MOTIVATION: Many techniques have been developed to compute the response network of a cell. A recent trend in this area is to compute response networks of small size, with the rationale that only part of a pathway is often changed by disease and that interpreting small subnetworks is easier than interpreting larger ones. However, these methods may not uncover the spectrum of pathways perturbed in a particular experiment or disease. RESULTS: To avoid these difficulties, we propose to use algorithms that reconcile case-control DNA microarray data with a molecular interaction network by modifying per-gene differential expression P-values such that two genes connected by an interaction show similar changes in their gene expression values. We provide a novel evaluation of four methods from this class of algorithms. We enumerate three desirable properties that this class of algorithms should address. These properties seek to maintain that the returned gene rankings are specific to the condition being studied. Moreover, to ease interpretation, highly ranked genes should participate in coherent network structures and should be functionally enriched with relevant biological pathways. We comprehensively evaluate the extent to which each algorithm addresses these properties on a compendium of gene expression data for 54 diverse human diseases. We show that the reconciled gene rankings can identify novel disease-related functions that are missed by analyzing expression data alone. AVAILABILITY: C++ software implementing our algorithms is available in the NetworkReconciliation package as part of the Biorithm software suite under the GNU General Public License: http://bioinformatics.cs.vt.edu/∼murali/software/biorithm-docs.
MOTIVATION: Many techniques have been developed to compute the response network of a cell. A recent trend in this area is to compute response networks of small size, with the rationale that only part of a pathway is often changed by disease and that interpreting small subnetworks is easier than interpreting larger ones. However, these methods may not uncover the spectrum of pathways perturbed in a particular experiment or disease. RESULTS: To avoid these difficulties, we propose to use algorithms that reconcile case-control DNA microarray data with a molecular interaction network by modifying per-gene differential expression P-values such that two genes connected by an interaction show similar changes in their gene expression values. We provide a novel evaluation of four methods from this class of algorithms. We enumerate three desirable properties that this class of algorithms should address. These properties seek to maintain that the returned gene rankings are specific to the condition being studied. Moreover, to ease interpretation, highly ranked genes should participate in coherent network structures and should be functionally enriched with relevant biological pathways. We comprehensively evaluate the extent to which each algorithm addresses these properties on a compendium of gene expression data for 54 diverse human diseases. We show that the reconciled gene rankings can identify novel disease-related functions that are missed by analyzing expression data alone. AVAILABILITY: C++ software implementing our algorithms is available in the NetworkReconciliation package as part of the Biorithm software suite under the GNU General Public License: http://bioinformatics.cs.vt.edu/∼murali/software/biorithm-docs.
Authors: Joana P Gonçalves; Alexandre P Francisco; Nuno P Mira; Miguel C Teixeira; Isabel Sá-Correia; Arlindo L Oliveira; Sara C Madeira Journal: Bioinformatics Date: 2011-09-29 Impact factor: 6.937
Authors: Aravind Subramanian; Pablo Tamayo; Vamsi K Mootha; Sayan Mukherjee; Benjamin L Ebert; Michael A Gillette; Amanda Paulovich; Scott L Pomeroy; Todd R Golub; Eric S Lander; Jill P Mesirov Journal: Proc Natl Acad Sci U S A Date: 2005-09-30 Impact factor: 11.205
Authors: Christof Winter; Glen Kristiansen; Stephan Kersting; Janine Roy; Daniela Aust; Thomas Knösel; Petra Rümmele; Beatrix Jahnke; Vera Hentrich; Felix Rückert; Marco Niedergethmann; Wilko Weichert; Marcus Bahra; Hans J Schlitt; Utz Settmacher; Helmut Friess; Markus Büchler; Hans-Detlev Saeger; Michael Schroeder; Christian Pilarsky; Robert Grützmann Journal: PLoS Comput Biol Date: 2012-05-17 Impact factor: 4.475
Authors: Agustín Estrada-Peña; Margarita Villar; Sara Artigas-Jerónimo; Vladimir López; Pilar Alberdi; Alejandro Cabezas-Cruz; José de la Fuente Journal: Front Cell Infect Microbiol Date: 2018-08-03 Impact factor: 5.293