Evaluating eukaryotic secreted protein prediction
Open Access
- 14 October 2005
- journal article
- research article
- Published by Springer Nature in BMC Bioinformatics
- Vol. 6 (1) , 256
- https://doi.org/10.1186/1471-2105-6-256
Abstract
Background: Improvements in protein sequence annotation and an increase in the number of annotated protein databases has fueled development of an increasing number of software tools to predict secreted proteins. Six software programs capable of high throughput and employing a wide range of prediction methods, SignalP 3.0, SignalP 2.0, TargetP 1.01, PrediSi, Phobius, and ProtComp 6.0, are evaluated. Results: Prediction accuracies were evaluated using 372 unbiased, eukaryotic, SwissProt protein sequences. TargetP, SignalP 3.0 maximum S-score and SignalP 3.0 D-score were the most accurate single scores (90–91% accurate). The combination of a positive TargetP prediction, SignalP 2.0 maximum Y-score, and SignalP 3.0 maximum S-score increased accuracy by six percent. Conclusion: Single predictive scores could be highly accurate, but almost all accuracies were slightly less than those reported by program authors. Predictive accuracy could be substantially improved by combining scores from multiple methods into a single composite prediction.Keywords
This publication has 26 references indexed in Scilit:
- Signal peptide prediction based on analysis of experimentally verified cleavage sitesProtein Science, 2004
- Improved Prediction of Signal Peptides: SignalP 3.0Journal of Molecular Biology, 2004
- SRP-mediated protein targeting: structure and function revisitedBiochimica et Biophysica Acta (BBA) - Molecular Cell Research, 2004
- A Combined Transmembrane Topology and Signal Peptide Prediction MethodPublished by Elsevier ,2004
- Prediction of proprotein convertase cleavage sitesProtein Engineering, Design and Selection, 2004
- Predicting transmembrane protein topology with a hidden markov model: application to complete genomes11Edited by F. CohenJournal of Molecular Biology, 2001
- Predicting Subcellular Localization of Proteins Based on their N-terminal Amino Acid SequenceJournal of Molecular Biology, 2000
- ChloroP, a neural network‐based method for predicting chloroplast transit peptides and their cleavage sitesProtein Science, 1999
- MitoProt, a Macintosh application for studying mitochondrial proteinsBioinformatics, 1995
- Signal sequencesJournal of Molecular Biology, 1985