r-bioc-qusage 2.32.0-1 source package in Ubuntu

Changelog

r-bioc-qusage (2.32.0-1) unstable; urgency=medium

  * Team upload.
  * New upstream version

 -- Andreas Tille <email address hidden>  Sun, 20 Nov 2022 17:19:05 +0100

Upload details

Uploaded by:
Debian R Packages Maintainers
Uploaded to:
Sid
Original maintainer:
Debian R Packages Maintainers
Architectures:
all
Section:
misc
Urgency:
Medium Urgency

See full publishing history Publishing

Series Pocket Published Component Section
Lunar release universe misc

Builds

Lunar: [FULLYBUILT] amd64

Downloads

File Size SHA-256 Checksum
r-bioc-qusage_2.32.0-1.dsc 2.1 KiB ea2c05810952b2c2712e896283434dc0cf0725e0ac261c9a7512fd50f2bbec65
r-bioc-qusage_2.32.0.orig.tar.gz 9.5 MiB c5d954125e4e1371dd99df4438fbe087773e364602498787be82e876e11944cc
r-bioc-qusage_2.32.0-1.debian.tar.xz 3.1 KiB 5763537110806bde685e4c21bf140d33cc93845de84c0502d5d3f2671b58c5a0

Available diffs

No changes file available.

Binary packages built by this source

r-bioc-qusage: qusage: Quantitative Set Analysis for Gene Expression

 This package is an implementation the Quantitative Set
 Analysis for Gene Expression (QuSAGE) method described in
 (Yaari G. et al, Nucl Acids Res, 2013). This is a novel Gene
 Set Enrichment-type test, which is designed to provide a
 faster, more accurate, and easier to understand test for gene
 expression studies. qusage accounts for inter-gene correlations
 using the Variance Inflation Factor technique proposed by Wu et
 al. (Nucleic Acids Res, 2012). In addition, rather than simply
 evaluating the deviation from a null hypothesis with a single
 number (a P value), qusage quantifies gene set activity with a
 complete probability density function (PDF). From this PDF, P
 values and confidence intervals can be easily extracted.
 Preserving the PDF also allows for post-hoc analysis (e.g.,
 pair-wise comparisons of gene set activity) while maintaining
 statistical traceability. Finally, while qusage is compatible
 with individual gene statistics from existing methods (e.g.,
 LIMMA), a Welch-based method is implemented that is shown to
 improve specificity. For questions, contact Chris Bolen
 (cbolen1@gmail.com) or Steven Kleinstein
 (steven.kleinstein@yale.edu)