拷贝数分析
生物
比较基因组杂交
癌症研究
转录组
癌症
克拉斯
计算生物学
基因
拷贝数变化
基因组
遗传学
基因表达
结直肠癌
作者
Ruli Gao,Shanshan Bai,Ying C. Henderson,Yiyun Lin,Aislyn Schalck,Yun Yan,Tapsi Kumar,Min Hu,Emi Sei,Alexander Davis,Fang Wang,Simona F. Shaitelman,Jennifer Wang,Ken Chen,Stacy Moulder,Stephen Y. Lai,Nicholas Navin
标识
DOI:10.1038/s41587-020-00795-2
摘要
Single-cell transcriptomic analysis is widely used to study human tumors. However, it remains challenging to distinguish normal cell types in the tumor microenvironment from malignant cells and to resolve clonal substructure within the tumor. To address these challenges, we developed an integrative Bayesian segmentation approach called copy number karyotyping of aneuploid tumors (CopyKAT) to estimate genomic copy number profiles at an average genomic resolution of 5 Mb from read depth in high-throughput single-cell RNA sequencing (scRNA-seq) data. We applied CopyKAT to analyze 46,501 single cells from 21 tumors, including triple-negative breast cancer, pancreatic ductal adenocarcinoma, anaplastic thyroid cancer, invasive ductal carcinoma and glioblastoma, to accurately (98%) distinguish cancer cells from normal cell types. In three breast tumors, CopyKAT resolved clonal subpopulations that differed in the expression of cancer genes, such as KRAS, and signatures, including epithelial-to-mesenchymal transition, DNA repair, apoptosis and hypoxia. These data show that CopyKAT can aid in the analysis of scRNA-seq data in a variety of solid human tumors. Clonal subpopulations in human tumors are identified from single-cell RNA-seq data.
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