Alpha helical trans-membrane proteins:enhanced prediction using a Bayesian approach


Autoria(s): Taylor, Paul D.; Toseland, Christopher P.; Attwood, Teresa K.; Flower, Darren R.
Data(s)

2006

Resumo

Membrane proteins, which constitute approximately 20% of most genomes, are poorly tractable targets for experimental structure determination, thus analysis by prediction and modelling makes an important contribution to their on-going study. Membrane proteins form two main classes: alpha helical and beta barrel trans-membrane proteins. By using a method based on Bayesian Networks, which provides a flexible and powerful framework for statistical inference, we addressed alpha-helical topology prediction. This method has accuracies of 77.4% for prokaryotic proteins and 61.4% for eukaryotic proteins. The method described here represents an important advance in the computational determination of membrane protein topology and offers a useful, and complementary, tool for the analysis of membrane proteins for a range of applications.

Formato

application/pdf

Identificador

http://eprints.aston.ac.uk/23129/1/Alpha_helical_trans_membrane_proteins.pdf

Taylor, Paul D.; Toseland, Christopher P.; Attwood, Teresa K. and Flower, Darren R. (2006). Alpha helical trans-membrane proteins:enhanced prediction using a Bayesian approach. Bioinformation, 1 (6), pp. 234-236.

Relação

http://eprints.aston.ac.uk/23129/

Tipo

Article

PeerReviewed