Visualization of natural killer cell-mediated killing of cancer cells at single-cell resolution in live zebrafish

癌细胞 斑马鱼 癌症研究 癌症 细胞 生物 细胞疗法 细胞凋亡 嵌合抗原受体 淋巴因子激活杀伤细胞 自然杀伤细胞 免疫疗法 细胞生物学 免疫学 细胞毒性T细胞 白细胞介素21 免疫系统 T细胞 体外 生物化学 基因 遗传学
作者
Hongmei Yang,Jia Hao,Qi Zhao,Kathy Qian Luo
出处
期刊:Biosensors and Bioelectronics [Elsevier BV]
卷期号:216: 114616-114616 被引量:20
标识
DOI:10.1016/j.bios.2022.114616
摘要

Tumor immunotherapy has been an important advancement in cancer treatment in recent years. Compared with T cell-based therapy, natural killer (NK) cell-based therapy does not require human leukocyte antigen matching and has fewer side effects; thus, NK cell therapy has gradually attracted the attention of researchers and clinicians. Reliable and effective animal models are essential for evaluating the effects of NK cell therapy. NK cells kill cancer cells mainly through apoptosis. In this study, we first established a 3D coculture model using fluorescence resonance energy transfer (FRET)-based lung or breast cancer cells and tdTomato-labeled NK cells. We observed that cancer cells changed from green to blue when undergoing apoptosis induced by red NK cells. We then coinjected these green cancer cells with red NK cells into zebrafish to visualize the interaction between them and the killing process of NK cells against cancer cells in real-time and at single-cell resolution in circulation. Using this model, we found that NK cells can quickly kill cancer cells in zebrafish circulation in 40 min and the caspase-3 can be activated in 5-10 min. This FRET-based zebrafish tumor model can serve as a powerful in vivo tool that can facilitate the development of NK cell-based therapy. More importantly, cancer cells from cancer patients can be labeled with our apoptotic biosensor and then transplanted into zebrafish to evaluate the sensitivity of the cancer cells to NK cells to help clinicians make treatment plans that can benefit patients.
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