ranking: Filter out species with too few species

This commit is contained in:
Elias Projahn 2021-11-12 10:25:07 +01:00
parent 910eb06fe9
commit 4dda7fa49e
3 changed files with 41 additions and 7 deletions

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@ -6,19 +6,33 @@
#' @param analysis Analysis object resulting from [analyze()].
#' @param weights Named list pairing method names with weighting factors. Only
#' methods that are contained within this list will be included.
#' @param min_n_species Minimum number of required species per gene. Genes that
#' have fewer species will not be included in the ranking.
#'
#' @returns A ranking object. The object extends the analysis result with
#' additional columns containing the `score` and the `rank` of each gene. It
#' will be ordered by rank.
#'
#' @export
ranking <- function(analysis, weights) {
ranking <- function(analysis, weights, min_n_species = 10) {
if (!"geposan_analysis" %chin% class(analysis)) {
stop("Invalid analyis. Use geposan::analyze().")
}
ranking <- copy(analysis$results)
ranking[, score := 0.0]
# Count included species from the preset per gene.
genes_n_species <- geposan::distances[
species %chin% analysis$preset$species_ids,
.(n_species = .N),
by = "gene"
]
setkey(genes_n_species, gene)
# Exclude genes with too few species.
ranking <- analysis$results[
genes_n_species[gene, n_species] >= min_n_species,
.(score = 0.0)
]
for (method in names(weights)) {
weighted <- weights[[method]] * ranking[, ..method]
@ -47,13 +61,16 @@ ranking <- function(analysis, weights) {
#' @param reference_gene_ids IDs of the reference genes.
#' @param target The optimization target. It may be one of "mean", "min" or
#' "max" and results in the respective rank being optimized.
#' @param min_n_species Minimum number of required species per gene. Genes that
#' have fewer species will not be included in the rankings used to find the
#' optimal weights.
#'
#' @returns Named list pairing method names with their optimal weights. This
#' can be used as an argument to [ranking()].
#'
#' @export
optimal_weights <- function(analysis, methods, reference_gene_ids,
target = "mean") {
target = "mean", min_n_species = 10) {
if (!"geposan_analysis" %chin% class(analysis)) {
stop("Invalid analyis. Use geposan::analyze().")
}
@ -71,7 +88,11 @@ optimal_weights <- function(analysis, methods, reference_gene_ids,
# Compute the target rank of the reference genes when applying the weights.
target_rank <- function(factors) {
data <- ranking(analysis, weights(factors))
data <- ranking(
analysis,
weights(factors),
min_n_species = min_n_species
)
data[gene %chin% reference_gene_ids, if (target == "min") {
min(rank)

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@ -4,7 +4,13 @@
\alias{optimal_weights}
\title{Find the best weights to rank the results.}
\usage{
optimal_weights(analysis, methods, reference_gene_ids, target = "mean")
optimal_weights(
analysis,
methods,
reference_gene_ids,
target = "mean",
min_n_species = 10
)
}
\arguments{
\item{analysis}{Results from \code{\link[=analyze]{analyze()}} or \code{\link[=ranking]{ranking()}}.}
@ -15,6 +21,10 @@ optimal_weights(analysis, methods, reference_gene_ids, target = "mean")
\item{target}{The optimization target. It may be one of "mean", "min" or
"max" and results in the respective rank being optimized.}
\item{min_n_species}{Minimum number of required species per gene. Genes that
have fewer species will not be included in the rankings used to find the
optimal weights.}
}
\value{
Named list pairing method names with their optimal weights. This

View file

@ -4,13 +4,16 @@
\alias{ranking}
\title{Rank the results by computing a score.}
\usage{
ranking(analysis, weights)
ranking(analysis, weights, min_n_species = 10)
}
\arguments{
\item{analysis}{Analysis object resulting from \code{\link[=analyze]{analyze()}}.}
\item{weights}{Named list pairing method names with weighting factors. Only
methods that are contained within this list will be included.}
\item{min_n_species}{Minimum number of required species per gene. Genes that
have fewer species will not be included in the ranking.}
}
\value{
A ranking object. The object extends the analysis result with