嵌合抗原受体
癌胚抗原
医学
细胞因子释放综合征
过继性细胞移植
癌症研究
免疫学
抗原
T细胞
细胞因子
癌症
内科学
免疫系统
作者
Linan Wang,Ning Ma,Sachiko Okamoto,Yasunori Amaishi,Eiichi Sato,Naohiro Seo,Junichi Mineno,Kazutoh Takesako,Takuma Kato,Hiroshi Shiku
出处
期刊:OncoImmunology
[Informa]
日期:2016-07-25
卷期号:5 (9): e1211218-e1211218
被引量:53
标识
DOI:10.1080/2162402x.2016.1211218
摘要
Carcinoembryonic antigen (CEA) is a cell surface antigen highly expressed in various cancer cell types and in healthy tissues. It has the potential to be a target for chimeric antigen receptor (CAR)-modified T-cell therapy; however, the safety of this approach in terms of on-target/off-tumor effects needs to be determined. To address this issue in a clinically relevant model, we used a mouse model in which the T cells expressing CEA-specific CAR were transferred into tumor-bearing CEA-transgenic (Tg) mice that physiologically expressed CEA as a self-antigen. The adoptive transfer in conjunction with lymphodepleting and myeloablative preconditioning mediated significant tumor regression but caused weight loss in CEA-Tg, but not in wild-type mice. The weight loss was not associated with overt inflammation in the CEA-expressing gastrointestinal tract but was associated with malnutrition, reflected in elevated systemic levels of cytokines linked to anorexia, which could be controlled by the administration of an anti-IL-6 receptor monoclonal antibody without compromising efficacy. The apparent relationship between lymphodepleting and myeloablative preconditioning, efficacy, and off-tumor toxicity of CAR-T cells would necessitate the development of CEA-specific CAR-T cells with improved signaling domains that require less stringent preconditioning for their efficacy. Taken together, these results suggest that CEA-specific CAR-based adoptive T-cell therapy may be effective for patients with CEA+ solid tumors. Distinguishing the fine line between therapeutic efficacy and off-tumor toxicity would involve further modifications of CAR-T cells and preconditioning regimens.
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