eRah: A Computational Tool Integrating Spectral Deconvolution and Alignment with Quantification and Identification of Metabolites in GC/MS-Based Metabolomics

作者:Domingo Almenara Xavier; Brezmes Jesus; Vinaixa Maria; Samino Sara; Ramirez Noelia; Ramon Krauel Marta; Lerin Carles; Diaz Marta; Ibanez Lourdes; Correig Xavier; Perera Lluna Alexandre; Yanes Oscar
来源:Analytical Chemistry, 2016, 88(19): 9821-9829.
DOI:10.1021/acs.analchem.6b02927

摘要

Gas chromatography coupled to mass spectrometry (GC/MS) has been a long-standing approach used for identifying small molecules due to the highly reproducible ionization process of electron impact ionization (EI). However, the use of GC-BI MS in untargeted metabolomics produces large and complex data sets characterized by coeluting compounds and extensive fragmentation of molecular ions caused by the hard electron ionization. In order to identify and extract quantitative information on metabolites across multiple biological, samples, integrated computational workflows for data processing are needed: Here we introduce eRah, a free computational tool written in the open language R composed of five core functions: (i) noise filtering and baseline removal of GC/MS chromatograms, (ii) an innovative compound deconvolution process using multivariate analysis techniques based on compound match by local covariance (CMLC) and orthogonal signal deconvolution (OSD), alignment of mass spectra across samples, (iv) missing Compound recovery, and (v) identification of metabolites by spectral library matching using publicly available mass spectra. eRah Outputs a table with compound names,, matching scores and the integrated area of compounds for each sample. The automated capabilities of eRah are demonstrated by: the analysis of GC-time-of-flight (TOP) MS data from plasma samples of adolescents with hyperinsulinaemic androgen excess and healthy controls. The quantitative results of eRah are compared to centWave, the Peak-picking algorithm implemented in the widely used XCMS package, MetAlign, and ChromaTOF software. Significantly dysregulated metabolites are further validated using pure standards and targeted analysis by GC-triple quadrupole (QqQ) MS, LG-QqQ, and NMR. eRah is freely available at http://CRAN.R-project.org/package=erah=erah.

  • 出版日期2016-10-4