ISG15
生物
癌症研究
STAT1
干扰素
车站2
BCL6公司
癌变
Ⅰ型干扰素
基因
细胞生物学
泛素
信号转导
免疫学
遗传学
斯达
抗体
生发中心
车站3
B细胞
作者
Jun-Bao Fan,Sayuri Miyauchi,Huizhong Xu,Dan Liu,Leo J.Y. Kim,Christoph Burkart,Hua Cheng,Kei‐ichiro Arimoto,Ming Yan,Yu Zhou,Balázs Győrffy,Klaus‐Peter Knobeloch,Jeremy N. Rich,Hu Cang,Xiang‐Dong Fu,Dong‐Er Zhang
出处
期刊:Cancer Discovery
[American Association for Cancer Research]
日期:2020-01-23
卷期号:10 (3): 382-393
被引量:50
标识
DOI:10.1158/2159-8290.cd-19-0608
摘要
Abstract Type I interferons (IFN), which activate many IFN-stimulated genes (ISG), are known to regulate tumorigenesis. However, little is known regarding how various ISGs coordinate with one another in developing antitumor effects. Here, we report that the ISG UBA7 is a tumor suppressor in breast cancer. UBA7 encodes an enzyme that catalyzes the covalent conjugation of the ubiquitin-like protein product of another ISG (ISG15) to cellular proteins in a process known as “ISGylation.” ISGylation of other ISGs, including STAT1 and STAT2, synergistically facilitates production of chemokine-receptor ligands to attract cytotoxic T cells. These gene-activation events are further linked to clustering and nuclear relocalization of STAT1/2 within IFN-induced promyelocytic leukemia (PML) bodies. Importantly, this coordinated ISG–ISGylation network plays a central role in suppressing murine breast cancer growth and metastasis, which parallels improved survival in patients with breast cancer. These findings reveal a cooperative IFN-inducible gene network in orchestrating a tumor-suppressive microenvironment. Significance: We report a highly cooperative ISG network, in which UBA7-mediated ISGylation facilitates clustering of transcription factors and activates an antitumor gene-expression program. These findings provide mechanistic insights into immune evasion in breast cancer associated with UBA7 loss, emphasizing the importance of a functional ISG–ISGylation network in tumor suppression. This article is highlighted in the In This Issue feature, p. 327
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