4.7 Article

Integration of omics data to generate and analyse COVID-19 specific genome-scale metabolic models

期刊

COMPUTERS IN BIOLOGY AND MEDICINE
卷 145, 期 -, 页码 -

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.compbiomed.2022.105428

关键词

COVID-19; Genome-scale metabolic models; Model extraction methods; Context-specific models; Metabolic enrichment analysis

资金

  1. scientific-research program Pervasive Computing [P2-0359]
  2. scientific-research program Functional Genomics and Biotechnology for Health [P1-0390]
  3. basic research project CholesteROR in metabolic liver diseases [J1-9176]
  4. Network of infrastructure Centres of University of Ljubljana - Slovenian Research Agency [IP-022]
  5. European Regional Development Fund [ELIXIR-SI RI-SI-2]
  6. Ministry of Education, Science and Sport of Republic of Slovenia

向作者/读者索取更多资源

This study reconstructed metabolic models related to COVID-19 using multiple model extraction methods and datasets. The results show that the GIMME and tINIT models provided the most biologically relevant predictions and should be emphasized in further analyses. Specifically, the tINIT model identified metabolic pathways that are part of the host response and potential targets for antiviral treatment.
COVID-19 presents a complex disease that needs to be addressed using systems medicine approaches that include genome-scale metabolic models (GEMs). Previous studies have used a single model extraction method (MEM) and/or a single transcriptomic dataset to reconstruct context-specific models, which proved to be insufficient for the broader biological contexts. We have applied four MEMs in combination with five COVID-19 datasets. Models produced by GIMME were separated by infection, while tINIT preserved the biological variability in the data and enabled the best prediction of the enrichment of metabolic subsystems. Vitamin D3 metabolism was predicted to be down-regulated in one dataset by GIMME, and in all by tINIT. Models generated by tINIT and GIMME predicted downregulation of retinol metabolism in different datasets, while downregulated cholesterol metabolism was predicted only by tINIT-generated models. Predictions are in line with the observations in COVID-19 patients. Our data indicated that GIMME and tINIT models provided the most biologically relevant results and should have a larger emphasis in further analyses. Particularly tINIT models identified the metabolic pathways that are a part of the host response and are potential antiviral targets. The code and the results of the analyses are available to download from https://github.com/CompBioLj/COVID_GEMs_and_MEMs.

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