stRoke/R/ci_plot.R

71 lines
2.3 KiB
R
Raw Normal View History

2022-10-11 08:25:39 +02:00
utils::globalVariables(c("vname"))
#' Confidence interval plot with point estimate
#'
#' Horizontal forest plot of point estimate with confidence intervals. Includes dichotomous or olr, depending on number of levels in "x".
#' Title and axis labels can be added to the ggplot afterwards.
#'
#' @param ds data set
#' @param x text string of main exposure variable
#' @param y text string of outcome variable
#' @param vars variables for multivariate analysis.
#' @param dec Decimals in labels
#' @param lbls Labels for variable names
#' @param title Plot title. Can be specified later.
#'
#' @return ggplot element
#' @export
#'
#' @import ggplot2
#' @importFrom MASS polr
#' @importFrom stats as.formula coef confint formula lm quantile reorder
2022-10-11 08:25:39 +02:00
#'
#' @examples
#' data(talos)
#' talos[,"mrs_1"]<-factor(talos[,"mrs_1"],ordered=TRUE)
#' ci_plot(ds = talos, x = "rtreat", y = "mrs_1", vars = c("hypertension","diabetes"))
ci_plot<- function(ds, x, y, vars=NULL, dec=3, lbls=NULL, title=NULL){
2022-10-11 08:25:39 +02:00
if (is.factor(ds[y])) stop("Outcome has to be factor")
# Formula
ci_form <- as.formula(paste0(y,"~",x,"+."))
# Ordinal logistic regression for non-dichotomous factors
2022-10-11 08:25:39 +02:00
if (length(levels(ds[,y])) > 2){
m <- MASS::polr(formula = ci_form, data=ds[,unique(c(x, y, vars))], Hess=TRUE, method="logistic")
2022-10-11 08:25:39 +02:00
if (is.null(title)) title <- "Ordinal logistic regression"
}
# Binary logistic regression for dichotomous factors
2022-10-11 08:25:39 +02:00
if (length(levels(ds[,y])) == 2){
m <- lm(formula = ci_form, data=ds[,unique(c(x, y, vars))])
2022-10-11 08:25:39 +02:00
if (is.null(title)) title <- "Binary logistic regression"
}
odds <- data.frame(cbind(exp(coef(m)), exp(confint(m))))
names(odds)<-c("or", "lo", "up")
rodds<-round(odds, digits = dec)
if (is.null(lbls)){
odds$vname<-paste0(row.names(odds)," \n",paste0(rodds$or," [",rodds$lo,":",rodds$up,"]"))
} else {
odds$vname<-paste0(lbls," \n",paste0(rodds$or," [",rodds$lo,":",rodds$up,"]"))
}
odds$ord<-c(nrow(odds):1)
ggplot2::ggplot(data = odds, mapping = ggplot2::aes(y = or, x = reorder(vname,ord))) +
ggplot2::geom_point() +
ggplot2::geom_errorbar(mapping = ggplot2::aes(ymin=lo, ymax=up), width = 0.2) +
ggplot2::scale_y_log10() +
ggplot2::geom_hline(yintercept = 1, linetype=2) +
ggplot2::labs(title=title) +
ggplot2::coord_flip()
}