Acuff Nicole V, Linden Joel
Division of Developmental Immunology, La Jolla Institute for Allergy and Immunology, San Diego, CA 92117; and.
Division of Developmental Immunology, La Jolla Institute for Allergy and Immunology, San Diego, CA 92117; and
J Immunol. 2017 Jun 1;198(11):4539-4546. doi: 10.4049/jimmunol.1602077. Epub 2017 May 3.
High-dimensional flow cytometry is proving to be valuable for the study of subtle changes in tumor-associated immune cells. As flow panels become more complex, detection of minor immune cell populations by traditional gating using biaxial plots, or identification of populations that display small changes in multiple markers, may be overlooked. Visualization of -distributed stochastic neighbor embedding (viSNE) is an unsupervised analytical tool designed to aid the analysis of high-dimensional cytometry data. In this study we use viSNE to analyze the simultaneous binding of 15 fluorophore-conjugated Abs and one cell viability probe to immune cells isolated from syngeneic mouse MB49 bladder tumors, spleens, and tumor-draining lymph nodes to identify patterns of anti-tumor immune responses. viSNE maps identified populations in multidimensional space of known immune cells, including T cells, B cells, eosinophils, neutrophils, dendritic cells, and NK cells. Based on the expression of CD86 and programmed cell death protein 1, CD8 T cells were divided into distinct populations. Additionally, both CD8 T cells and CD8 dendritic cells were identified in the tumor microenvironment. Apparent differences between splenic and tumor polymorphonuclear cells/granulocytic myeloid-derived suppressor cells are due to the loss of CD44 upon enzymatic digestion of tumors. In conclusion, viSNE is a valuable tool for high-dimensional analysis of immune cells in tumor-bearing mice, which eliminates gating biases and identifies immune cell subsets that may be missed by traditional gating.
高维流式细胞术在研究肿瘤相关免疫细胞的细微变化方面正显示出其价值。随着流式细胞术检测板变得更加复杂,通过使用双轴图的传统设门方法来检测次要免疫细胞群体,或者识别在多个标志物上显示微小变化的细胞群体,可能会被忽略。可视化分布式随机邻域嵌入(viSNE)是一种无监督分析工具,旨在辅助分析高维细胞术数据。在本研究中,我们使用viSNE来分析15种荧光团偶联抗体和一种细胞活力探针与从同基因小鼠MB49膀胱肿瘤、脾脏和肿瘤引流淋巴结中分离出的免疫细胞的同时结合情况,以识别抗肿瘤免疫反应模式。viSNE图谱在多维空间中识别出已知免疫细胞群体,包括T细胞、B细胞、嗜酸性粒细胞、中性粒细胞、树突状细胞和NK细胞。基于CD86和程序性细胞死亡蛋白1的表达,CD8 T细胞被分为不同群体。此外,在肿瘤微环境中还鉴定出了CD8 T细胞和CD8树突状细胞。脾脏和肿瘤多形核细胞/粒细胞髓源性抑制细胞之间的明显差异是由于肿瘤酶解后CD44的丢失所致。总之,viSNE是一种用于荷瘤小鼠免疫细胞高维分析的有价值工具,它消除了设门偏差,并识别出可能被传统设门方法遗漏的免疫细胞亚群。