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1.
Genome Biol ; 9 Suppl 2: S6, 2008.
Article in English | MEDLINE | ID: mdl-18834497

ABSTRACT

We introduce the first meta-service for information extraction in molecular biology, the BioCreative MetaServer (BCMS; http://bcms.bioinfo.cnio.es/). This prototype platform is a joint effort of 13 research groups and provides automatically generated annotations for PubMed/Medline abstracts. Annotation types cover gene names, gene IDs, species, and protein-protein interactions. The annotations are distributed by the meta-server in both human and machine readable formats (HTML/XML). This service is intended to be used by biomedical researchers and database annotators, and in biomedical language processing. The platform allows direct comparison, unified access, and result aggregation of the annotations.


Subject(s)
Biomedical Research/methods , Computational Biology/methods , Information Storage and Retrieval , Internet , Humans
2.
Bioinformatics ; 24(13): i277-85, 2008 Jul 01.
Article in English | MEDLINE | ID: mdl-18586725

ABSTRACT

MOTIVATION: Understanding the role of genetics in diseases is one of the most important aims of the biological sciences. The completion of the Human Genome Project has led to a rapid increase in the number of publications in this area. However, the coverage of curated databases that provide information manually extracted from the literature is limited. Another challenge is that determining disease-related genes requires laborious experiments. Therefore, predicting good candidate genes before experimental analysis will save time and effort. We introduce an automatic approach based on text mining and network analysis to predict gene-disease associations. We collected an initial set of known disease-related genes and built an interaction network by automatic literature mining based on dependency parsing and support vector machines. Our hypothesis is that the central genes in this disease-specific network are likely to be related to the disease. We used the degree, eigenvector, betweenness and closeness centrality metrics to rank the genes in the network. RESULTS: The proposed approach can be used to extract known and to infer unknown gene-disease associations. We evaluated the approach for prostate cancer. Eigenvector and degree centrality achieved high accuracy. A total of 95% of the top 20 genes ranked by these methods are confirmed to be related to prostate cancer. On the other hand, betweenness and closeness centrality predicted more genes whose relation to the disease is currently unknown and are candidates for experimental study. AVAILABILITY: A web-based system for browsing the disease-specific gene-interaction networks is available at: http://gin.ncibi.org.


Subject(s)
Database Management Systems , Genetic Predisposition to Disease/genetics , Natural Language Processing , Periodicals as Topic , Protein Interaction Mapping/methods , Proteome/metabolism , Signal Transduction , Humans
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