Specific Recruitment of γδ Regulatory T Cells in Human Breast Cancer

Jian Ye(Shandong First Medical University), Chunling Ma(Shandong First Medical University), Fang Wang(Shandong First Medical University), Eddy C. Hsueh(Shandong First Medical University), Károly Tóth(Shandong First Medical University), Yi Huang(Shandong First Medical University), Wei Mo(Shandong First Medical University), Shuai Liu(Shandong First Medical University), Bing Han(Shandong First Medical University), Mark A. Varvares(Shandong First Medical University), Daniel F. Hoft(Shandong First Medical University), Guangyong Peng(Shandong First Medical University)
Cancer Research
August 20, 2013
Cited by 94Open Access
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Abstract

Understanding the role of different subtypes of tumor-infiltrating lymphocytes (TIL) in the immunosuppressive tumor microenvironment is essential for improving cancer treatment. Enriched γδ1 T-cell populations in TILs suppress T-cell responses and dendritic cell maturation in breast cancer, where their presence is correlated negatively with clinical outcomes. However, mechanism(s) that explain the increase in this class of regulatory T cells (γδ Treg) in patients with breast cancer have yet to be elucidated. In this study, we show that IP-10 secreted by breast cancer cells attracted γδ Tregs. Using neutralizing antibodies against chemokines secreted by breast cancer cells, we found that IP-10 was the only functional chemokine that causes γδ Tregs to migrate toward breast cancer cells. In a humanized NOD-scid IL-2Rγ(null) (NSG) mouse model, human breast cancer cells attracted γδ Tregs as revealed by a live cell imaging system. IP-10 neutralization in vivo inhibited migration and trafficking of γδ Tregs into breast tumor sites, enhancing tumor immunity mediated by tumor-specific T cells. Together, our studies show how γδ Tregs accumulate in breast tumors, providing a rationale for their immunologic targeting to relieve immunosuppression in the tumor microenvironment.


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