免疫原
癌症疫苗
免疫原性
癌症免疫疗法
免疫学
免疫疗法
抗原
癌症
癌症研究
细胞毒性T细胞
dna疫苗
CD8型
肿瘤抗原
免疫系统
黑色素瘤
生物
医学
抗体
免疫
内科学
单克隆抗体
体外
遗传学
作者
Elizabeth K. Duperret,Shujing Liu,Megan Paik,Aspen Trautz,Regina Stoltz,Xiaoming Liu,Kan Ze,Alfredo Perales‐Puchalt,Charles C. Reed,Jian Yan,Xiaowei Xu,David B. Weiner
标识
DOI:10.1158/1078-0432.ccr-18-1013
摘要
Cancer/testis antigens have emerged as attractive targets for cancer immunotherapy. Clinical studies have targeted MAGE-A3, a prototype antigen that is a member of the MAGE-A family of antigens, in melanoma and lung carcinoma. However, these studies have not yet had a significant impact due to poor CD8+ T-cell immunogenicity, platform toxicity, or perhaps limited target antigen availability. In this study, we develop an improved MAGE-A immunogen with cross-reactivity to multiple family members.In this study, we analyzed MAGE-A expression in The Cancer Genome Atlas and observed that many patients express multiple MAGE-A isoforms, not limited to MAGE-A3, simultaneously in diverse tumors. On the basis of this, we designed an optimized consensus MAGE-A DNA vaccine capable of cross-reacting with many MAGE-A isoforms, and tested immunogenicity and antitumor activity of this vaccine in a relevant autochthonous melanoma model.Immunization of this MAGE-A vaccine by electroporation in C57Bl/6 mice generated robust IFNγ and TNFα CD8+ T-cell responses as well as cytotoxic CD107a/IFNγ/T-bet triple-positive responses against multiple isoforms. Furthermore, this MAGE-A DNA immunogen generated a cross-reactive immune response in 14 of 15 genetically diverse, outbred mice. We tested the antitumor activity of this MAGE-A DNA vaccine in Tyr::CreER;BRAFCa/+;Ptenlox/lox transgenic mice that develop melanoma upon tamoxifen induction. The MAGE-A DNA therapeutic vaccine significantly slowed tumor growth and doubled median mouse survival.These results support the clinical use of consensus MAGE-A immunogens with the capacity to target multiple MAGE-A family members to prevent tumor immune escape.
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