基因表达谱
计算生物学
基因
小RNA
RNA序列
单细胞分析
电池类型
基因亚型
生物
细胞
信使核糖核酸
转录组
遗传学
基因表达
作者
Daniel Ramsköld,Shujun Luo,Yu-Chieh Wang,Robin Li,Qiaolin Deng,Omid R. Faridani,Gregory A. Daniels,Irina Khrebtukova,Jeanne F. Loring,Louise C. Laurent,Gary P. Schroth,Rickard Sandberg
摘要
RNA-Seq of single cells has been limited by biases in transcript coverage and unknown technical variability. Ramsköld et al. describe a protocol to reproducibly recover full-length transcripts and use it to quantitatively analyze splice isoforms in single cells. Genome-wide transcriptome analyses are routinely used to monitor tissue-, disease- and cell type–specific gene expression, but it has been technically challenging to generate expression profiles from single cells. Here we describe a robust mRNA-Seq protocol (Smart-Seq) that is applicable down to single cell levels. Compared with existing methods, Smart-Seq has improved read coverage across transcripts, which enhances detailed analyses of alternative transcript isoforms and identification of single-nucleotide polymorphisms. We determined the sensitivity and quantitative accuracy of Smart-Seq for single-cell transcriptomics by evaluating it on total RNA dilution series. We found that although gene expression estimates from single cells have increased noise, hundreds of differentially expressed genes could be identified using few cells per cell type. Applying Smart-Seq to circulating tumor cells from melanomas, we identified distinct gene expression patterns, including candidate biomarkers for melanoma circulating tumor cells. Our protocol will be useful for addressing fundamental biological problems requiring genome-wide transcriptome profiling in rare cells.
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