4.6 Article

Comprehensive Meta-Analysis of COVID-19 Global Metabolomics Datasets

Journal

METABOLITES
Volume 11, Issue 1, Pages -

Publisher

MDPI
DOI: 10.3390/metabo11010044

Keywords

COVID-19; metabolomics; mass spectrometry; meta-analysis; coronavirus

Funding

  1. Genome Canada
  2. Genome Quebec, US National Institutes of Health [U01 CA235493]
  3. Natural Sciences and Engineering Research Council of Canada (NSERC)
  4. Canada Research Chairs (CRC) Program

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This study conducted a comprehensive meta-analysis of global metabolomics datasets from three countries to identify key metabolic signatures characterizing COVID-19 disease progression and clinical outcomes, providing important insights for clinical care and therapeutics development.
The novel coronavirus SARS-CoV-2 has spread across the world since 2019, causing a global pandemic. The pathogenesis of the viral infection and the associated clinical presentations depend primarily on host factors such as age and immunity, rather than the viral load or its genetic variations. A growing number of omics studies have been conducted to characterize the host immune and metabolic responses underlying the disease progression. Meta-analyses of these datasets have great potential to identify robust molecular signatures to inform clinical care and to facilitate therapeutics development. In this study, we performed a comprehensive meta-analysis of publicly available global metabolomics datasets obtained from three countries (United States, China and Brazil). To overcome high heterogeneity inherent in these datasets, we have (a) implemented a computational pipeline to perform consistent raw spectra processing; (b) conducted meta-analyses at pathway levels instead of individual feature levels; and (c) performed visual data mining on consistent patterns of change between disease severities for individual studies. Our analyses have yielded several key metabolic signatures characterizing disease progression and clinical outcomes. Their biological interpretations were discussed within the context of the current literature. To the best of our knowledge, this is the first comprehensive meta-analysis of global metabolomics datasets of COVID-19.

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