Tracking the functional meaning of the human oral-microbiome protein-protein interactions
Autor: | Ana Sofia Duarte, Raquel M. Silva, Marlene Barros, Ana Cristina Esteves, Maria José Correia, Nuno Rosa, Bruno B. Campos |
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Rok vydání: | 2020 |
Předmět: |
PPIs in saliva
Drug targets Computer science In silico interactomics food and beverages Context (language use) Computational biology Saliva diagnostics Proteomics Interactome Pipeline (software) Protein–protein interaction Host-microbial interactomics Oral Microbiome Oral microbial targets Set (psychology) Organism |
Zdroj: | Advances in Protein Chemistry and Structural Biology ISBN: 9780128168462 |
DOI: | 10.1016/bs.apcsb.2019.11.014 |
Popis: | The interactome – the network of protein-protein interactions (PPIs) within a cell or organism – is technically difficult to assess. Bioinformatic tools can, not only, identify potential PPIs that can be later experimentally validated, but also be used to assign functional meaning to PPIs. Saliva's potential as a non-invasive diagnostic fluid is currently being explored by several research groups. But, in order to fully attain its potential, it is necessary to achieve the full characterization of the mechanisms that take place within this ecosystem. The onset of omics technologies, and specifically of proteomics, delivered a huge set of data that is largely underexplored. Quantitative information relative to proteins within a given context (for example a given disease) can be used by computational algorithms to generate information regarding PPIs. These PPIs can be further analyzed concerning their functional meaning and used to identify potential biomarkers, therapeutic targets, defense and pathogenicity mechanisms. We describe a computational pipeline that can be used to identify and analyze PPIs between human and microbial proteins. The pipeline was tested within the scenario of human PPIs of systemic (Zika Virus infection) and of oral conditions (Periodontal disease) and also in the context of microbial interactions (Candida-Streptococcus) and showed to successfully predict functionally relevant PPIs. The pipeline can be applied to different scientific areas, such as pharmacological research, since a functional meaningful PPI network can provide insights on potential drug targets, and even new uses for existing drugs on the market. |
Databáze: | OpenAIRE |
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