Oligo kernels for datamining on biological sequences: a case study on prokaryotic translation initiation sites
Open Access
- 28 October 2004
- journal article
- research article
- Published by Springer Nature in BMC Bioinformatics
- Vol. 5 (1) , 169
- https://doi.org/10.1186/1471-2105-5-169
Abstract
Background: Kernel-based learning algorithms are among the most advanced machine learning methods and have been successfully applied to a variety of sequence classification tasks within the field of bioinformatics. Conventional kernels utilized so far do not provide an easy interpretation of the learnt representations in terms of positional and compositional variability of the underlying biological signals. Results: We propose a kernel-based approach to datamining on biological sequences. With our method it is possible to model and analyze positional variability of oligomers of any length in a natural way. On one hand this is achieved by mapping the sequences to an intuitive but high-dimensional feature space, well-suited for interpretation of the learnt models. On the other hand, by means of the kernel trick we can provide a general learning algorithm for that high-dimensional representation because all required statistics can be computed without performing an explicit feature space mapping of the sequences. By introducing a kernel parameter that controls the degree of position-dependency, our feature space representation can be tailored to the characteristics of the biological problem at hand. A regularized learning scheme enables application even to biological problems for which only small sets of example sequences are available. Our approach includes a visualization method for transparent representation of characteristic sequence features. Thereby importance of features can be measured in terms of discriminative strength with respect to classification of the underlying sequences. To demonstrate and validate our concept on a biochemically well-defined case, we analyze E. coli translation initiation sites in order to show that we can find biologically relevant signals. For that case, our results clearly show that the Shine-Dalgarno sequence is the most important signal upstream a start codon. The variability in position and composition we found for that signal is in accordance with previous biological knowledge. We also find evidence for signals downstream of the start codon, previously introduced as transcriptional enhancers. These signals are mainly characterized by occurrences of adenine in a region of about 4 nucleotides next to the start codon. Conclusions: We showed that the oligo kernel can provide a valuable tool for the analysis of relevant signals in biological sequences. In the case of translation initiation sites we could clearly deduce the most discriminative motifs and their positional variation from example sequences. Attractive features of our approach are its flexibility with respect to oligomer length and position conservation. By means of these two parameters oligo kernels can easily be adapted to different biological problems.Keywords
This publication has 19 references indexed in Scilit:
- Accuracy improvement for identifying translation initiation sites in microbial genomesBioinformatics, 2004
- Sequence Information for the Splicing of Human Pre-mRNA Identified by Support Vector Machine ClassificationGenome Research, 2003
- Support Vector Machines for Protein Fold Class PredictionBiometrical Journal, 2003
- ZCURVE: a new system for recognizing protein-coding genes in bacterial and archaeal genomesNucleic Acids Research, 2003
- YACOP: Enhanced gene prediction obtained by a combination of existing methods.2003
- Correlations between Shine-Dalgarno Sequences and Gene Features Such as Predicted Expression Levels and Operon StructuresJournal of Bacteriology, 2002
- Feature subset selection for splice site predictionBioinformatics, 2002
- Influences on translation initiation and early elongation by the messenger RNA region flanking the initiation codon at the 3′ sideGene, 2002
- THE SPECTRUM KERNEL: A STRING KERNEL FOR SVM PROTEIN CLASSIFICATIONPacific Symposium on Biocomputing, 2001
- Anatomy of Escherichia coli ribosome binding sites 1 1Edited by D. DraperJournal of Molecular Biology, 2001