TY - JOUR
T1 - Autonomous metabolomics for rapid metabolite identification in global profiling
AU - Benton, H. Paul
AU - Ivanisevic, Julijana
AU - Mahieu, Nathaniel G.
AU - Kurczy, Michael E.
AU - Johnson, Caroline H.
AU - Franco, Lauren
AU - Rinehart, Duane
AU - Valentine, Elizabeth
AU - Gowda, Harsha
AU - Ubhi, Baljit K.
AU - Tautenhahn, Ralf
AU - Gieschen, Andrew
AU - Fields, Matthew W.
AU - Patti, Gary J.
AU - Siuzdak, Gary
N1 - Publisher Copyright:
© 2014 American Chemical Society.
PY - 2015/1/20
Y1 - 2015/1/20
N2 - An autonomous metabolomic workflow combining mass spectrometry analysis with tandem mass spectrometry data acquisition was designed to allow for simultaneous data processing and metabolite characterization. Although previously tandem mass spectrometry data have been generated on the fly, the experiments described herein combine this technology with the bioinformatic resources of XCMS and METLIN. As a result of this unique integration, we can analyze large profiling datasets and simultaneously obtain structural identifications. Validation of the workflow on bacterial samples allowed the profiling on the order of a thousand metabolite features with simultaneous tandem mass spectra data acquisition. The tandem mass spectrometry data acquisition enabled automatic search and matching against the METLIN tandem mass spectrometry database, shortening the current workflow from days to hours. Overall, the autonomous approach to untargeted metabolomics provides an efficient means of metabolomic profiling, and will ultimately allow the more rapid integration of comparative analyses, metabolite identification, and data analysis at a systems biology level.
AB - An autonomous metabolomic workflow combining mass spectrometry analysis with tandem mass spectrometry data acquisition was designed to allow for simultaneous data processing and metabolite characterization. Although previously tandem mass spectrometry data have been generated on the fly, the experiments described herein combine this technology with the bioinformatic resources of XCMS and METLIN. As a result of this unique integration, we can analyze large profiling datasets and simultaneously obtain structural identifications. Validation of the workflow on bacterial samples allowed the profiling on the order of a thousand metabolite features with simultaneous tandem mass spectra data acquisition. The tandem mass spectrometry data acquisition enabled automatic search and matching against the METLIN tandem mass spectrometry database, shortening the current workflow from days to hours. Overall, the autonomous approach to untargeted metabolomics provides an efficient means of metabolomic profiling, and will ultimately allow the more rapid integration of comparative analyses, metabolite identification, and data analysis at a systems biology level.
UR - https://www.scopus.com/pages/publications/84922463714
U2 - 10.1021/ac5025649
DO - 10.1021/ac5025649
M3 - Article
C2 - 25496351
AN - SCOPUS:84922463714
SN - 0003-2700
VL - 87
SP - 884
EP - 891
JO - Analytical Chemistry
JF - Analytical Chemistry
IS - 2
ER -