An ultra-fast metabolite prediction algorithm
journal contribution
posted on 2025-08-01, 00:07 authored by ZR Yang, M GrantSmall molecules are central to all biological processes and metabolomics becoming an increasingly important discovery tool. Robust, accurate and efficient experimental approaches are critical to supporting and validating predictions from post-genomic studies. To accurately predict metabolic changes and dynamics, experimental design requires multiple biological replicates and usually multiple treatments. Mass spectra from each run are processed and metabolite features are extracted. Because of machine resolution and variation in replicates, one metabolite may have different implementations (values) of retention time and mass in different spectra. A major impediment to effectively utilizing untargeted metabolomics data is ensuring accurate spectral alignment, enabling precise recognition of features (metabolites) across spectra. Existing alignment algorithms use either a global merge strategy or a local merge strategy. The former delivers an accurate alignment, but lacks efficiency. The latter is fast, but often inaccurate. Here we document a new algorithm employing a technique known as quicksort. The results on both simulated data and real data show that this algorithm provides a dramatic increase in alignment speed and also improves alignment accuracy. © 2012 Yang, Grant.
Funding
BB/C514115/1
BB/E010334/1
BB/F005903/1
Biotechnology and Biological Sciences Research Council
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© 2012 Yang, Grant. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.Notes
This is the final published version. Available from the Public Library of Science via the DOI in this record.External DOI
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PLoS ONEPublisher
Public Library of ScienceVersion
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enFCD date
2019-03-15T08:41:11ZFOA date
2019-03-15T08:43:42ZCitation
Vol. 7 (6), article e39158Department
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