MetaboHunter: an automatic approach for identification of metabolites from super(1)H-NMR spectra of complex mixtures

Background: One-dimensional super(1)H-NMR spectroscopy is widely used for high-throughput characterization of metabolites in complex biological mixtures. However, the accurate identification of individual compounds is still a challenging task, particularly in spectral regions with higher peak densit...

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Veröffentlicht in:BMC bioinformatics 2011-01, Vol.12 (1), p.400-400
Hauptverfasser: Tulpan, Dan, Leger, Serge, Belliveau, Luc, Culf, Adrian, Cuperlovic-Culf, Miroslava
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Sprache:eng
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Zusammenfassung:Background: One-dimensional super(1)H-NMR spectroscopy is widely used for high-throughput characterization of metabolites in complex biological mixtures. However, the accurate identification of individual compounds is still a challenging task, particularly in spectral regions with higher peak densities. The need for automatic tools to facilitate and further improve the accuracy of such tasks, while using increasingly larger reference spectral libraries becomes a priority of current metabolomics research. Results: We introduce a web server application, called MetaboHunter, which can be used for automatic assignment of super(1)H-NMR spectra of metabolites. MetaboHunter provides methods for automatic metabolite identification based on spectra or peak lists with three different search methods and with possibility for peak drift in a user defined spectral range. The assignment is performed using as reference libraries manually curated data from two major publicly available databases of NMR metabolite standard measurements (HMDB and MMCD). Tests using a variety of synthetic and experimental spectra of single and multi metabolite mixtures show that MetaboHunter is able to identify, in average, more than 80% of detectable metabolites from spectra of synthetic mixtures and more than 50% from spectra corresponding to experimental mixtures. This work also suggests that better scoring functions improve by more than 30% the performance of MetaboHunter's metabolite identification methods. Conclusions: MetaboHunter is a freely accessible, easy to use and user friendly super(1)H-NMR-based web server application that provides efficient data input and pre-processing, flexible parameter settings, fast and automatic metabolite fingerprinting and results visualization via intuitive plotting and compound peak hit maps. Compared to other published and freely accessible metabolomics tools, MetaboHunter implements three efficient methods to search for metabolites in manually curated data from two reference libraries. Availability: http://www.nrcbioinformatics.ca/metabohunter/
ISSN:1471-2105
1471-2105
DOI:10.1186/1471-2105-12-400