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OCSANA: optimal combinations of interventions from network analysis
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Abstract
Targeted therapies interfering with specifically one protein activity are promising strategies in the treatment of diseases like cancer. However, accumulated empirical experience has shown that targeting multiple proteins in signaling networks involved in the disease is often necessary. Thus, one important problem in biomedical research is the design and prioritization of optimal combinations of interventions to repress a pathological behavior, while minimizing side-effects. OCSANA (optimal combinations of interventions from network analysis) is a new software designed to identify and prioritize optimal and minimal combinations of interventions to disrupt the paths between source nodes and target nodes. When specified by the user, OCSANA seeks to additionally minimize the side effects that a combination of interventions can cause on specified off-target nodes. With the crucial ability to cope with very large networks, OCSANA includes an exact solution and a novel selective enumeration approach for the combinatorial interventions’ problem.
Availability: The latest version of OCSANA, implemented as a plugin for Cytoscape and distributed under LGPL license, is available together with source code at http://bioinfo.curie.fr/projects/ocsana.
Supplementary information: Supplementary data are available at Bioinformatics online.
Contact: paola.vera-licona@curie.fr
Oxford University Press (OUP)
Title: OCSANA: optimal combinations of interventions from network analysis
Description:
Abstract
Targeted therapies interfering with specifically one protein activity are promising strategies in the treatment of diseases like cancer.
However, accumulated empirical experience has shown that targeting multiple proteins in signaling networks involved in the disease is often necessary.
Thus, one important problem in biomedical research is the design and prioritization of optimal combinations of interventions to repress a pathological behavior, while minimizing side-effects.
OCSANA (optimal combinations of interventions from network analysis) is a new software designed to identify and prioritize optimal and minimal combinations of interventions to disrupt the paths between source nodes and target nodes.
When specified by the user, OCSANA seeks to additionally minimize the side effects that a combination of interventions can cause on specified off-target nodes.
With the crucial ability to cope with very large networks, OCSANA includes an exact solution and a novel selective enumeration approach for the combinatorial interventions’ problem.
Availability: The latest version of OCSANA, implemented as a plugin for Cytoscape and distributed under LGPL license, is available together with source code at http://bioinfo.
curie.
fr/projects/ocsana.
Supplementary information: Supplementary data are available at Bioinformatics online.
Contact: paola.
vera-licona@curie.
fr.
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