, "gamma") <- NULL
},
ncvreg.calibrate.bootstrap = {
attr(x, "alpha") <- NULL
attr(x, "lambda") <- NULL
attr(x, "gamma") <- NULL
attr(x, "boot.times") <- NULL
},
ncvreg.calibrate.cv = {
attr(x, "alpha") <- NULL
attr(x, "lambda") <- NULL
attr(x, "gamma") <- NULL
attr(x, "nfolds") <- NULL
},
ncvreg.calibrate.repeated.cv = {
attr(x, "alpha") <- NULL
attr(x, "lambda") <- NULL
attr(x, "gamma") <- NULL
attr(x, "nfolds") <- NULL
attr(x, "rep.times") <- NULL
},
penalized.calibrate.fitting = {
attr(x, "lambda1") <- NULL
attr(x, "lambda2") <- NULL
},
penalized.calibrate.bootstrap = {
attr(x, "lambda1") <- NULL
attr(x, "lambda2") <- NULL
attr(x, "boot.times") <- NULL
},
penalized.calibrate.cv = {
attr(x, "lambda1") <- NULL
attr(x, "lambda2") <- NULL
attr(x, "nfolds") <- NULL
},
penalized.calibrate.repeated.cv = {
attr(x, "lambda1") <- NULL
attr(x, "lambda2") <- NULL
attr(x, "nfolds") <- NULL
attr(x, "rep.times") <- NULL
}
)
attr(x, "model.type") <- NULL
attr(x, "pred.at") <- NULL
attr(x, "ngroup") <- NULL
attr(x, "risk.group") <- NULL
attr(x, "surv.time") <- NULL
attr(x, "surv.event") <- NULL
attr(x, "seed") <- NULL
cat(" Calibration Summary Table\n")
class(x) <- "matrix"
print(x)
invisible(x)
}
#' Plot calibration results
#'
#' Plot calibration results
#'
#' @param x An object returned by \code{\link{calibrate}}.
#' @param xlim x axis limits of the plot.
#' @param ylim y axis limits of the plot.
#' @param col.pal Color palette to use. Possible values are
#' \code{"JCO"}, \code{"Lancet"}, \code{"NPG"}, and \code{"AAAS"}.
#' Default is \code{"JCO"}.
#' @param ... Other parameters for \code{plot}.
#'
#' @method plot hdnom.calibrate
#'
#' @export
#'
#' @importFrom ggplot2 ggplot aes_string geom_errorbar
#' geom_line geom_point geom_abline xlab ylab
#'
#' @examples
#' NULL
plot.hdnom.calibrate <- function(
x, xlim = c(0, 1), ylim = c(0, 1),
col.pal = c("JCO", "Lancet", "NPG", "AAAS"), ...) {
df <- data.frame(
"pre" = x[, "Predicted"], "obs" = x[, "Observed"],
"ll" = x[, "Lower 95%"], "ul" = x[, "Upper 95%"]
)
col.pal <- match.arg(col.pal)
col_pal <- switch(col.pal,
JCO = palette_jco()[1],
Lancet = palette_lancet()[1],
NPG = palette_npg()[1],
AAAS = palette_aaas()[1]
)
ggplot(
df,
aes_string(
x = "pre", y = "obs",
xmin = xlim[1L], xmax = xlim[2L],
ymin = ylim[1L], ymax = ylim[2L]
)
) +
geom_abline(slope = 1, intercept = 0, colour = "grey") +
geom_errorbar(aes_string(ymin = "ll", ymax = "ul"), colour = col_pal) +
geom_line(colour = col_pal) +
geom_point(size = 3, colour = col_pal) +
xlab("Predicted Survival Probability") +
ylab("Observed Survival Probability") +
theme_hdnom()
}
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