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Semi-Automated Curation Allows Causal Network Model Building for the Quantification of Age-Dependent Plaque Progression in ApoE–/– Mouse
Author(s) -
Justyna Szostak,
Florian Martin,
Marja Talikka,
Manuel C. Peitsch,
Julia Hoeng
Publication year - 2016
Publication title -
gene regulation and systems biology
Language(s) - English
Resource type - Journals
ISSN - 1177-6250
DOI - 10.4137/grsb.s40031
Subject(s) - biological network , computational biology , gene regulatory network , vascular network , computer science , transcriptome , molecular imaging , bioinformatics , medicine , biology , gene , genetics , gene expression , anatomy , in vivo
The cellular and molecular mechanisms behind the process of atherosclerotic plaque destabilization are complex, and molecular data from aortic plaques are difficult to interpret. Biological network models may overcome these difficulties and precisely quantify the molecular mechanisms impacted during disease progression. The atherosclerosis plaque destabilization biological network model was constructed with the semiautomated curation pipeline, BELIEF. Cellular and molecular mechanisms promoting plaque destabilization or rupture were captured in the network model. Public transcriptomic data sets were used to demonstrate the specificity of the network model and to capture the different mechanisms that were impacted in ApoE -/- mouse aorta at 6 and 32 weeks. We concluded that network models combined with the network perturbation amplitude algorithm provide a sensitive, quantitative method to follow disease progression at the molecular level. This approach can be used to investigate and quantify molecular mechanisms during plaque progression.

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