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prof.to.features: parallelize central for loop #227

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hechth opened this issue Sep 24, 2024 · 0 comments
Open

prof.to.features: parallelize central for loop #227

hechth opened this issue Sep 24, 2024 · 0 comments

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@hechth
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hechth commented Sep 24, 2024

This loop could be paralelized to speed up processing. The number of processor should be passed as a parameter.

# loop over each group
for (i in seq_along(feature_groups))
{
# init variables
feature_group <- feature_groups[[i]] |> dplyr::arrange_at("rt")
num_features <- nrow(feature_group)
# The estimation procedure for a single peak
# Defines the dataframe containing median_mz, median_rt, sd1, sd2, and area
if (num_features < 2) {
time_weights <- all_diff_mean_rts[which(base.curve[, "base.curve"] %in% feature_group[2])]
rt_peak_shape <- c(feature_group[1], feature_group[2], NA, NA, feature_group[3] * time_weights)
peak_parameters <- rbind(peak_parameters, rt_peak_shape)
} else {
# find bandwidth for these particular range
rt_range <- range(feature_group[, "rt"])
bw <- min(max(bandwidth * (max(rt_range) - min(rt_range)), min_bandwidth), max_bandwidth)
bw <- seq(bw, 2 * bw, length.out = 3)
if (bw[1] > 1.5 * min_bandwidth) {
bw <- c(max(min_bandwidth, bw[1] / 2), bw)
}
rt_profile <- compute_chromatographic_profile(feature_group, base.curve)
if (shape_model == "Gaussian") {
rt_peak_shape <- compute_gaussian_peak_shape(rt_profile, bw, component_eliminate, BIC_factor, aver_diff)
} else {
rt_peak_shape <- bigauss.mix(rt_profile, sigma_ratio_lim = sigma_ratio_lim, bw = bw, moment_power = moment_power, peak_estim_method = peak_estim_method, eliminate = component_eliminate, BIC_factor = BIC_factor)$param[, c(1, 2, 3, 5)]
}
if (is.null(nrow(rt_peak_shape))) {
peak_parameters <- rbind(peak_parameters, c(median(feature_group[, "mz"]), rt_peak_shape))
} else {
for (m in 1:nrow(rt_peak_shape))
{
rt_diff <- abs(feature_group[, "rt"] - rt_peak_shape[m, 1])
peak_parameters <- rbind(peak_parameters, c(mean(feature_group[which(rt_diff == min(rt_diff)), 1]), rt_peak_shape[m, ]))
}
}
}
}

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