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Author Notes:

Correspondence: dpjones@emory.edu

KU, QAS and DPJ conceived and coordinated the software design; KU developed the software with advice from QAS, KMG, WSP, and DPJ; QAS generated metabolomics data for algorithm development; FHS reviewed the MS/MS data; KU analyzed the data with advice from QAS, KMG, FHS, and DPJ; WSP set up the computational environment for data transfer and analysis; KU drafted the manuscript with significant contributions from TY, QAS, FHS, and DPJ and the content was approved by all authors.

All authors read and approved the final manuscript.

The authors declare that they have no competing interests.

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Research Funding:

This work was supported by National Institutes of Health research grants P01ES016731 (DPJ), R01AG038746 (DPJ), R01ES011195 (DPJ), R01ES009047 (DPJ).

xMSanalyzer: automated pipeline for improved feature detection and downstream analysis of large-scale, non-targeted metabolomics data

Tools:

Journal Title:

BMC Bioinformatics

Volume:

Volume 14, Number 15

Publisher:

, Pages 1-12

Type of Work:

Article | Final Publisher PDF

Abstract:

Background Detection of low abundance metabolites is important for de novo mapping of metabolic pathways related to diet, microbiome or environmental exposures. Multiple algorithms are available to extract m/z features from liquid chromatography-mass spectral data in a conservative manner, which tends to preclude detection of low abundance chemicals and chemicals found in small subsets of samples. The present study provides software to enhance such algorithms for feature detection, quality assessment, and annotation. Results xMSanalyzer is a set of utilities for automated processing of metabolomics data. The utilites can be classified into four main modules to: 1) improve feature detection for replicate analyses by systematic re-extraction with multiple parameter settings and data merger to optimize the balance between sensitivity and reliability, 2) evaluate sample quality and feature consistency, 3) detect feature overlap between datasets, and 4) characterize high-resolution m/z matches to small molecule metabolites and biological pathways using multiple chemical databases. The package was tested with plasma samples and shown to more than double the number of features extracted while improving quantitative reliability of detection. MS/MS analysis of a random subset of peaks that were exclusively detected using xMSanalyzer confirmed that the optimization scheme improves detection of real metabolites. Conclusions xMSanalyzer is a package of utilities for data extraction, quality control assessment, detection of overlapping and unique metabolites in multiple datasets, and batch annotation of metabolites. The program was designed to integrate with existing packages such as apLCMS and XCMS, but the framework can also be used to enhance data extraction for other LC/MS data software.

Copyright information:

© 2013 Uppal et al.; licensee BioMed Central Ltd.

This is an Open Access work distributed under the terms of the Creative Commons Attribution 2.0 Generic License (http://creativecommons.org/licenses/by/2.0/).

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