1 research outputs found
Temporal Signal Pattern Recognition in Mass Spectrometry: A Method for Rapid Identification and Accurate Quantification of Biomarkers for Inborn Errors of Metabolism with Quality Assurance
Mass
spectrometry (MS)-based metabolomic initiatives that use conventional
separation techniques are limited by low sample throughput and complicated
data processing that contribute to false discoveries. Herein, we introduce
a new strategy for unambiguous identification and accurate quantification
of biomarkers for inborn errors of metabolism (IEM) from dried blood
spots (DBS) with quality assurance. A multiplexed separation platform
based on multisegment injection-capillary electrophoresis-mass spectrometry
(MSI-CE-MS) was developed to provide comparable sample throughput
to flow injection analysis-tandem MS (FIA-MS/MS) but with greater
selectivity as required for confirmatory testing and discovery-based
metabolite profiling of volume-restricted biospecimens. Mass spectral
information is encoded temporally within a separation by serial injection
of three or more sample pairs, each having a unique dilution pattern,
alongside a quality control (QC) that serves as a reference in every
run to facilitate between-sample comparisons and/or batch correction
due to system drift. Optimization of whole blood extraction conditions
on DBS filter paper cut-outs was first achieved to maximize recovery
of a wide range of polar metabolites from DBS extracts. An interlaboratory
comparison study was also conducted using a proficiency test and retrospective
neonatal DBS that demonstrated good agreement between MSI-CE-MS and
validated FIA-MS/MS methods within an accredited facility. Our work
demonstrated accurate identification of various IEM based on reliable
measurement of a panel of primary or secondary biomarkers above an
upper cutoff concentration limit for presumptive screen-positive cases
without stable isotope-labeled reagents. Additionally, nontargeted
metabolite profiling by MSI-CE-MS with temporal signal pattern recognition
revealed new biomarkers for early detection of galactosemia, such
as <i>N</i>-galactated amino acids, that are a novel class
of pathognomonic marker due to galactose stress in affected neonates