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A probabilistic generative model for GO enrichment analysis
Author(s) -
Yong Lu,
Roni Rosenfeld,
Itamar Simon,
Gerard J. Nau,
Ziv BarJoseph
Publication year - 2008
Publication title -
nucleic acids research
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 9.008
H-Index - 537
eISSN - 1362-4954
pISSN - 0305-1048
DOI - 10.1093/nar/gkn434
Subject(s) - biology , generative model , generative grammar , set (abstract data type) , probabilistic logic , gene annotation , gene ontology , annotation , statistical model , bayesian probability , computer science , machine learning , artificial intelligence , data mining , computational biology , gene , bioinformatics , genetics , gene expression , genome , programming language
The Gene Ontology (GO) is extensively used to analyze all types of high-throughput experiments. However, researchers still face several challenges when using GO and other functional annotation databases. One problem is the large number of multiple hypotheses that are being tested for each study. In addition, categories often overlap with both direct parents/descendents and other distant categories in the hierarchical structure. This makes it hard to determine if the identified significant categories represent different functional outcomes or rather a redundant view of the same biological processes. To overcome these problems we developed a generative probabilistic model which identifies a (small) subset of categories that, together, explain the selected gene set. Our model accommodates noise and errors in the selected gene set and GO. Using controlled GO data our method correctly recovered most of the selected categories, leading to dramatic improvements over current methods for GO analysis. When used with microarray expression data and ChIP-chip data from yeast and human our method was able to correctly identify both general and specific enriched categories which were overlooked by other methods.

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