posted on 2016-01-05, 00:00authored byJordi Capellades, Miriam Navarro, Sara Samino, Marta Garcia-Ramirez, Cristina Hernandez, Rafael Simo, Maria Vinaixa, Oscar Yanes
Studying
the flow of chemical moieties through the complex set
of metabolic reactions that happen in the cell is essential to understanding
the alterations in homeostasis that occur in disease. Recently, LC/MS-based
untargeted metabolomics and isotopically labeled metabolites have
been used to facilitate the unbiased mapping of labeled moieties through
metabolic pathways. However, due to the complexity of the resulting
experimental data sets few computational tools are available for data
analysis. Here we introduce geoRge, a novel computational approach
capable of analyzing untargeted LC/MS data from stable isotope-labeling
experiments. geoRge is written in the open language R and runs on
the output structure of the XCMS package, which is in widespread use.
As opposed to the few existing tools, which use labeled samples to
track stable isotopes by iterating over all MS signals using the theoretical
mass difference between the light and heavy isotopes, geoRge uses
unlabeled and labeled biologically equivalent samples to compare isotopic
distributions in the mass spectra. Isotopically enriched compounds
change their isotopic distribution as compared to unlabeled compounds.
This is directly reflected in a number of new m/z peaks and higher intensity peaks in the mass spectra of
labeled samples relative to the unlabeled equivalents. The automated
untargeted isotope annotation and relative quantification capabilities
of geoRge are demonstrated by the analysis of LC/MS data from a human
retinal pigment epithelium cell line (ARPE-19) grown on normal and
high glucose concentrations mimicking diabetic retinopathy conditions
in vitro. In addition, we compared the results of geoRge with the
outcome of X13CMS, since both approaches rely entirely
on XCMS parameters for feature selection, namely m/z and retention time values. To ensure data traceability
and reproducibility, and enabling for comparison with other existing
and future approaches, raw LC/MS files have been deposited in MetaboLights
(MTBLS213) and geoRge is available as an R script at https://github.com/jcapelladesto/geoRge.