R/commonPlot.R

Defines functions MakeComparable .MakeComparableTwoCOMPASSResults

#'@importFrom abind abind
.MakeComparableTwoCOMPASSResults<-function(x,y){
  nc_x <- ncol(x$fit$gamma)
  M_x <- x$fit$mean_gamma[, -nc_x]

  nc_y <- ncol(y$fit$gamma)
  M_y <- y$fit$mean_gamma[, -nc_y]

  ## make sure the row order is the same
  M_x <- M_x[ order(rownames(M_x)), , drop=FALSE ]
  M_y <- M_y[ order(rownames(M_y)), , drop=FALSE ]

  ## augment each matrix with the missing ptids from the other

  add_y <- setdiff( rownames(M_x), rownames(M_y) )
  add_x <- setdiff( rownames(M_y), rownames(M_x) )
  .augment<-function(mm,xx){
    if(length(xx)>0){
      rn<-c(rownames(mm),add_y)
      mm<-(rbind(mm,matrix(0,nrow=length(xx),ncol=ncol(mm))))
      rownames(mm)<-rn
    }
    return(mm)
  }
  M_y <- (.augment(M_y,add_y))
  M_x <- (.augment(M_x,add_x))

  #update the metadata as well
  meta_x <- data.table(x$data$meta)
  meta_y <- data.table(y$data$meta)
  coln_inter <- intersect(colnames(meta_x),colnames(meta_y))
  setkeyv(meta_x,c(x$data$individual_id))
  setkeyv(meta_y,c(x$data$individual_id))
  meta <- merge(meta_x,meta_y,all=TRUE)
  .consolidateColumns <- function(x){
    cn<-colnames(x)
    xcn<-cn[grepl("\\.x$",cn)]
    ycn<-cn[grepl("\\.y$",cn)]
    match_id<-as.vector(solve_LSAP(adist(xcn,ycn)))
    for(i in 1:length(xcn)){
      imp<-apply(data.frame(x[,get(xcn[i])],x[,get(ycn[match_id[i]])]),1,function(xx)na.omit(unique(xx)))
      if(class(imp)!="list"){
        x[,eval(xcn[i]):=imp]
        x[,eval(ycn[match_id[i]]):=NULL]
        setnames(x,xcn[i],gsub("\\.x$","",xcn)[i])
      }
    }
    #split in to x and y metadata
    xy_cols<-grepl("\\.x$|\\.y$",colnames(x))
    x_cols<-grepl("\\.x$",colnames(x))
    meta_x<-(x[,!xy_cols|x_cols,with=FALSE])
    setnames(meta_x,colnames(meta_x),gsub("\\.x$","",colnames(meta_x)))
    meta_y<-(x[,!xy_cols|!x_cols,with=FALSE])
    setnames(meta_y,colnames(meta_y),gsub("\\.y$","",colnames(meta_y)))
    return(list(meta_x,meta_y))
  }
  meta<-.consolidateColumns(meta)
  meta_x <- meta[[1]]
  meta_y <- meta[[2]]

  #order metadata columns consistently
  if(!all(colnames(meta_x)%in%colnames(meta_y))){
    stop("Internal Error: merging metadata columns failed")
  }
  meta_x <- meta_x[,colnames(meta_x)[order(colnames(meta_x))],with=FALSE]
  meta_y <- meta_y[,colnames(meta_x)[order(colnames(meta_x))],with=FALSE]

  .setrownames<-function(yy){
    rn<-(yy[,get(x$data$sample_id)])
    rn[is.na(rn)]<-"missing"
    rn<-make.unique(rn)
    yy<-data.frame(yy)
    rownames(yy)<-rn
    yy
  }
  meta_x <-.setrownames(meta_x)
  meta_y <-.setrownames(meta_y)

  #order rownames of M_x and M_y consistently
  orn<-rownames(M_x)[order(rownames(M_x))]
  M_x<-M_x[orn,]
  M_y<-M_y[orn,]


