2013
DOI: 10.1021/pr301053d
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Hybrid Feature Detection and Information Accumulation Using High-Resolution LC–MS Metabolomics Data

Abstract: Feature detection is a critical step in the preprocessing of Liquid Chromatography – Mass Spectrometry (LC-MS) metabolomics data. Currently, the predominant approach is to detect features using noise filters and peak shape models based on the data at hand alone. Databases of known metabolites and historical data contain information that could help boost the sensitivity of feature detection, especially for low-concentration metabolites. However, utilizing such information in targeted feature detection may cause… Show more

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Cited by 79 publications
(66 citation statements)
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“…The two algorithms were the adaptive processing of liquid chromatography mass spectrometry (apLCMS, v. 6.0.1) and the xMSanalyzer (v. 2.0.6.1) packages, which were developed for use in R (v. 3.0.1) (44, 45). The apLCMS program was run in ‘hybrid’ mode, which allowed us to input information related to known metabolite masses and, thus, improve extraction efficiency of those potential metabolites from chromatograms (46). The list of known metabolites was comprised of monoisotopic masses from HMDB (v. 3.6) and the US Environmental Protection Agency’s Master List of Compounds Emitted by Mobile Sources.…”
Section: Methodsmentioning
confidence: 99%
“…The two algorithms were the adaptive processing of liquid chromatography mass spectrometry (apLCMS, v. 6.0.1) and the xMSanalyzer (v. 2.0.6.1) packages, which were developed for use in R (v. 3.0.1) (44, 45). The apLCMS program was run in ‘hybrid’ mode, which allowed us to input information related to known metabolite masses and, thus, improve extraction efficiency of those potential metabolites from chromatograms (46). The list of known metabolites was comprised of monoisotopic masses from HMDB (v. 3.6) and the US Environmental Protection Agency’s Master List of Compounds Emitted by Mobile Sources.…”
Section: Methodsmentioning
confidence: 99%
“…Mouse fecal samples and P. UF1 bacterial cultures were collected and analyzed at the Department of Medicine Clinical Biomarkers Laboratory at Emory University (27,103), as described in Supplemental Experimental Procedures.…”
Section: Author Contributionsmentioning
confidence: 99%
“…Holistic systems biology approaches are supporting the integration of large data sets from different disciplines [24,[38][39][40]. The state of the art is moving forward quickly toward the discovery of complex relationships through the integration of different 'omics as well as other experimental datasets, and mathematical modeling and computational biology experts working with such datasets can provide insights to guide hypothesis driven experimentation [106].…”
Section: Systems Biology Approachesmentioning
confidence: 99%
“…Also relevant for developing P. vivax vaccines, current metabolomics technologies and data ana lysis schemes using highresolution mass spectrometry are predic ting the identification of as many as 20,000 chemicals in small volumes of serum or plasma [38]. Little is known about the molecular mechanisms involved in the pathogenesis of P. vivax malaria, whether resulting solely from P. vivax or coinfections and morbidities.…”
Section: Systems Biology Approachesmentioning
confidence: 99%
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