geposanui/correlation.R
Elias Projahn d87474e574 Update correlation method
This adds some performance optimizations and removes the penalty for
missing values.
2021-10-11 10:10:28 +02:00

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2.5 KiB
R

library(data.table)
#' Compute the mean correlation coefficient comparing gene distances with a set
#' of reference genes.
#'
#' The result will be a data.table with the following columns:
#'
#' - `gene` Gene ID of the processed gene.
#' - `correlation` Mean correlation coefficient.
#'
#' @param distances Distance data to use.
#' @param species_ids Species, whose data should be included.
#' @param gene_ids Genes to process.
#' @param reference_gene_ids Genes to compare to.
process_correlation <- function(distances, species_ids, gene_ids,
reference_gene_ids) {
results <- data.table(gene = gene_ids)
reference_count <- length(reference_gene_ids)
# Prefilter distances by species.
distances <- distances[species %chin% species_ids]
# Add an index for quickly accessing data per gene.
setkey(distances, gene)
# Prepare the reference genes' data.
reference_distances <- distances[gene %chin% reference_gene_ids]
#' Perform the correlation for one gene.
compute <- function(gene_id) {
gene_distances <- distances[gene_id]
gene_species_count <- nrow(gene_distances)
# Return a score of 0.0 if there is just one or no value at all.
if (gene_species_count <= 1) {
return(0.0)
}
#' Buffer for the sum of correlation coefficients.
correlation_sum <- 0
# Correlate with all reference genes but not with the gene itself.
for (reference_gene_id in
reference_gene_ids[reference_gene_ids != gene_id]) {
data <- merge(
gene_distances,
reference_distances[reference_gene_id],
by = "species"
)
# Skip this reference gene, if there are not enough value pairs.
# This will lessen the final score, because it effectively
# represents a correlation coefficient of 0.0.
if (nrow(data) <= 1) {
next
}
# Order data by the reference gene's distance to get a monotonic
# relation.
setorder(data, distance.y)
correlation_sum <- correlation_sum + abs(cor(
data[, distance.x], data[, distance.y],
method = "spearman"
))
}
# Compute the score as the mean correlation coefficient.
score <- correlation_sum / reference_count
}
results[, correlation := compute(gene), by = 1:nrow(results)]
}