  #Ensure common categories..
  cx <- colnames(M_x)
  cy <- colnames(M_y)
  un<-union(cx,cy)
  cats<-unique(rbind(x$fit$categories,y$fit$categories))
  cats<-cats[order(rowSums(cats)/2,decreasing=FALSE),]
  cats<-cats[c(2:nrow(cats),1),]
  cats_str<-apply(cats[,-ncol(cats)],1,function(x)paste0(x,collapse=""))
  for(i in un[!un%in%cy]){
    M_y<-cbind(M_y,0)
    colnames(M_y)[ncol(M_y)]<-i
  }
  for(i in un[!un%in%cx]){
    M_x<-cbind(M_x,0)
    colnames(M_x)[ncol(M_x)]<-i
  }

  #return
  M_x<-(cbind(M_x,0))
  M_y<-cbind(M_y,0)
  colnames(M_x)[ncol(M_x)]<-cats_str[length(cats_str)]
  colnames(M_y)[ncol(M_y)]<-cats_str[length(cats_str)]

  M_x<-M_x[,cats_str]
  M_y<-M_y[,cats_str]

  nc <- ncol(M_x)
  ncg <- ncol(x$fit$gamma)
  ncd<-nc-ncg
  if(ncd>0){
    for(i in 1:ncd){
      x$fit$gamma<-(abind(x$fit$gamma,matrix(0,nrow=dim(x$fit$gamma)[1],ncol=dim(x$fit$gamma)[3]),along=2))
    }
  }
  nc <- ncol(M_y)
  ncg <- ncol(y$fit$gamma)
  ncd<-nc-ncg
  if(ncd>0){
    for(i in 1:ncd){
      y$fit$gamma<-(abind(y$fit$gamma,matrix(0,nrow=dim(y$fit$gamma)[1],ncol=dim(y$fit$gamma)[3]),along=2))
    }
  }

  colnames(M_x)[ncol(M_x)]<-colnames(x$fit$mean_gamma)[nc_x]
  colnames(M_y)[ncol(M_y)]<-colnames(y$fit$mean_gamma)[nc_y]
  x$fit$mean_gamma<-M_x
  y$fit$mean_gamma<-M_y
  x$data$meta<-meta_x
  y$data$meta<-meta_y
  x$fit$categories<-cats
  y$fit$categories<-cats
  return(list(x,y))
}

## Make a list of COMPASSResults comparable for display as heatamps
##
## This function makes a list of COMPASSResults comparable for display as heatmaps.
## It has some inefficiencies as it looks at all pairwise comparisons.
##
## @param X An list of \code{COMPASSResult} objects
## @param subset An \R expression, evaluated within the metadata, used to
##   determine which individuals should be kept.
## @param ... Optional arguments passed to \code{pheatmap}.
## @importFrom clue solve_LSAP
## @importFrom utils adist
##' @importFrom abind abind
## @examples
##\dontrun{
## #X is a list of COMPASSResult objects
## X <- MakeComparable(X)
## # These should show the same categories.
## plot(X[[1]], remove_unexpressed_categories=FALSE)
## plot(X[[2]], remove_unexpressed_categories=FALSE)
##}
MakeComparable <- function(X,
                       subset,
                        ...) {

  #check if the type of X is correct
  stopFlag<-FALSE
  if(!inherits(X,"list")){
    stopFlag<-TRUE
  }
  if(!Reduce(all,lapply(X,function(x)inherits(x,"COMPASSResult")))){
    stopFlag<-TRUE
  }
  if(stopFlag){
    stop("X must be a list of COMPASSResult")
  }

  subset_expr <- match.call()$subset

  combo<-combn(length(X),2)
  for(i in 1:ncol(combo)){
    j<-combo[1,i]
    k<-combo[2,i]
    res<-.MakeComparableTwoCOMPASSResults(X[[j]],X[[k]])
    X[[j]]<-res[[1]]
    X[[k]]<-res[[2]]
  }
  return(X)


}

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COMPASS documentation built on Nov. 8, 2020, 8:05 p.m.