Self Optimised Prediction
Method from Alignments
Recently a new method called the self-optimized prediction method (SOPM)
has been described to improve the success rate in the prediction of the
secondary structure of proteins. In this paper we report improvements brought
about by predicting all the sequences of a set of aligned proteins belonging to
the same family. This improved SOPM method (SOPMA) correctly predicts 69.5% of
amino acids for a three-state description of the secondary structure (alpha-helix,
beta-sheet and coil) in a whole database containing 126 chains of non-homologous
(less than 25% identity) proteins. Joint prediction with SOPMA and a neural
networks method (PHD) correctly predicts 82.2% of residues for 74% of co-predicted
amino acids. Predictions are available by Email to deleage@ibcp.fr or on a Web
page (http:www.ibcp.fr/predict.html).
Sopma: Significant Improvements in Protein
Secondary Structure Prediction by Consensus Prediction from Multiple Alignments [URL]
C. Geourjon and G. Deléage
(1995) Comput Appl Biosci 11 : 681-684