A predictor of membrane class:discriminating α-helical and β-barrel membrane proteins from non-membranous proteins
Data(s) |
2006
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Resumo |
Accurate protein structure prediction remains an active objective of research in bioinformatics. Membrane proteins comprise approximately 20% of most genomes. They are, however, poorly tractable targets of experimental structure determination. Their analysis using bioinformatics thus makes an important contribution to their on-going study. Using a method based on Bayesian Networks, which provides a flexible and powerful framework for statistical inference, we have addressed the alignment-free discrimination of membrane from non-membrane proteins. The method successfully identifies prokaryotic and eukaryotic α-helical membrane proteins at 94.4% accuracy, β-barrel proteins at 72.4% accuracy, and distinguishes assorted non-membranous proteins with 85.9% accuracy. The method here is an important potential advance in the computational analysis of membrane protein structure. It represents a useful tool for the characterisation of membrane proteins with a wide variety of potential applications. |
Formato |
application/pdf |
Identificador |
Taylor, Paul D.; Toseland, Christopher P.; Attwood, Teresa K. and Flower, Darren R. (2006). A predictor of membrane class:discriminating α-helical and β-barrel membrane proteins from non-membranous proteins. Bioinformation, 1 (6), pp. 208-213. |
Relação |
http://eprints.aston.ac.uk/23122/ |
Tipo |
Article PeerReviewed |