#' Plot parameter distributions from multistart objects
#'
#' Produces a boxplot with all parameters from the multiple runs, scaled
#' either by the parameters of the run with the highest likelihood,
#' or by their medians as proposed in the paper by Duchesne et al. (2021).
#'
#' @param object The [multistart] object
#' @param llmin The minimum likelihood of objects to be shown
#' @param scale By default, scale parameters using the best available fit.
#' If 'median', parameters are scaled using the median parameters from all fits.
#' @param main Title of the plot
#' @param lpos Positioning of the legend.
#' @param \dots Passed to [boxplot]
#' @references Duchesne R, Guillemin A, Gandrillon O, Crauste F. Practical
#' identifiability in the frame of nonlinear mixed effects models: the example
#' of the in vitro erythropoiesis. BMC Bioinformatics. 2021 Oct 4;22(1):478.
#' doi: 10.1186/s12859-021-04373-4.
#' @seealso [multistart]
#' @importFrom stats median
#' @export
parhist <- function(object, llmin = -Inf, scale = c("best", "median"),
  lpos = "bottomleft", main = "", ...)
{
  oldpar <- par(no.readonly = TRUE)
  on.exit(par(oldpar, no.readonly = TRUE))

  orig <- attr(object, "orig")
  orig_parms <- parms(orig)
  start_parms <- orig$mean_dp_start
  all_parms <- parms(object)

  if (inherits(object, "multistart.saem.mmkin")) {
    llfunc <- function(object) {
      if (inherits(object$so, "try-error")) return(NA)
      else return(logLik(object$so))
    }
  } else {
    stop("parhist is only implemented for multistart.saem.mmkin objects")
  }
  ll <- sapply(object, llfunc)
  selected <- which(ll > llmin)
  selected_parms <- all_parms[selected, ]

  par(las = 1)
  if (orig$transformations == "mkin") {
    degparm_names_transformed <- names(start_parms)
    degparm_index <- which(names(orig_parms) %in% degparm_names_transformed)
    orig_parms[degparm_names_transformed] <- backtransform_odeparms(
      orig_parms[degparm_names_transformed],
      orig$mmkin[[1]]$mkinmod,
      transform_rates = orig$mmkin[[1]]$transform_rates,
      transform_fractions = orig$mmkin[[1]]$transform_fractions)
    start_parms <- backtransform_odeparms(start_parms,
      orig$mmkin[[1]]$mkinmod,
      transform_rates = orig$mmkin[[1]]$transform_rates,
      transform_fractions = orig$mmkin[[1]]$transform_fractions)
    degparm_names <- names(start_parms)

    names(orig_parms) <- c(degparm_names, names(orig_parms[-degparm_index]))

    selected_parms[, degparm_names_transformed] <-
      t(apply(selected_parms[, degparm_names_transformed], 1, backtransform_odeparms,
      orig$mmkin[[1]]$mkinmod,
      transform_rates = orig$mmkin[[1]]$transform_rates,
      transform_fractions = orig$mmkin[[1]]$transform_fractions))
    colnames(selected_parms)[1:length(degparm_names)] <- degparm_names
  }

  scale <- match.arg(scale)
  parm_scale <- switch(scale,
    best = selected_parms[which.best(object[selected]), ],
    median = apply(selected_parms, 2, median)
  )

  # Boxplots of all scaled parameters
  selected_scaled_parms <- t(apply(selected_parms, 1, function(x) x / parm_scale))
  boxplot(selected_scaled_parms, log = "y", main = main, ,
    ylab = "Normalised parameters", ...)

  # Show starting parameters
  start_scaled_parms <- rep(NA_real_, length(orig_parms))
  names(start_scaled_parms) <- names(orig_parms)
  start_scaled_parms[names(start_parms)] <-
    start_parms / parm_scale[names(start_parms)]
  points(start_scaled_parms, col = 3, cex = 3)

  # Show parameters of original run
  orig_scaled_parms <- orig_parms / parm_scale
  points(orig_scaled_parms, col = 2, cex = 2)

  abline(h = 1, lty = 2)

  legend(lpos, inset = c(0.05, 0.05), bty = "n",
    pch = 1, col = 3:1, lty = c(NA, NA, 1),
    legend = c(
      "Starting parameters",
      "Original run",
      "Multistart runs"))
}