Yu Kai, Hu Yuqiong, Wu Fan, Guo Qiufang, Qian Zenghui, Hu Waner, Chen Jing, Wang Kuanyu, Fan Xiaoying, Wu Xinglong, Rasko John Ej, Fan Xiaolong, Iavarone Antonio, Jiang Tao, Tang Fuchou, Su Xiao-Dong
Biomedical Pioneering Innovation Center (BIOPIC), School of Life Sciences, Peking University, Beijing 100871, China.
Department of Molecular Neuropathology, Beijing Neurosurgical Institute, Capital Medical University, Beijing 100050, China.
Natl Sci Rev. 2020 Aug;7(8):1306-1318. doi: 10.1093/nsr/nwaa099. Epub 2020 May 30.
Brain tumors are among the most challenging human tumors for which the mechanisms driving progression and heterogeneity remain poorly understood. We combined single-cell RNA-seq with multi-sector biopsies to sample and analyze single-cell expression profiles of gliomas from 13 Chinese patients. After classifying individual cells, we generated a spatial and temporal landscape of glioma that revealed the patterns of invasion between the different sub-regions of gliomas. We also used single-cell inferred copy number variations and pseudotime trajectories to inform on the crucial branches that dominate tumor progression. The dynamic cell components of the multi-region biopsy analysis allowed us to spatially deconvolute with unprecedented accuracy the transcriptomic features of the core and those of the periphery of glioma at single-cell level. Through this rich and geographically detailed dataset, we were also able to characterize and construct the chemokine and chemokine receptor interactions that exist among different tumor and non-tumor cells. This study provides the first spatial-level analysis of the cellular states that characterize human gliomas. It also presents an initial molecular map of the cross-talks between glioma cells and the surrounding microenvironment with single-cell resolution.
脑肿瘤是最具挑战性的人类肿瘤之一,其驱动进展和异质性的机制仍知之甚少。我们将单细胞RNA测序与多区域活检相结合,对13名中国患者的胶质瘤进行单细胞表达谱的采样和分析。在对单个细胞进行分类后,我们生成了胶质瘤的时空图谱,揭示了胶质瘤不同亚区域之间的侵袭模式。我们还使用单细胞推断的拷贝数变异和伪时间轨迹来了解主导肿瘤进展的关键分支。多区域活检分析的动态细胞成分使我们能够以前所未有的精度在单细胞水平上对胶质瘤核心和周边的转录组特征进行空间解卷积。通过这个丰富且地理细节详尽的数据集,我们还能够表征和构建不同肿瘤细胞与非肿瘤细胞之间存在的趋化因子和趋化因子受体相互作用。这项研究首次对表征人类胶质瘤的细胞状态进行了空间层面的分析。它还以单细胞分辨率呈现了胶质瘤细胞与周围微环境之间相互作用的初步分子图谱。