A network-based approach to identify deregulated pathways and drug effects in metabolic syndrome

Karla Misselbeck(University of Trento), Silvia Parolo(University of Trento), Francesca Lorenzini(University of Trento), Valeria Savoca(University of Trento), Lorena Leonardelli(University of Trento), Pranami Bora(University of Trento), Melissa J. Morine(University of Trento), Marina Mione(University of Trento), Enrico Domenici(University of Trento), Corrado Priami(University of Pisa)
Nature Communications
November 18, 2019
Cited by 72Open Access
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Abstract

Metabolic syndrome is a pathological condition characterized by obesity, hyperglycemia, hypertension, elevated levels of triglycerides and low levels of high-density lipoprotein cholesterol that increase cardiovascular disease risk and type 2 diabetes. Although numerous predisposing genetic risk factors have been identified, the biological mechanisms underlying this complex phenotype are not fully elucidated. Here we introduce a systems biology approach based on network analysis to investigate deregulated biological processes and subsequently identify drug repurposing candidates. A proximity score describing the interaction between drugs and pathways is defined by combining topological and functional similarities. The results of this computational framework highlight a prominent role of the immune system in metabolic syndrome and suggest a potential use of the BTK inhibitor ibrutinib as a novel pharmacological treatment. An experimental validation using a high fat diet-induced obesity model in zebrafish larvae shows the effectiveness of ibrutinib in lowering the inflammatory load due to macrophage accumulation.


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