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It is universal in the sense that one is free to choose any statistical test to estimate the effect of differential effect for each probe on the tiling microarray. Provided with the p-values for each probe and the corresponding positions of the probes, 'les' uses a sliding window approach to estimate the fraction of regulated probes in the local surrounding of each probe. The approach is related to computing a spatially resolved and weighted false discovery rate, and yields a interpretable statistical feature $Lambda$.
Resulting regions can be scored according to their overall effect. Methods for high-level plotting and export of the results to other software and genome browsers are provided.
The 'les' package is published under the GPL-3 license.
This package is based on: Kilian Bartholome, Clemens Kreutz, and Jens Timmer: Estimation of gene induction enables a relevance-based ranking of gene sets, Journal of Computational Biology: A Journal of Computational Molecular Cell Biology 16, no. 7 (July 2009): 959-967. http://www.liebertonline.com/doi/abs/10.1089/cmb.2008.0226
Les
Methods and functions:
Les
estimate
threshold
regions
ci
chi2
export
plot
data(spikeInStat)
x <- Les(pos, pval)
x <- estimate(x, 200)
x <- threshold(x)
x <- regions(x)
subset <- pos >= 5232300 & pos <= 5233200
x <- ci(x, subset, conf=0.90, nBoot=50)
## plot data
plot(x, region=TRUE)
plot(x, region=TRUE, error="ci")
## Not run:
# ## export data of chromosome 1
# export(x, file="les_out.bed", chr=1)
# export(x, file="les_out.wig", format="wig", chr=1)
# ## End(Not run)
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