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Discovery of Cobimetinib as a novel A-FABP inhibitor using machine learning and molecular docking-based virtual screening

Adipocyte fatty acid-binding protein (A-FABP, also called FABP4, aP2) is an adipokine identified as a critical regulator of metabolic function due to its dual functions of fatty acid transport and pro-inflammation. Because of the high therapeutic potential of A-FABP inhibition for the treatment of m...

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Autores principales: Yang, Shilun, Li, Simeng, Chang, Junlei
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Royal Society of Chemistry 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9066360/
https://www.ncbi.nlm.nih.gov/pubmed/35520131
http://dx.doi.org/10.1039/d2ra01057g
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author Yang, Shilun
Li, Simeng
Chang, Junlei
author_facet Yang, Shilun
Li, Simeng
Chang, Junlei
author_sort Yang, Shilun
collection PubMed
description Adipocyte fatty acid-binding protein (A-FABP, also called FABP4, aP2) is an adipokine identified as a critical regulator of metabolic function due to its dual functions of fatty acid transport and pro-inflammation. Because of the high therapeutic potential of A-FABP inhibition for the treatment of metabolic diseases and related vascular complications, numerous inhibitors have been developed against A-FABP. However, none of these inhibitors have been approved for use in patients due to severe side effects. Here, we used a virtual screening (VS) strategy to identify potential inhibitors of A-FABP in the latest FDA-approved drug library (∼2600 compounds), aiming to explore the existing drugs with proven safety profiles. We firstly combined ligand-based machine learning and structure-based molecular docking to develop a screening pipeline for identifying A-FABP inhibitors. The screening of FDA-approved drugs identified four compounds (Cobimetinib, Larotrectinib, Pantoprazole, and Vildagliptin) with the highest scores, whose inhibitory effects on A-FABP were further assessed in cellular assays. Among the selected compounds, Cobimetinib significantly inhibited the activation of the JNK/c-Jun signaling pathway by A-FABP in mouse macrophages without causing obvious cytotoxicity. In summary, we present an integrated VS pipeline for A-FABP inhibitor screening, and identified Cobimetinib as a novel A-FABP inhibitor that may be repurposed for the treatment of metabolic diseases and associated vascular complications.
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spelling pubmed-90663602022-05-04 Discovery of Cobimetinib as a novel A-FABP inhibitor using machine learning and molecular docking-based virtual screening Yang, Shilun Li, Simeng Chang, Junlei RSC Adv Chemistry Adipocyte fatty acid-binding protein (A-FABP, also called FABP4, aP2) is an adipokine identified as a critical regulator of metabolic function due to its dual functions of fatty acid transport and pro-inflammation. Because of the high therapeutic potential of A-FABP inhibition for the treatment of metabolic diseases and related vascular complications, numerous inhibitors have been developed against A-FABP. However, none of these inhibitors have been approved for use in patients due to severe side effects. Here, we used a virtual screening (VS) strategy to identify potential inhibitors of A-FABP in the latest FDA-approved drug library (∼2600 compounds), aiming to explore the existing drugs with proven safety profiles. We firstly combined ligand-based machine learning and structure-based molecular docking to develop a screening pipeline for identifying A-FABP inhibitors. The screening of FDA-approved drugs identified four compounds (Cobimetinib, Larotrectinib, Pantoprazole, and Vildagliptin) with the highest scores, whose inhibitory effects on A-FABP were further assessed in cellular assays. Among the selected compounds, Cobimetinib significantly inhibited the activation of the JNK/c-Jun signaling pathway by A-FABP in mouse macrophages without causing obvious cytotoxicity. In summary, we present an integrated VS pipeline for A-FABP inhibitor screening, and identified Cobimetinib as a novel A-FABP inhibitor that may be repurposed for the treatment of metabolic diseases and associated vascular complications. The Royal Society of Chemistry 2022-05-04 /pmc/articles/PMC9066360/ /pubmed/35520131 http://dx.doi.org/10.1039/d2ra01057g Text en This journal is © The Royal Society of Chemistry https://creativecommons.org/licenses/by-nc/3.0/
spellingShingle Chemistry
Yang, Shilun
Li, Simeng
Chang, Junlei
Discovery of Cobimetinib as a novel A-FABP inhibitor using machine learning and molecular docking-based virtual screening
title Discovery of Cobimetinib as a novel A-FABP inhibitor using machine learning and molecular docking-based virtual screening
title_full Discovery of Cobimetinib as a novel A-FABP inhibitor using machine learning and molecular docking-based virtual screening
title_fullStr Discovery of Cobimetinib as a novel A-FABP inhibitor using machine learning and molecular docking-based virtual screening
title_full_unstemmed Discovery of Cobimetinib as a novel A-FABP inhibitor using machine learning and molecular docking-based virtual screening
title_short Discovery of Cobimetinib as a novel A-FABP inhibitor using machine learning and molecular docking-based virtual screening
title_sort discovery of cobimetinib as a novel a-fabp inhibitor using machine learning and molecular docking-based virtual screening
topic Chemistry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9066360/
https://www.ncbi.nlm.nih.gov/pubmed/35520131
http://dx.doi.org/10.1039/d2ra01057g
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