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Associating Genes with Gene Ontology Codes Using a Maximum Entropy Analysis of Biomedical Literature
Author(s) -
Soumya Raychaudhuri,
Jeffrey T. Chang,
Patrick D. Sutphin,
Russ B. Altman
Publication year - 2002
Publication title -
genome research
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 9.556
H-Index - 297
eISSN - 1549-5469
pISSN - 1088-9051
DOI - 10.1101/gr.199701
Subject(s) - terminology , principle of maximum entropy , computer science , gene ontology , bayes' theorem , entropy (arrow of time) , ontology , artificial intelligence , naive bayes classifier , gene , set (abstract data type) , biology , data mining , computational biology , natural language processing , machine learning , genetics , bayesian probability , support vector machine , philosophy , linguistics , gene expression , physics , quantum mechanics , epistemology , programming language
Functional characterizations of thousands of gene products from many species are described in the published literature. These discussions are extremely valuable for characterizing the functions not only of these gene products, but also of their homologs in other organisms. The Gene Ontology (GO) is an effort to create a controlled terminology for labeling gene functions in a more precise, reliable, computer-readable manner. Currently, the best annotations of gene function with the GO are performed by highly trained biologists who read the literature and select appropriate codes. In this study, we explored the possibility that statistical natural language processing techniques can be used to assign GO codes. We compared three document classification methods (maximum entropy modeling, naïve Bayes classification, and nearest-neighbor classification) to the problem of associating a set of GO codes (for biological process) to literature abstracts and thus to the genes associated with the abstracts. We showed that maximum entropy modeling outperforms the other methods and achieves an accuracy of 72% when ascertaining the function discussed within an abstract. The maximum entropy method provides confidence measures that correlate well with performance. We conclude that statistical methods may be used to assign GO codes and may be useful for the difficult task of reassignment as terminology standards evolve over time.

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