Proteasix: a tool for automated and large-scale prediction of proteases involved in naturally occurring peptide generation

Klein, J., Eales, J., Zürbig, P., Vlahou, A., Mischak, H. and Stevens, R. (2013) Proteasix: a tool for automated and large-scale prediction of proteases involved in naturally occurring peptide generation. Proteomics, 13(7), pp. 1077-1082. (doi: 10.1002/pmic.201200493)

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Abstract

In this study, we have developed Proteasix, an open-source peptide-centric tool that can be used to predict in silico the proteases involved in naturally occurring peptide generation. We developed a curated cleavage site (CS) database, containing 3500 entries about human protease/CS combinations. On top of this database, we built a tool, Proteasix, which allows CS retrieval and protease associations from a list of peptides. To establish the proof of concept of the approach, we used a list of 1388 peptides identified from human urine samples, and compared the prediction to the analysis of 1003 randomly generated amino acid sequences. Metalloprotease activity was predominantly involved in urinary peptide generation, and more particularly to peptides associated with extracellular matrix remodelling, compared to proteins from other origins. In comparison, random sequences returned almost no results, highlighting the specificity of the prediction. This study provides a tool that can facilitate linking of identified protein fragments to predicted protease activity, and therefore into presumed mechanisms of disease. Experiments are needed to confirm the in silico hypotheses; nevertheless, this approach may be of great help to better understand molecular mechanisms of disease, and define new biomarkers, and therapeutic targets.

Item Type:Articles
Status:Published
Refereed:Yes
Glasgow Author(s) Enlighten ID:Mischak, Professor Harald
Authors: Klein, J., Eales, J., Zürbig, P., Vlahou, A., Mischak, H., and Stevens, R.
College/School:College of Medical Veterinary and Life Sciences > School of Cardiovascular & Metabolic Health
Journal Name:Proteomics
ISSN:1615-9853
ISSN (Online):1615-9861

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