Multi-class subcellular location prediction for bacterial proteins


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

2006

Resumo

Two algorithms, based onBayesian Networks (BNs), for bacterial subcellular location prediction, are explored in this paper: one predicts all locations for Gram+ bacteria and the other all locations for Gram- bacteria. Methods were evaluated using different numbers of residues (from the N-terminal 10 residues to the whole sequence) and residue representation (amino acid-composition, percentage amino acid-composition or normalised amino acid-composition). The accuracy of the best resulting BN was compared to PSORTB. The accuracy of this multi-location BN was roughly comparable to PSORTB; the difference in predictions is low, often less than 2%. The BN method thus represents both an important new avenue of methodological development for subcellular location prediction and a potentially value new tool of true utilitarian value for candidate subunit vaccine selection.

Formato

application/pdf

Identificador

http://eprints.aston.ac.uk/23250/1/Multi_class_subcellular_location_prediction_for_bacterial_proteins.pdf

Taylor, Paul D.; Attwood, Teresa K. and Flower, Darren R. (2006). Multi-class subcellular location prediction for bacterial proteins. Bioinformation, 1 (7), pp. 260-264.

Relação

http://eprints.aston.ac.uk/23250/

Tipo

Article

PeerReviewed