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ISBRA
2009
Springer

Integrating Multiple-Platform Expression Data through Gene Set Features

13 years 11 months ago
Integrating Multiple-Platform Expression Data through Gene Set Features
Abstract. We demonstrate a set-level approach to the integration of multiple platform gene expression data for predictive classification and show its utility for boosting classification performance when single-platform samples are rare. We explore three ways of defining gene sets, including a novel way based on the notion of a fully coupled flux related to metabolic pathways. In two tissue classification tasks, we empirically show that the gene set based approach is useful for combining heterogeneous expression data, while surprisingly, in experiments constrained to a single platform, biologically meaningful gene sets acting as sample features are often outperformed by random gene sets with no biological relevance.
Matej Holec, Filip Zelezný, Jirí Kl&
Added 20 May 2010
Updated 20 May 2010
Type Conference
Year 2009
Where ISBRA
Authors Matej Holec, Filip Zelezný, Jirí Kléma, Jakub Tolar
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