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 metabolomics study into infuenza virus infection by HRAM Q-TOF analysis

Posters | 2019 | ShimadzuInstrumentation
LC/TOF, LC/HRMS, LC/MS, LC/MS/MS
Industries
Clinical Research
Manufacturer
Shimadzu

Summary

Importance of the Topic


Analytical metabolomics provides insight into host–pathogen interactions by profiling small molecules in biological fluids. Influenza A virus infections cause complex metabolic changes tied to immune responses. Untargeted high-resolution metabolomics enables detection of diverse metabolites, facilitating understanding of disease progression and potential biomarkers.

Objectives and Study Overview


This study aimed to track serum metabolic alterations in swine following H1N1 influenza A infection over a 13-day period. The focus was on developing and applying a rapid, untargeted metabolomics workflow using high-resolution accurate-mass Q-TOF instrumentation to compare pre-infection and post-infection profiles and to characterize innate, adaptive, and recovery phases.

Methodology


  • Animal model: Eight pigs were acclimatized and intranasally infected with H1N1pdm09; serum samples were collected pre-infection and at 1,2,3,4,5,6,7,9,11,13 days post-infection.
  • Sample preparation: Serum extracts processed for untargeted LC-MS analysis.
  • Data processing: Component detection via the Find algorithm in Insight Explore; compound table construction and automated peak integration; manual review ensured 716 reliable features.
  • Identification: Formula prediction and MS/MS comparison against METLIN; isomer separation by retention time and diagnostic fragments.
  • Statistical analysis: Univariate and multivariate trends assessed using MetaboAnalyst.

Instrumentation


  • Shimadzu LCMS-9030 high-resolution accurate-mass Q-TOF.
  • LC-MS settings: MS1 scan 100–1000 Da and DIA-MS/MS with 44 sequential windows over 75–1000 Da, cycle time <1 s.
  • Quality control: Randomized injections, pooled QC samples, and external mass calibration.

Main Results and Discussion


Despite robust detection of 716 serum components and rigorous data analysis, metabolic profiles showed high inter-group variability. Expected perturbations around days 3–5 post-infection were not consistently observed. Representative lipids (sphingomyelin d18:0/18:1) and small molecules (hippuric acid) exhibited minor fluctuations without clear infection trends.

Practical Benefits and Applications


  • Demonstrates a rapid, high-throughput untargeted metabolomics workflow suitable for infection studies.
  • Provides a reference pipeline for serum analysis in veterinary and translational research.

Future Trends and Applications


  • Increasing sample size and biological replicates to reduce variability.
  • Integrating targeted assays for candidate biomarkers.
  • Employing advanced chemometric and machine learning tools for pattern recognition.
  • Expanding spectral libraries and in silico MS/MS prediction to improve identification coverage.
  • Combining metabolomics with proteomics and transcriptomics for multi-omics insights.

Conclusion


A robust untargeted LC-Q-TOF metabolomics method was established and applied to track influenza A infection in swine serum. Although substantial metabolic shifts were not detected under current experimental conditions, the workflow offers a foundation for future infection metabolomics studies with optimized design and deeper analysis.

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

Downloadable PDF for viewing
 

Similar PDF

Toggle
Ethanol-induced metabolomic differences in mice using HRAM Q-TOF analysis
PO-CON1887E Ethanol-induced metabolomic differences in mice using HRAM Q-TOF analysis ASMS 2019 Stephane Moreau1, Georgios Theodoridis2, Helen G. Gika3, Ian D Wilson4, Emily Armitage5, Olga Deda3, Christina Virgiliou2, Neil Loftus5 1 Shimadzu Europe GmbH, Duisburg, Germany 2 Department of Chemistry,…
Key words
ethanol, ethanolmice, micemetabolomic, metabolomicinduced, inducedtreated, treatedhram, hrambrain, braindha, dhatof, tofexposure, exposuredifferences, differencesacute, acuteadenosine, adenosinedocosahexaenoic, docosahexaenoiccontrol
To gain new biological insights - Virus research solutions
To gain new biological insights - Virus research solutions
2022|Thermo Fisher Scientific|Brochures and specifications
Go beyond To gain new biological insights Virus research solutions An urgent need for expanded virus research Harness the power of omics to accelerate virus research. Thermo Fisher Scientific’s proteomics, glycomics, lipidomics and metabolomics mass spectrometry workflows provide virus researchers…
Key words
thermo, thermovirus, virusscientific, scientificviral, viralneo, neosoftware, softwarevanquish, vanquishuhplc, uhplcdiscoverer, discovererinsights, insightsorbitrap, orbitrapproteome, proteometmt, tmtprotein, proteineasypep
Automating component detection of small molecules in complex mixtures using HRAM Q-TOF data
PO-CON1886E Automating component detection of small molecules in complex mixtures using HRAM Q-TOF data ASMS 2019 Simon Ashton1; Kirsten Hobby1; Alan Barnes1; Neil Loftus1 1 Shimadzu Corporation, Manchester, United Kingdom Automating component detection of small molecules in complex mixtures using…
Key words
hram, hramcomponent, componentmixtures, mixturesautomating, automatingcomplex, complextof, tofdoa, doadetection, detectionalgorithm, algorithmmolecules, moleculessmall, smalldata, datadia, diascreening, screeningapplied
Untargeted Screening of Per- and Polyfluoroalkyl Substances by HRAM-DIA Method on LCMS-9030
PFAS untargeted screening / LCMS-9030 Application News Untargeted Screening of Per- and Polyfluoroalkyl Substances by HRAM-DIA Method on LCMS-9030 Zhaoqi Zhan1, Zhe Sun1, Jade Ting Shuen Chan2 1 Shimadzu (Asia Pacific) Pte. Ltd, Singapore User Benefits ◆ A sensitive untargeted…
Key words
dia, diaconfirmed, confirmedspectrum, spectrumassign, assignfound, founddeconvoluted, deconvolutedpfas, pfaspfpa, pfpaprecursor, precursorpfoa, pfoaformula, formulalibrary, librarypfba, pfbapftea, pfteadata
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