qpgraph

Reverse engineering of molecular regulatory networks with qp-graphs

q-order partial correlation graphs, or qp-graphs for short, are undirected Gaussian graphical Markov models that represent q-order partial correlations. They are useful for learning undirected graphical Gaussian Markov models from data sets where the number of random variables p exceeds the available sample size n as, for instance, in the case of microarray data where they can be employed to reverse engineer a molecular regulatory network.

Author R. Castelo and A. Roverato
Maintainer Robert Castelo

To install this package, start R and enter:

    source("http://bioconductor.org/biocLite.R")
    biocLite("qpgraph")

Documentation

qpPCCdistbyTF.pdf PDF
qpPreRecComparison.pdf PDF
qpPreRecComparisonFullRecall.pdf PDF
qpTRnet50pctpre.pdf PDF
Reverse-engineer transcriptional regulatory networks using qpgraph PDF R Script
Reference Manual

Details

biocViews
Depends
methods , Biobase , AnnotationDbi
Imports
methods , Biobase , AnnotationDbi
Suggests
System Requirements
License GPL version 2 or newer
URL http://functionalgenomics.upf.edu/qpgraph
Depends On Me
Imports Me
Suggests Me
Development History Bioconductor Changelog

Package Downloads

Package source qpgraph_1.0.0.tar.gz
Windows binary qpgraph_1.0.0.zip
MacOS X 10.4 (Tiger) binary qpgraph_1.0.0.tgz
MacOS X 10.5 (Leopard) binary qpgraph_1.0.0.tgz
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