Analyzing synergistic and non-synergistic interactions in signalling pathways using Boolean Nested Effect Models

2016 | journal article. A publication with affiliation to the University of Göttingen.

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​Analyzing synergistic and non-synergistic interactions in signalling pathways using Boolean Nested Effect Models​
Pirkl, M.; Hand, E.; Kube, D. & Spang, R.​ (2016) 
Bioinformatics32(6) pp. 893​-900​.​ DOI: https://doi.org/10.1093/bioinformatics/btv680 

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Authors
Pirkl, Martin; Hand, Elisabeth; Kube, Dieter; Spang, Rainer
Abstract
Motivation: Understanding the structure and interplay of cellular signalling pathways is one of the great challenges in molecular biology. Boolean Networks can infer signalling networks from observations of protein activation. In situations where it is difficult to assess protein activation directly, Nested Effect Models are an alternative. They derive the network structure indirectly from downstream effects of pathway perturbations. To date, Nested Effect Models cannot resolve signalling details like the formation of signalling complexes or the activation of proteins by multiple alternative input signals. Here we introduce Boolean Nested Effect Models (B-NEM). B-NEMs combine the use of downstream effects with the higher resolution of signalling pathway structures in Boolean Networks. Results: We show that B-NEMs accurately reconstruct signal flows in simulated data. Using B-NEM we then resolve BCR signalling via PI3K and TAK1 kinases in BL2 lymphoma cell lines.
Issue Date
2016
Status
published
Publisher
Oxford Univ Press
Journal
Bioinformatics 
ISSN
1460-2059; 1367-4803
Sponsor
Bavarian Research Network for Molecular Biosystems (BioSysNet)

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