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Large-scale regulatory and signaling network assembly through linked open data
Author(s) -
Marie Lefebvre,
Alban Gaignard,
Maxime Folschette,
JeanChristophe Bourdon,
Carito Guziołowski
Publication year - 2020
Publication title -
database
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.406
H-Index - 62
ISSN - 1758-0463
DOI - 10.1093/database/baaa113
Subject(s) - computer science , biological network , python (programming language) , biological data , context (archaeology) , identification (biology) , data science , biological database , world wide web , database , data mining , computational biology , bioinformatics , biology , paleontology , operating system , botany
Huge efforts are currently underway to address the organization of biological knowledge through linked open databases. These databases can be automatically queried to reconstruct regulatory and signaling networks. However, assembling networks implies manual operations due to source-specific identification of biological entities and relationships, multiple life-science databases with redundant information and the difficulty of recovering logical flows in biological pathways. We propose a framework based on Semantic Web technologies to automate the reconstruction of large-scale regulatory and signaling networks in the context of tumor cells modeling and drug screening. The proposed tool is pyBRAvo (python Biological netwoRk Assembly), and here we have applied it to a dataset of 910 gene expression measurements issued from liver cancer patients. The tool is publicly available at https://github.com/pyBRAvo/pyBRAvo.

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