TY - JOUR
T1 - Mass appeal
T2 - Metabolite identification in mass spectrometry-focused untargeted metabolomics
AU - Dunn, W.B.
AU - Brown, M.
AU - Erban, A.
AU - Kopka, J.
AU - Weber, R.J.M.
AU - Viant, M.R.
AU - Creek, D.J.
AU - Breitling, R.
AU - Hankemeier, T.
AU - Goodacre, R.
AU - Neumann, S.
N1 - Copyright 2013 Elsevier B.V., All rights reserved.
PY - 2013/1/1
Y1 - 2013/1/1
N2 - Metabolomics has advanced significantly in the past 10 years with important developments related to hardware, software and methodologies and an increasing complexity of applications. In discovery-based investigations, applying untargeted analytical methods, thousands of metabolites can be detected with no or limited prior knowledge of the metabolite composition of samples. In these cases, metabolite identification is required following data acquisition and processing. Currently, the process of metabolite identification in untargeted metabolomic studies is a significant bottleneck in deriving biological knowledge from metabolomic studies. In this review we highlight the different traditional and emerging tools and strategies applied to identify subsets of metabolites detected in untargeted metabolomic studies applying various mass spectrometry platforms. We indicate the workflows which are routinely applied and highlight the current limitations which need to be overcome to provide efficient, accurate and robust identification of metabolites in untargeted metabolomic studies. These workflows apply to the identification of metabolites, for which the structure can be assigned based on entries in databases, and for those which are not yet stored in databases and which require a de novo structure elucidation.
AB - Metabolomics has advanced significantly in the past 10 years with important developments related to hardware, software and methodologies and an increasing complexity of applications. In discovery-based investigations, applying untargeted analytical methods, thousands of metabolites can be detected with no or limited prior knowledge of the metabolite composition of samples. In these cases, metabolite identification is required following data acquisition and processing. Currently, the process of metabolite identification in untargeted metabolomic studies is a significant bottleneck in deriving biological knowledge from metabolomic studies. In this review we highlight the different traditional and emerging tools and strategies applied to identify subsets of metabolites detected in untargeted metabolomic studies applying various mass spectrometry platforms. We indicate the workflows which are routinely applied and highlight the current limitations which need to be overcome to provide efficient, accurate and robust identification of metabolites in untargeted metabolomic studies. These workflows apply to the identification of metabolites, for which the structure can be assigned based on entries in databases, and for those which are not yet stored in databases and which require a de novo structure elucidation.
UR - http://www.scopus.com/inward/record.url?partnerID=yv4JPVwI&eid=2-s2.0-84874345577&md5=78775b9082c853318a3cdf7e983d70b6
U2 - 10.1007/s11306-012-0434-4
DO - 10.1007/s11306-012-0434-4
M3 - Article
AN - SCOPUS:84874345577
SN - 1573-3882
VL - 9
SP - 44
EP - 66
JO - Metabolomics
JF - Metabolomics
IS - SUPPL.1
ER -