嵌合抗原受体
内科学
肺癌
医学
血液学
表皮生长因子受体
细胞因子释放综合征
不利影响
临床试验
肿瘤科
免疫学
癌症
胃肠病学
免疫疗法
作者
Yajun Zhang,Zhiwei Zhang,Yongmei Ding,Yuan Fang,Pei Wang,Wenqi Chu,Zhenlin Jin,Xintao Yang,Jiangtao Wang,Jinxing Lou,Qijun Qian
标识
DOI:10.1007/s00432-021-03613-7
摘要
This phase I clinical trial is designed to assess the safety and feasibility of the epidermal growth factor receptor (EGFR) chimeric antigen receptor (CAR) T-cell generated by the piggyBac transposon system in advanced relapsed/refractory non-small cell lung cancer (NSCLC) patients. Compared to viral systems, the piggyBac transposon system is a simpler, more economical, and alternative way to introduce chimeric antigen receptor (CAR) transgenes into T cells. This study recruited nine patients with advanced relapsed/refractory EGFR-positive NSCLC for two cycles of the piggyBac-generated EGFR-CAR T cells at dose of 1 × 106 cells/kg or 3 × 106 cells/kg of body weight. The patients were monitored for adverse events, clinical response, and persistence of plasma GFR-CAR T cells. Infusions of piggyBac-generated EGFR-CAR T cells were well tolerated in all nine patients. The most common adverse events were grade 1 to 3 fever and there were no patients who experienced grade 4 adverse events or serious cytokine release syndrome. After treatment, eight of nine patients showed detectable EGFR-CAR T cells in their peripheral blood. One patient showed a partial response and lasted for more than 13 months, while six had stable disease, and two had progressed disease. The progression-free survival of these nine patients was 7.13 months (95% CI 2.71–17.10 months), while the median overall survival was 15.63 months (95% CI 8.82–22.03 months). This Phase I clinical trial revealed that the non-viral piggyBac transposon system-engineered EGFR-CAR T-cell therapy is feasible and safe in treatment of EGFR-positive advanced relapsed/refractory NSCLC patients. Future study will assess it in more patients or even possibly with a higher dose. Trial registration number NCT03182816.
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