拷贝数变化
数字聚合酶链反应
单细胞测序
计算生物学
结构变异
单细胞分析
拷贝数分析
微流控
计算机科学
基因组
DNA测序
基因组学
生物
遗传学
基因
细胞
表型
聚合酶链反应
纳米技术
外显子组测序
材料科学
作者
Xiyuan Yu,Weidong Ruan,F Lin,Weizhou Qian,Yuan Zou,Yilong Liu,Rui Su,Qi Niu,Qingyu Ruan,Lin Wei,Zhi Zhu,Huimin Zhang,Chaoyong Yang
标识
DOI:10.1073/pnas.2221934120
摘要
Single-cell copy number variations (CNVs), major dynamic changes in humans, result in differential levels of gene expression and account for adaptive traits or underlying disease. Single-cell sequencing is needed to reveal these CNVs but has been hindered by single-cell whole-genome amplification (scWGA) bias, leading to inaccurate gene copy number counting. In addition, most of the current scWGA methods are labor intensive, time-consuming, and expensive with limited wide application. Here, we report a unique single-cell whole-genome library preparation approach based on d igital microfluidics for d igital counting of s ingle- c ell C opy N umber V ariation (dd-scCNV Seq). dd-scCNV Seq directly fragments the original single-cell DNA and uses these fragments as templates for amplification. These reduplicative fragments can be filtered computationally to generate the original partitioned unique identified fragments, thereby enabling digital counting of copy number variation. dd-scCNV Seq showed an increase in uniformity in the single-molecule data, leading to more accurate CNV patterns compared to other methods with low-depth sequencing. Benefiting from digital microfluidics, dd-scCNV Seq allows automated liquid handling, precise single-cell isolation, and high-efficiency and low-cost genome library preparation. dd-scCNV Seq will accelerate biological discovery by enabling accurate profiling of copy number variations at single-cell resolution.
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