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Predicting functional upstream open reading frames in Saccharomyces cerevisiae

Selpi, Selpi; Bryant, CH; Kemp, GJL; Sarv, J; Kristiansson, E; Sunnerhagen, P

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Authors

Selpi Selpi

GJL Kemp

J Sarv

E Kristiansson

P Sunnerhagen



Abstract

BACKGROUND: Some upstream open reading frames (uORFs) regulate gene expression (i.e., they are functional) and can play key roles in keeping organisms healthy. However, how uORFs are involved in gene regulation is not yet fully understood. In order to get a complete view of how uORFs are involved in gene regulation, it is expected that a large number of experimentally verified functional uORFs are needed. Unfortunately, wet-experiments to verify that uORFs are functional are expensive.

RESULTS: In this paper, a new computational approach to predicting functional uORFs in the yeast Saccharomyces cerevisiae is presented. Our approach is based on inductive logic programming and makes use of a novel combination of knowledge about biological conservation, Gene Ontology annotations and genes' responses to different conditions. Our method results in a set of simple and informative hypotheses with an estimated sensitivity of 76%. The hypotheses predict 301 further genes to have 398 novel functional uORFs. Three (RPC11, TPK1, and FOL1) of these 301 genes have been hypothesised,following wet-experiments, by a related study to have functional uORFs. A comparison with another related study suggests that eleven of the predicted functional uORFs from genes LDB17, HEM3, CIN8, BCK2,PMC1, FAS1, APP1, ACC1, CKA2, SUR1, and ATH1 are strong candidates for wet-lab experimental studies.

CONCLUSIONS: Learning based prediction of functional uORFs can be done with a high sensitivity. The predictions made in this study can serve as a list of candidates for subsequent wet-lab verification and might help to elucidate the regulatory roles of uORFs.

Citation

Selpi, S., Bryant, C., Kemp, G., Sarv, J., Kristiansson, E., & Sunnerhagen, P. (2009). Predicting functional upstream open reading frames in Saccharomyces cerevisiae. BMC Bioinformatics, 10, 451. https://doi.org/10.1186/1471-2105-10-451

Journal Article Type Article
Publication Date Dec 30, 2009
Deposit Date Jan 11, 2010
Publicly Available Date May 31, 2023
Journal BMC Bioinformatics
Publisher Springer Verlag
Peer Reviewed Peer Reviewed
Volume 10
Pages 451
DOI https://doi.org/10.1186/1471-2105-10-451
Keywords machine learning, inductive logic programming, gene regulation
Publisher URL http://www.biomedcentral.com/1471-2105/10/451
Additional Information BMC Bioinformatics is an Open Access journal.

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