Development of High-Performance Chemical Isotope Labeling LC–MS for
Profiling the Human Fecal Metabolome
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Abstract
Human fecal samples contain endogenous
human metabolites, gut microbiota
metabolites, and other compounds. Profiling the fecal metabolome can
produce metabolic information that may be used not only for disease
biomarker discovery, but also for providing an insight about the relationship
of the gut microbiome and human health. In this work, we report a
chemical isotope labeling liquid chromatography–mass spectrometry
(LC–MS) method for comprehensive and quantitative analysis
of the amine- and phenol-containing metabolites in fecal samples.
Differential <sup>13</sup>C<sub>2</sub>/<sup>12</sup>C<sub>2</sub>-dansyl labeling of the amines and phenols was used to improve LC
separation efficiency and MS detection sensitivity. Water, methanol,
and acetonitrile were examined as an extraction solvent, and a sequential
water–acetonitrile extraction method was found to be optimal.
A step-gradient LC–UV setup and a fast LC–MS method
were evaluated for measuring the total concentration of dansyl labeled
metabolites that could be used for normalizing the sample amounts
of individual samples for quantitative metabolomics. Knowing the total
concentration was also useful for optimizing the sample injection
amount into LC–MS to maximize the number of metabolites detectable
while avoiding sample overloading. For the first time, dansylation
isotope labeling LC–MS was performed in a simple time-of-flight
mass spectrometer, instead of high-end equipment, demonstrating the
feasibility of using a low-cost instrument for chemical isotope labeling
metabolomics. The developed method was applied for profiling the amine/phenol
submetabolome of fecal samples collected from three families. An average
of 1785 peak pairs or putative metabolites were found from a 30 min
LC–MS run. From 243 LC–MS runs of all the fecal samples,
a total of 6200 peak pairs were detected. Among them, 67 could be
positively identified based on the mass and retention time match to
a dansyl standard library, while 581 and 3197 peak pairs could be
putatively identified based on mass match using MyCompoundID against
a Human Metabolome Database and an Evidence-based Metabolome Library,
respectively. This represents the most comprehensive profile of the
amine/phenol submetabolome ever detected in human fecal samples. The
quantitative metabolome profiles of individual samples were shown
to be useful to separate different groups of samples, illustrating
the possibility of using this method for fecal metabolomics studies