Metabolomics,Multiomics

Dataset Information

6

Model-driven multi-omic data analysis elucidates metabolic immunomodulators of macrophage activation


ABSTRACT: Macrophages are central players in immune response, manifesting divergent phenotypes to control inflammation and innate immunity through release of cytokines and other signaling factors. Recently, the focus on metabolism has been reemphasized as critical signaling and regulatory pathways of human pathophysiology, ranging from cancer to aging, often converge on metabolic responses. Here, we used genome-scale modeling and multi-omics (transcriptomics, proteomics, and metabolomics) analysis to assess metabolic features that are critical for macrophage activation. A genome-scale metabolic network for the RAW 264.7 cell line was constructed to determine metabolic modulators of activation. Metabolites well-known to be associated with immunoactivation (glucose and arginine) and immunosuppression (tryptophan and vitamin D3) were among the most critical effectors. Intracellular metabolic mechanisms were assessed, identifying a suppressive role for de-novo nucleotide synthesis. Finally, underlying metabolic mechanisms of macrophage activation were identified by analyzing multi-omic data obtained from LPS-stimulated RAW cells in the context of our flux-based predictions. This study demonstrates that the role of metabolism in regulating activation may be greater than previously anticipated and elucidates underlying connections between activation and metabolic effectors. This submission corresponds to the metabolomics data from this study.

OTHER RELATED OMICS DATASETS IN: PXD003055PRJNA171843PRJNA152753

INSTRUMENT(S): 5975C Series GC/MSD (Agilent)

SUBMITTER: Tom Metz 

PROVIDER: MTBLS23 | MetaboLights | 2012-09-05

REPOSITORIES: MetaboLights

altmetric image

Publications


Macrophages are central players in immune response, manifesting divergent phenotypes to control inflammation and innate immunity through release of cytokines and other signaling factors. Recently, the focus on metabolism has been reemphasized as critical signaling and regulatory pathways of human pathophysiology, ranging from cancer to aging, often converge on metabolic responses. Here, we used genome-scale modeling and multi-omics (transcriptomics, proteomics, and metabolomics) analysis to asse  ...[more]

Similar Datasets

2012-08-02 | E-GEOD-39785 | biostudies-arrayexpress
2012-08-03 | GSE39785 | GEO
2014-06-25 | ST000084 | MetabolomicsWorkbench
2012-01-24 | GSE35237 | GEO
2012-01-24 | E-GEOD-35237 | biostudies-arrayexpress
2015-11-11 | PXD003055 | Pride
2019-10-22 | MSV000084488 | MassIVE
2018-10-11 | GSE121077 | GEO
| PRJNA171843 | ENA
| PRJNA491693 | ENA