The biological interpretation of large-scale gene expression data is one of the challenges in current bioinformatics. The state-of-the-art approach is to perform clustering and then compute a functional characterization via enrichments by Gene Ontology terms. To better assist the interpretation of results, it may be useful to establish connections among different clusters. This machine learning step is sometimes termed cluster meta-analysis, and several approaches have already been proposed; in particular, they usually rely on enrichments based on flat lists of GO terms. However, GO terms are organized in taxonomical graphs, whose structure should be taken into account when performing enrichment studies. To tackle this problem, we propose a kernel approach that can exploit such structured graphical nature. Finally, we compare our approach against a specific flat list method by analyzing the cdc15-subset of the well known Spellman’s Yeast Cell Cycle dataset

Zoppis, I., Merico, D., Antoniotti, M., Mishra, B., Mauri, G. (2007). Discovering relations among GO-annotated clusters by graph kernel methods. In Bioinformatics Research and Applications. Third International Symposium, ISBRA 2007, Atlanta, GA, USA, May 7-10, 2007. Proceedings (pp.158-169). Berlin : Springer [10.1007/978-3-540-72031-7_15].

Discovering relations among GO-annotated clusters by graph kernel methods

ZOPPIS, ITALO FRANCESCO;ANTONIOTTI, MARCO;MAURI, GIANCARLO
2007

Abstract

The biological interpretation of large-scale gene expression data is one of the challenges in current bioinformatics. The state-of-the-art approach is to perform clustering and then compute a functional characterization via enrichments by Gene Ontology terms. To better assist the interpretation of results, it may be useful to establish connections among different clusters. This machine learning step is sometimes termed cluster meta-analysis, and several approaches have already been proposed; in particular, they usually rely on enrichments based on flat lists of GO terms. However, GO terms are organized in taxonomical graphs, whose structure should be taken into account when performing enrichment studies. To tackle this problem, we propose a kernel approach that can exploit such structured graphical nature. Finally, we compare our approach against a specific flat list method by analyzing the cdc15-subset of the well known Spellman’s Yeast Cell Cycle dataset
slide + paper
bioinformatics; gene expression; kernel methods
English
International Symposium on Bioinformatics Research and Applications
2007
Bioinformatics Research and Applications. Third International Symposium, ISBRA 2007, Atlanta, GA, USA, May 7-10, 2007. Proceedings
9783540720300
2007
4463
158
169
none
Zoppis, I., Merico, D., Antoniotti, M., Mishra, B., Mauri, G. (2007). Discovering relations among GO-annotated clusters by graph kernel methods. In Bioinformatics Research and Applications. Third International Symposium, ISBRA 2007, Atlanta, GA, USA, May 7-10, 2007. Proceedings (pp.158-169). Berlin : Springer [10.1007/978-3-540-72031-7_15].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/16489
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