Literature DB >> 33483502

Integrative computational approach identifies drug targets in CD4+ T-cell-mediated immune disorders.

Bailee Lichter1, Robert Moore1, Bhanwar Lal Puniya1, Rada Amin1, Alex Ciurej1, Sydney J Bennett1, Ab Rauf Shah1, Matteo Barberis2,3,4, Tomáš Helikar5.   

Abstract

CD4+ T cells provide adaptive immunity against pathogens and abnormal cells, and they are also associated with various immune-related diseases. CD4+ T cells' metabolism is dysregulated in these pathologies and represents an opportunity for drug discovery and development. Genome-scale metabolic modeling offers an opportunity to accelerate drug discovery by providing high-quality information about possible target space in the context of a modeled disease. Here, we develop genome-scale models of naïve, Th1, Th2, and Th17 CD4+ T-cell subtypes to map metabolic perturbations in rheumatoid arthritis, multiple sclerosis, and primary biliary cholangitis. We subjected these models to in silico simulations for drug response analysis of existing FDA-approved drugs and compounds. Integration of disease-specific differentially expressed genes with altered reactions in response to metabolic perturbations identified 68 drug targets for the three autoimmune diseases. In vitro experimental validation, together with literature-based evidence, showed that modulation of fifty percent of identified drug targets suppressed CD4+ T cells, further increasing their potential impact as therapeutic interventions. Our approach can be generalized in the context of other diseases, and the metabolic models can be further used to dissect CD4+ T-cell metabolism.

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Year:  2021        PMID: 33483502      PMCID: PMC7822845          DOI: 10.1038/s41540-020-00165-3

Source DB:  PubMed          Journal:  NPJ Syst Biol Appl        ISSN: 2056-7189


  111 in total

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