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SourceSet (version 0.1.5)

A Graphical Model Approach to Identify Primary Genes in Perturbed Biological Pathways

Description

The algorithm pursues the identification of the set of variables driving the differences in two different experimental conditions (i.e., the primary genes) within a graphical model context. It uses the idea of simultaneously looking for the differences between two multivariate normal distributions in all marginal and conditional distributions associated with a decomposable graph, which represents the pathway under exam. The implementation accommodates genomics specific issues (low sample size and multiple testing issues) and provides a number of functions offering numerical and visual summaries to help the user interpret the obtained results. In order to use the (optional) 'Cytoscape' functionalities, the suggested 'r2cytoscape' package must be installed from the 'GitHub' repository ('devtools::install_github('cytoscape/r2cytoscape')'). More details in Salviato et al., (2020) and Djordjilovic et al., (2022) .

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Version

Install

install.packages('SourceSet')

Monthly Downloads

66

Version

0.1.5

License

AGPL-3

Maintainer

Elisa Salviato

Last Published

November 21st, 2022

Functions in SourceSet (0.1.5)

ripAllRootsClique

All possible RIP orderings
shrinkTEGS

Default shrinkage estimation of covariance matrices
testMeanVariance

Test the equality of two normal distributions
sourceUnionCytoscape

Visualize in Cytoscape the graphical union induced by the source sets of a collection of graphs
parameters

Estimation of parameters for test equality of two normal distributions
infoSource

Get summary statistics on graphs and variables
sourceCytoscape

Visualize in Cytoscape a collection of graphs analyzed with the source set algorithm
simulation

Simulated dataset
sourceSet

Source Set
sourceSankeyDiagram

Create a D3 JavaScript Sankey diagram
getPermutations

Get random permutations of a set of elements
easyLookSource

Easy look results