生物
单核苷酸多态性
计算生物学
单细胞分析
基因分型
核糖核酸
遗传学
转录组
基因
RNA序列
基因型
基因表达
细胞
作者
Hyun Min Kang,Meena Subramaniam,Sasha Targ,Michelle Nguyen,Lenka Maliskova,Elizabeth E. McCarthy,Eunice Wan,Simon Wong,Lauren E. Byrnes,Cristina Lanata,Rachel E. Gate,Sara Mostafavi,Alexander Marson,Noah Zaitlen,Lindsey A. Criswell,Chun Ye
摘要
Droplet single-cell RNA-seq is applied to large numbers of pooled samples from unrelated individuals. Droplet single-cell RNA-sequencing (dscRNA-seq) has enabled rapid, massively parallel profiling of transcriptomes. However, assessing differential expression across multiple individuals has been hampered by inefficient sample processing and technical batch effects. Here we describe a computational tool, demuxlet, that harnesses natural genetic variation to determine the sample identity of each droplet containing a single cell (singlet) and detect droplets containing two cells (doublets). These capabilities enable multiplexed dscRNA-seq experiments in which cells from unrelated individuals are pooled and captured at higher throughput than in standard workflows. Using simulated data, we show that 50 single-nucleotide polymorphisms (SNPs) per cell are sufficient to assign 97% of singlets and identify 92% of doublets in pools of up to 64 individuals. Given genotyping data for each of eight pooled samples, demuxlet correctly recovers the sample identity of >99% of singlets and identifies doublets at rates consistent with previous estimates. We apply demuxlet to assess cell-type-specific changes in gene expression in 8 pooled lupus patient samples treated with interferon (IFN)-β and perform eQTL analysis on 23 pooled samples.
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