Global characterization of macrophage polarization mechanisms and identification of M2-type polarization inhibitors

Lizhi He(Harvard University), Jhih-Hua Jhong(Chinese University of Hong Kong, Shenzhen), Qi Chen(Chinese University of Hong Kong, Shenzhen), Kai‐Yao Huang(Mackay Memorial Hospital), Karin Strittmatter(Harvard University), Johannes Kreuzer(Harvard University), Michael DeRan(Harvard University), Xu Wu(Harvard University), Tzong-Yi Lee(Chinese University of Hong Kong, Shenzhen), Nikolai Slavov(Northeastern University), Wilhelm Haas(Harvard University), Alexander G. Marneros(Harvard University)
Cell Reports
November 1, 2021
Cited by 343Open Access
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Abstract

Macrophages undergoing M1- versus M2-type polarization differ significantly in their cell metabolism and cellular functions. Here, global quantitative time-course proteomics and phosphoproteomics paired with transcriptomics provide a comprehensive characterization of temporal changes in cell metabolism, cellular functions, and signaling pathways that occur during the induction phase of M1- versus M2-type polarization. Significant differences in, especially, metabolic pathways are observed, including changes in glucose metabolism, glycosaminoglycan metabolism, and retinoic acid signaling. Kinase-enrichment analysis shows activation patterns of specific kinases that are distinct in M1- versus M2-type polarization. M2-type polarization inhibitor drug screens identify drugs that selectively block M2- but not M1-type polarization, including mitogen-activated protein kinase kinase (MEK) and histone deacetylase (HDAC) inhibitors. These datasets provide a comprehensive resource to identify specific signaling and metabolic pathways that are critical for macrophage polarization. In a proof-of-principle approach, we use these datasets to show that MEK signaling is required for M2-type polarization by promoting peroxisome proliferator-activated receptor-γ (PPARγ)-induced retinoic acid signaling.


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