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Mining metabolites: extracting the yeast metabolome from the literature
Authors:Chikashi Nobata  Paul D. Dobson  Syed A. Iqbal  Pedro Mendes  Jun��ichi Tsujii  Douglas B. Kell  Sophia Ananiadou
Affiliation:(1) School of Computer Science, The University of Manchester, Oxford Road, Manchester, UK;(2) National Centre for Text Mining (NaCTeM), Manchester Interdisciplinary Biocentre (MIB), Manchester, UK;(3) School of Chemistry, The University of Manchester, Oxford Road, Manchester, UK;(4) Plastic and Reconstructive Surgery Research (PRSR), Manchester Interdisciplinary Biocentre (MIB), Manchester, UK;(5) Virginia Bioinformatics Institute, Virginia Tech, Blacksburg, VA, USA;(6) Department of Computer Science, University of Tokyo, Tokyo, Japan;(7) 1.001 Manchester Interdisciplinary Biocentre, 131 Princess Street, Manchester, M1 7DN, UK
Abstract:Text mining methods have added considerably to our capacity to extract biological knowledge from the literature. Recently the field of systems biology has begun to model and simulate metabolic networks, requiring knowledge of the set of molecules involved. While genomics and proteomics technologies are able to supply the macromolecular parts list, the metabolites are less easily assembled. Most metabolites are known and reported through the scientific literature, rather than through large-scale experimental surveys. Thus it is important to recover them from the literature. Here we present a novel tool to automatically identify metabolite names in the literature, and associate structures where possible, to define the reported yeast metabolome. With ten-fold cross validation on a manually annotated corpus, our recognition tool generates an f-score of 78.49 (precision of 83.02) and demonstrates greater suitability in identifying metabolite names than other existing recognition tools for general chemical molecules. The metabolite recognition tool has been applied to the literature covering an important model organism, the yeast Saccharomyces cerevisiae, to define its reported metabolome. By coupling to ChemSpider, a major chemical database, we have identified structures for much of the reported metabolome and, where structure identification fails, been able to suggest extensions to ChemSpider. Our manually annotated gold-standard data on 296 abstracts are available as supplementary materials. Metabolite names and, where appropriate, structures are also available as supplementary materials.
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