Literature DB >> 28150240

Analysis of Protein Phosphorylation and Its Functional Impact on Protein-Protein Interactions via Text Mining of the Scientific Literature.

Qinghua Wang1,2, Karen E Ross3, Hongzhan Huang1,2, Jia Ren1, Gang Li2, K Vijay-Shanker2, Cathy H Wu1,2,3, Cecilia N Arighi4,5.   

Abstract

Post-translational modifications (PTMs) are one of the main contributors to the diversity of proteoforms in the proteomic landscape. In particular, protein phosphorylation represents an essential regulatory mechanism that plays a role in many biological processes. Protein kinases, the enzymes catalyzing this reaction, are key participants in metabolic and signaling pathways. Their activation or inactivation dictate downstream events: what substrates are modified and their subsequent impact (e.g., activation state, localization, protein-protein interactions (PPIs)). The biomedical literature continues to be the main source of evidence for experimental information about protein phosphorylation. Automatic methods to bring together phosphorylation events and phosphorylation-dependent PPIs can help to summarize the current knowledge and to expose hidden connections. In this chapter, we demonstrate two text mining tools, RLIMS-P and eFIP, for the retrieval and extraction of kinase-substrate-site data and phosphorylation-dependent PPIs from the literature. These tools offer several advantages over a literature search in PubMed as their results are specific for phosphorylation. RLIMS-P and eFIP results can be sorted, organized, and viewed in multiple ways to answer relevant biological questions, and the protein mentions are linked to UniProt identifiers.

Entities:  

Keywords:  Bioinformatics; Phosphorylation; Post-translational modification; Protein–protein interaction; Text mining

Mesh:

Substances:

Year:  2017        PMID: 28150240      PMCID: PMC5446092          DOI: 10.1007/978-1-4939-6783-4_10

Source DB:  PubMed          Journal:  Methods Mol Biol        ISSN: 1064-3745


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