3 research outputs found
High Throughput Screening Method for Systematic Surveillance of Drugs of Abuse by Multisegment Injection–Capillary Electrophoresis–Mass Spectrometry
New
technologies are urgently required for reliable drug screening
given a worldwide epidemic of prescription drug abuse and its devastating
socioeconomic impacts on public health. Primary screening of drugs
of abuse (DoA) currently relies on immunoassays that are prone to
bias and are not applicable to detect an alarming array of psychoactive
stimulants, tranquilizers, and synthetic opioids. These limitations
impact patient safety when monitoring for medication compliance, drug
substitution, or misuse/abuse and require follow-up confirmatory testing
by more specific yet lower throughput instrumental methods. Herein,
we introduce a high throughput platform for nontargeted screening
of a broad spectrum of DoA and their metabolites based on multisegment
injection–capillary electrophoresis–mass spectrometry
(MSI–CE–MS). We demonstrate that MSI–CE–MS
enables serial injections of 10 samples within a single run (<3
min/sample) where multiplexed electrophoretic separations are coupled
to high resolution MS with full-scan data acquisition. Unambiguous
drug identification was achieved by four or more independent parameters,
including comigration with a deuterated internal standard or in silico
prediction of electromigration behavior together with accurate mass,
most likely molecular formula, as well as MS/MS as required for confirmation
testing. Acceptable precision was demonstrated for over 50 DoA at
3 concentration levels over 4 days (median coefficient of variance
= 13%, <i>n</i> = 117) with minimal ion suppression, isobaric
interferences, and sample carry-over (<1%). This approach offers
a rapid yet accurate method for simultaneous detection and identification
of DoA at their recommended screening cutoff levels in human urine
while allowing for systematic surveillance, specimen verification,
and retrospective testing of designer drugs that elude conventional
drug tests
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
Serum and Adipose Tissue Amino Acid Homeostasis in the Metabolically Healthy Obese
A subgroup
of obese individuals, referred to as metabolically healthy
obese (MHO), have preserved insulin sensitivity and a normal lipid
profile despite being obese. The molecular basis for this improved
cardiometabolic profile remains unclear. Our objective was to integrate
metabolite and gene expression profiling to elucidate the molecular
distinctions between MHO and metabolically unhealthy obese (MUO) phenotypes.
A subset of individuals were selected from the Diabetes Risk Assessment
study and classified into three groups using anthropometric and clinical
measurements: lean healthy (LH), MHO, and MUO. Serum metabolites were
profiled using gas chromatography coupled to mass spectrometry. Multivariate
data analysis uncovered metabolites that differed between groups,
and these were subsequently validated by capillary electrophoresis
coupled to mass spectrometry. Subcutaneous adipose tissue (SAT) gene
expression profiling using microarrays was performed in parallel.
Amino acids were the most relevant class of metabolites distinguishing
MHO from MUO individuals. Serum levels of glutamic acid, valine, and
isoleucine were positively associated (i.e., LH < MHO < MUO)
with homeostasis model assessment-insulin resistance (HOMA-IR) and
glycated hemoglobin (HbA1c) values, while leucine was only correlated
with HOMA-IR. The glutamine-to-glutamic acid ratio and glycine were
inversely correlated (i.e., LH > MHO > MUO) with HbA1c values.
Concomitantly,
SAT gene expression profiling revealed that genes related to branched-chain
amino acid catabolism and the tricarboxylic acid cycle were less down-regulated
in MHO individuals compared to MUO individuals. Together, this integrated
analysis revealed that MHO individuals have an intermediate amino
acid homeostasis compared to LH and MUO individuals