Title
Finding motifs in protein secondary structure for use in function prediction.
Abstract
This paper presents a novel algorithm for the discovery of biological sequence motifs. Our motivation is the prediction of gene function. We seek to discover motifs and combinations of motifs in the secondary structure of proteins for application to the understanding and prediction of functional classes. The motifs found by our algorithm allow both flexible length structural elements and flexible length gaps and can be of arbitrary length. The algorithm is based on neither top-down nor bottom-up search, but rather is dichotomic. It is also "anytime," so that fixed termination of the search is not necessary. We have applied our algorithm to yeast sequence data to discover rules predicting function classes from secondary structure. These resultant rules are informative, consistent with known biology, and a contribution to scientific knowledge. Surprisingly, the rules also demonstrate that secondary structure prediction algorithms are effective for membrane proteins and suggest that the association between secondary structure and function is stronger in membrane proteins than globular ones. We demonstrate that our algorithm can successfully predict gene function directly from predicted secondary structure; e.g., we correctly predict the gene YGL124c to be involved in the functional class "cytoplasmic and nuclear degradation." Datasets and detailed results (generated motifs, rules, evaluation on test dataset, and predictions on unknown dataset) are available at www.aber.ac.uk/compsci/Research/bio/dss/yeast.ss.mips/, and www.genepredictions.org.
Year
DOI
Venue
2006
10.1089/cmb.2006.13.719
JOURNAL OF COMPUTATIONAL BIOLOGY
Keywords
Field
DocType
functional genomics,protein secondary structure,flexible motifs,dichotomic search algorithm
Sequence motif,Functional genomics,Prediction algorithms,Artificial intelligence,Data sequences,Bioinformatics,Protein secondary structure,Machine learning,Mathematics
Journal
Volume
Issue
ISSN
13.0
3
1066-5277
Citations 
PageRank 
References 
6
0.44
10
Authors
2
Name
Order
Citations
PageRank
Sébastien Ferré156053.70
Ross D. King21774194.85