条形码
计算生物学
多路复用
生物
基因组学
单细胞分析
样品(材料)
表观遗传学
单细胞测序
计算机科学
基因组
细胞
遗传学
基因
突变
化学
外显子组测序
基因表达
电信
操作系统
色谱法
DNA甲基化
作者
Yulong Zhang,Siwen Xu,Zebin Wen,Jinyu Gao,Shuang Li,Sherman M. Weissman,Xinghua Pan
标识
DOI:10.1007/s00018-022-04482-0
摘要
Single-cell sequencing is widely used in biological and medical studies. However, its application with multiple samples is hindered by inefficient sample processing, high experimental costs, ambiguous identification of true single cells, and technical batch effects. Here, we introduce sample-multiplexing approaches for single-cell sequencing in transcriptomics, epigenomics, genomics, and multiomics. In single-cell transcriptomics, sample multiplexing uses variants of native or artificial features as sample markers, enabling sample pooling and decoding. Such features include: (1) natural genetic variation, (2) nucleotide-barcode anchoring on cellular or nuclear membranes, (3) nucleotide-barcode internalization to the cytoplasm or nucleus, (4) vector-based barcode expression in cells, and (5) nucleotide-barcode incorporation during library construction. Other single-cell omics methods are based on similar concepts, particularly single-cell combinatorial indexing. These methods overcome current challenges, while enabling super-loading of single cells. Finally, selection guidelines are presented that can accelerate technological application.
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