LCMS
More information
WebinarsAbout usContact usTerms of use
LabRulez s.r.o. All rights reserved. Content available under a CC BY-SA 4.0 Attribution-ShareAlike

A Q-TOF Generated, Metabolomics Specific LC/MS/MS Library Facilitates Identification of Metabolites in Malaria Infected Erythrocytes

Applications | 2011 | Agilent TechnologiesInstrumentation
LC/TOF, LC/HRMS, LC/MS, LC/MS/MS
Industries
Clinical Research
Manufacturer
Agilent Technologies

Summary

Significance of the Topic


Amino acids such as arginine, ornithine, and citrulline are central to the metabolic pathways of Plasmodium falciparum in infected red blood cells. Precise metabolite identification in malaria research can reveal parasite biology, enable discovery of drug targets, and improve understanding of disease mechanisms. Enhanced LC‐MS/MS spectral libraries and data‐processing workflows are critical for elevating confidence in untargeted metabolomics outcomes.

Objectives and Study Overview


This study evaluated Agilent Technologies’ new METLIN Personal Compound Database and Library (PCDL) in confirming the identities of metabolites provisionally identified from global untargeted analyses of infected (IRBC) and noninfected red blood cells (NRBC). The primary goal was to verify key amino acids involved in malaria metabolism using targeted LC‐QTOF MS/MS matching against a curated library.

Methodology and Instrumentation


Untargeted discovery involved sample preparation of IRBC and NRBC extracts, LC separation, MS data acquisition, and statistical analysis. Features differing significantly (p<0.05, Wilcoxon test) between groups were provisionally annotated by accurate mass and retention time matching. Targeted MS/MS acquisition at 10 and 20 eV collision energies was performed using an inclusion list for ions of interest, followed by spectral matching in Agilent MassHunter Qualitative software.

Instrumentation


  • Liquid Chromatography: Agilent 1290 Infinity with Zorbax SB‐C8 guard (2.1×30 mm, 3.5 µm) and Zorbax SB‐Aq analytical column (2.1×50 mm, 1.8 µm) at 60 °C.
  • Mobile Phase: A = 0.2% acetic acid in water; B = 0.2% acetic acid in methanol; gradient from 2% to 98% B over 13 min, hold 6 min.
  • Injection: 10 µL at 4 °C autosampler; flow rate 0.6 mL/min.
  • Mass Spectrometry: Agilent 6530 Q‐TOF in extended dynamic range mode; positive/negative ionization; drying gas 9 L/min at 325 °C; nebulizer 45 psig; capillary 4000 V (pos)/3500 V (neg); fragmentor 140 V; collision energies 10 and 20 eV; m/z range 25–1700.
  • Data Processing: MassHunter Qualitative B.04 with Find by Molecular Feature; Mass Profiler Professional for statistical analysis; METLIN PCDL for MS/MS matching (±10 ppm precursor, ±35 ppm product tolerances).

Key Results and Discussion


Wilcoxon t‐test highlighted multiple differential features between IRBC and NRBC. Arginine (m/z 175), ornithine (m/z 133), and citrulline (m/z 176) showed distinct abundance patterns—arginine was depleted in IRBCs. Targeted MS/MS spectra matched library entries with reverse scores >80 and forward scores up to 100, confirming compound identities despite low‐intensity fragments. Acquiring spectra at two collision energies improved matching reliability by capturing complementary fragments.

Benefits and Practical Applications


The integration of MS/MS spectral libraries into metabolomics workflows strengthens compound annotation confidence and accelerates confirmation of key biomarkers. This approach streamlines data interpretation in infectious‐disease research and can be extended to diverse metabolomic applications in clinical and industrial laboratories.

Future Trends and Potential Applications


Expanding spectral libraries with broader chemical diversity and incorporating machine‐learning–based spectral deconvolution will further enhance de novo identification. Integration with ion mobility separation and improved software algorithms will support deeper coverage of complex biological matrices and real‐time decision‐making in drug discovery and diagnostics.

Conclusion


The study demonstrates the effective use of Agilent’s METLIN MS/MS library and data processing tools to confirm amino acid identities in malaria‐infected erythrocytes. Targeted LC‐QTOF MS/MS matching at multiple collision energies provides robust metabolite confirmation, advancing the reliability of untargeted metabolomics in infectious disease research.

Reference


  • Fischer S and Sana TR. An LC/MS Metabolomics Discovery Workflow for Malaria-Infected Red Blood Cells Using Mass Profiler Professional Software and LC-Triple Quadrupole MRM Confirmation. Agilent Application Note 5990-6790EN, 2011.

Content was automatically generated from an orignal PDF document using AI and may contain inaccuracies.

Downloadable PDF for viewing
 

Similar PDF

Toggle
An LC/MS Metabolomics Discovery Workflow for Malaria-Infected Red Blood Cells Using Mass Profiler Professional Software and LC-Triple Quadrupole MRM Confirmation
An LC/MS Metabolomics Discovery Workflow for Malaria-Infected Red Blood Cells Using Mass Profiler Professional Software and LC-Triple Quadrupole MRM Confi rmation Application Note Clinical Research Authors Theodore Sana Steve Fischer Shane Tichy Agilent Technologies, Inc. Santa Clara, CA USA Abstract…
Key words
nrbc, nrbcirbc, irbcpathway, pathwaymining, miningarginine, arginineabundance, abundancetargeted, targetedentities, entitiesdata, dataprofiler, profilerconfi, confirmation, rmationpos, posmetabolites, metabolitesdiscovery
Metabolomics Batch Data Analysis Workfl ow to Characterize Differential Metabolites in Bacteria
Metabolomics Batch Data Analysis Workflow to Characterize Differential Metabolites in Bacteria Application Note Authors Abstract Yuqin Dai and Steven M. Fischer An accurate mass Q-TOF LC/MS workflow for discovery metabolomics was used Agilent Technologies, Inc. to study a bacterium in…
Key words
differential, differentialstationary, stationaryearly, earlybacterium, bacteriumlate, latetof, tofmetabolomics, metabolomicsprofiling, profilingprofinder, profinderdata, datampp, mppagilent, agilentfeatures, featuresworkflow, workflowbatch
Comprehensive Food Profiling Combining High Resolution LC/MS and GC/MS Analyses
Comprehensive Food Profiling Combining High Resolution LC/MS and GC/MS Analyses Application Note Metabolomics Authors Abstract Zijuan Lai, Mine Palazoglu, and A comprehensive untargeted approach was applied to studying differences in food Oliver Fiehn compositions from three distinct diets. To achieve…
Key words
were, werevegetarian, vegetarianlipid, lipidmpp, mpptof, tofmetabolites, metabolitesfood, foodidentification, identificationdata, datacompound, compoundmetabolomics, metabolomicsannotation, annotationplate, platefatty, fattyspectrum
Creating High Quality Metabolite Libraries for Fast Metabolomics Screening and Identification
Creating High Quality Metabolite Libraries for Fast Metabolomics Screening and Identification Poster Note 64467 the field of metabolomics, especially in the area of life sciences research. Compared to genomics and proteomics, identification of endogenous metabolites continues to pose great limitations…
Key words
metabolites, metabolitesmetabolite, metaboliteprofiling, profilinglibrary, libraryidentification, identificationscreening, screeningcompound, compounddatabase, databasezdf, zdfredundancy, redundancylist, listinformation, informationspecified, specifiedconfidence, confidenceretention
Other projects
GCMS
ICPMS
Follow us
More information
WebinarsAbout usContact usTerms of use
LabRulez s.r.o. All rights reserved. Content available under a CC BY-SA 4.0 Attribution-ShareAlike