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Download fileStatistical Correlations between NMR Spectroscopy and Direct Infusion FT-ICR Mass Spectrometry Aid Annotation of Unknowns in Metabolomics
journal contribution
posted on 2016-03-01, 00:00 authored by Jie Hao, Manuel Liebeke, Ulf Sommer, Mark R. Viant, Jacob G. Bundy, Timothy M. D. EbbelsNMR spectroscopy and mass spectrometry
are the two major analytical
platforms for metabolomics, and both generate substantial data with
hundreds to thousands of observed peaks for a single sample. Many
of these are unknown, and peak assignment is generally complex and
time-consuming. Statistical correlations between data types have proven
useful in expediting this process, for example, in prioritizing candidate
assignments. However, this approach has not been formally assessed
for the comparison of direct-infusion mass spectrometry (DIMS) and
NMR data. Here, we present a systematic analysis of a sample set (tissue
extracts), and the utility of a simple correlation threshold to aid
metabolite identification. The correlations were surprisingly successful
in linking structurally related signals, with 15 of 26 NMR-detectable
metabolites having their highest correlation to a cognate MS ion.
However, we found that the distribution of the correlations was highly
dependent on the nature of the MS ion, such as the adduct type. This
approach should help to alleviate this important bottleneck where
both 1D NMR and DIMS data sets have been collected.