Functional annotation prediction: All for one and one for all
- 1 June 2006
- journal article
- Published by Wiley in Protein Science
- Vol. 15 (6) , 1557-1562
- https://doi.org/10.1110/ps.062185706
Abstract
In an era of rapid genome sequencing and high-throughput technology, automatic function prediction for a novel sequence is of utter importance in bioinformatics. While automatic annotation methods based on local alignment searches can be simple and straightforward, they suffer from several drawbacks, including relatively low sensitivity and assignment of incorrect annotations that are not associated with the region of similarity. ProtoNet is a hierarchical organization of the protein sequences in the UniProt database. Although the hierarchy is constructed in an unsupervised automatic manner, it has been shown to be coherent with several biological data sources. We extend the ProtoNet system in order to assign functional annotations automatically. By leveraging on the scaffold of the hierarchical classification, the method is able to overcome some frequent annotation pitfalls.Keywords
This publication has 30 references indexed in Scilit:
- Is GAS1 a co-receptor for the GDNF family of ligands?Trends in Pharmacological Sciences, 2006
- Protein Molecular Function Prediction by Bayesian PhylogenomicsPLoS Computational Biology, 2005
- Fold recognition by combining profile-profile alignment and support vector machineBioinformatics, 2005
- A robust method to detect structural and functional remote homologuesProteins-Structure Function and Bioinformatics, 2004
- COACH: profile–profile alignment of protein families using hidden Markov modelsBioinformatics, 2004
- How incorrect annotations evolve – the case of short ORFsTrends in Biotechnology, 2003
- Fold Recognition MethodsPublished by Wiley ,2003
- Getting the most from PSI–BLASTPublished by Elsevier ,2002
- Growth, hedgehog and the price of GASBioEssays, 2002
- Gapped BLAST and PSI-BLAST: a new generation of protein database search programsNucleic Acids Research, 1997