TMEM25 inhibits monomeric EGFR-mediated STAT3 activation in basal state to suppress triple-negative breast cancer progression

Jing Bi(Xiamen University), Zhihui Wu(Xiamen University), Xin Zhang(Xiamen University), Taoling Zeng(Xiamen University), Wanjun Dai(Xiamen University), Ningyuan Qiu(Xiamen University), Mingfeng Xu(Xiamen University), Yikai Qiao(Xiamen University), Ke Lang(Xiamen University), Jiayi Zhao(Xiamen University), Xinyu Cao(Xiamen University), Qi Lin(Xiamen University), Xiao Lei Chen(Xiamen University), Liping Xie(Xiamen University), Zhong Ouyang(First Affiliated Hospital of Xiamen University), Jujiang Guo(Xiamen University), Liangkai Zheng(Xiamen University), Chao Ma, Shiying Guo, Kangmei Chen(Sun Yat-sen University), Wei Mo(Xiamen University), Guo Fu(Xiamen University), Tong‐Jin Zhao(Sun Yat-sen University), Hongrui Wang(Xiamen University)
Nature Communications
April 24, 2023
Cited by 53Open Access
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Abstract

Triple-negative breast cancer (TNBC) is a subtype of breast cancer with poor outcome and lacks of approved targeted therapy. Overexpression of epidermal growth factor receptor (EGFR) is found in more than 50% TNBC and is suggested as a driving force in progression of TNBC; however, targeting EGFR using antibodies to prevent its dimerization and activation shows no significant benefits for TNBC patients. Here we report that EGFR monomer may activate signal transducer activator of transcription-3 (STAT3) in the absence of transmembrane protein TMEM25, whose expression is frequently decreased in human TNBC. Deficiency of TMEM25 allows EGFR monomer to phosphorylate STAT3 independent of ligand binding, and thus enhances basal STAT3 activation to promote TNBC progression in female mice. Moreover, supplying TMEM25 by adeno-associated virus strongly suppresses STAT3 activation and TNBC progression. Hence, our study reveals a role of monomeric-EGFR/STAT3 signaling pathway in TNBC progression and points out a potential targeted therapy for TNBC.


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