Frontiers in Molecular Biosciences (Nov 2022)

Identification of metabolic fingerprints in severe obstructive sleep apnea using gas chromatography–Mass spectrometry

  • Mohit,
  • Mohit,
  • Manendra Singh Tomar,
  • Fabrizio Araniti,
  • Ankit Pateriya,
  • Ram Awadh Singh Kushwaha,
  • Bhanu Pratap Singh,
  • Sunit Kumar Jurel,
  • Raghuwar Dayal Singh,
  • Ashutosh Shrivastava,
  • Pooran Chand

DOI
https://doi.org/10.3389/fmolb.2022.1026848
Journal volume & issue
Vol. 9

Abstract

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Objective: Obstructive sleep apnea (OSA) is considered a major sleep-related breathing problem with an increasing prevalence rate. Retrospective studies have revealed the risk of various comorbidities associated with increased severity of OSA. This study aims to identify novel metabolic biomarkers associated with severe OSA.Methods: In total, 50 cases of OSA patients (49.74 ± 11.87 years) and 30 controls (39.20 ± 3.29 years) were included in the study. According to the polysomnography reports and questionnaire-based assessment, only patients with an apnea–hypopnea index (AHI >30 events/hour) exceeding the threshold representing severe OSA patients were considered for metabolite analysis. Plasma metabolites were analyzed using gas chromatography–mass spectrometry (GC-MS).Results: A total of 92 metabolites were identified in the OSA group compared with the control group after metabolic profiling. Metabolites and their correlated metabolic pathways were significantly altered in OSA patients with respect to controls. The fold-change analysis revealed markers of chronic kidney disease, cardiovascular risk, and oxidative stress-like indoxyl sulfate, 5-hydroxytryptamine, and 5-aminolevulenic acid, respectively, which were significantly upregulated in OSA patients.Conclusion: Identifying these metabolic signatures paves the way to monitor comorbid disease progression due to OSA. Results of this study suggest that blood plasma-based biomarkers may have the potential for disease management.

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