Novel protein-protein interactions inferred from literature context.

Autor: Herman H H B M van Haagen, Peter A C 't Hoen, Alessandro Botelho Bovo, Antoine de Morrée, Erik M van Mulligen, Christine Chichester, Jan A Kors, Johan T den Dunnen, Gert-Jan B van Ommen, Silvère M van der Maarel, Vinícius Medina Kern, Barend Mons, Martijn J Schuemie
Jazyk: angličtina
Rok vydání: 2009
Předmět:
Zdroj: PLoS ONE, Vol 4, Iss 11, p e7894 (2009)
Druh dokumentu: article
ISSN: 1932-6203
DOI: 10.1371/journal.pone.0007894
Popis: We have developed a method that predicts Protein-Protein Interactions (PPIs) based on the similarity of the context in which proteins appear in literature. This method outperforms previously developed PPI prediction algorithms that rely on the conjunction of two protein names in MEDLINE abstracts. We show significant increases in coverage (76% versus 32%) and sensitivity (66% versus 41% at a specificity of 95%) for the prediction of PPIs currently archived in 6 PPI databases. A retrospective analysis shows that PPIs can efficiently be predicted before they enter PPI databases and before their interaction is explicitly described in the literature. The practical value of the method for discovery of novel PPIs is illustrated by the experimental confirmation of the inferred physical interaction between CAPN3 and PARVB, which was based on frequent co-occurrence of both proteins with concepts like Z-disc, dysferlin, and alpha-actinin. The relationships between proteins predicted by our method are broader than PPIs, and include proteins in the same complex or pathway. Dependent on the type of relationships deemed useful, the precision of our method can be as high as 90%. The full set of predicted interactions is available in a downloadable matrix and through the webtool Nermal, which lists the most likely interaction partners for a given protein. Our framework can be used for prioritizing potential interaction partners, hitherto undiscovered, for follow-up studies and to aid the generation of accurate protein interaction maps.
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