geposanui/process.R

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library(data.table)
library(rlog)
#' Process genes screening for a likely TPE-OLD.
#'
#' The return value will be a table containing genes and data to take in
#' account when regarding them as TPE-OLD candidates.
#'
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#' @param distances Gene distance data to use.
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#' @param species_ids IDs of species to include in the analysis.
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#' @param gene_ids Genes to include in the computation.
process_input <- function(distances, species_ids, gene_ids) {
results <- data.table(gene = gene_ids)
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gene_count <- length(gene_ids)
for (i in seq_along(gene_ids)) {
gene_id <- gene_ids[i]
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log_info(sprintf("Processing gene %i/%i (%s)", i, gene_count, gene_id))
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data <- distances[
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species %chin% species_ids & gene == gene_id,
.(species, distance)
]
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if (data[, .N] < 12) {
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next
}
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clusters <- hclust(dist(data[, distance]))
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clusters_cut <- cutree(clusters, h = 1000000)
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# Find the largest cluster
cluster_indices <- unique(clusters_cut)
cluster_index <- cluster_indices[
which.max(tabulate(match(clusters_cut, cluster_indices)))
]
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cluster <- data[which(clusters_cut == cluster_index)]
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results[
gene == gene_id,
`:=`(
cluster_length = cluster[, .N],
cluster_mean = mean(cluster[, distance]),
cluster_species = list(cluster[, species])
)
]
}
results
}