Literature DB >> 26685111

Cy-preds: An algorithm and a web service for the analysis and prediction of cysteine reactivity.

İnanç Soylu1, Stefano M Marino1.   

Abstract

Cysteine (Cys) is a critically important amino acid, serving a variety of functions within proteins including structural roles, catalysis, and regulation of function through post-translational modifications. Predicting which Cys residues are likely to be reactive is a very sought after feature. Few methods are currently available for the task, either based on evaluation of physicochemical features (e.g., pKa and exposure) or based on similarity with known instances. In this study, we developed an algorithm (named HAL-Cy) which blends previous work with novel implementations to identify reactive Cys from nonreactive. HAL-Cy present two major components: (i) an energy based part, rooted on the evaluation of H-bond network contributions and (ii) a knowledge based part, composed of different profiling approaches (including a newly developed weighting matrix for sequence profiling). In our evaluations, HAL-Cy provided significantly improved performances, as tested in comparisons with existing approaches. We implemented our algorithm in a web service (Cy-preds), the ultimate product of our work; we provided it with a variety of additional features, tools, and options: Cy-preds is capable of performing fully automated calculations for a thorough analysis of Cys reactivity in proteins, ranging from reactivity predictions (e.g., with HAL-Cy) to functional characterization. We believe it represents an original, effective, and very useful addition to the current array of tools available to scientists involved in redox biology, Cys biochemistry, and structural bioinformatics.
© 2015 Wiley Periodicals, Inc.

Entities:  

Keywords:  algorithm development; cysteine biochemistry; prediction of reactivity; redox biology; structural bioinformatics; web service

Mesh:

Substances:

Year:  2016        PMID: 26685111     DOI: 10.1002/prot.24978

Source DB:  PubMed          Journal:  Proteins        ISSN: 0887-3585


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