info:eu-repo/semantics/article
QSLiM Finder: Improved short linear motif prediction using specific query protein data
Fecha
2015-03Registro en:
Palopoli, Nicolás; Lythgow, Kieren T.; Edwards, Richard J.; QSLiM Finder: Improved short linear motif prediction using specific query protein data; Oxford University Press; Bioinformatics (Oxford, England); 31; 14; 3-2015; 2284-2293
1367-4803
CONICET Digital
CONICET
Autor
Palopoli, Nicolás
Lythgow, Kieren T.
Edwards, Richard J.
Resumen
Motivation: The sensitivity of de novo short linear motif (SLiM) prediction is limited by the number of patterns (the motif space) being assessed for enrichment. QSLiMFinder uses specific query protein information to restrict the motif space and thereby increase the sensitivity and specificity of predictions. Results: QSLiMFinder was extensively benchmarked using known SLiM-containing proteins and simulated protein interaction datasets of real human proteins. Exploiting prior knowledge of a query protein likely to be involved in a SLiM-mediated interaction increased the proportion of true positives correctly returned and reduced the proportion of datasets returning a false positive prediction. The biggest improvement was seen if a short region of the query protein flanking the interaction site was known.