核糖核酸
计算生物学
生物
细胞
RNA序列
基因组
多路复用
计算机科学
基因
遗传学
基因表达
转录组
电信
作者
Xinrui Lin,Yingwen Chen,Li Lin,Kun Yin,Rui Cheng,Xiaoyu Wang,Ye Guo,Zhaorun Wu,Yingkun Zhang,Jin Li,Chaoyong Yang,Jia Song
标识
DOI:10.1101/2023.04.16.537058
摘要
Abstract Single-cell RNA-seq (scRNA-seq) analysis of multiple samples separately can be costly and lead to batch effects. Exogenous barcodes or genome-wide RNA mutations can be used to demultiplex pooled scRNA-seq data, but they are experimentally or computationally challenging and limited in scope. Mitochondrial genomes are small but diverse, providing concise genotype information. We developed “mitoSplitter”, an algorithm that demultiplexes samples using mitochondrial RNA (mtRNA) variants, and demonstrated that mtRNA variants can be used to demultiplex large-scale scRNA-seq data. Using affordable computational resources, mitoSplitter can accurately analyze 10 samples and 60,000 cells in 6 hours. To avoid the batch effects from separated experiments, we applied mitoSplitter to analyze the responses of five non-small cell lung cancer (NSCLC) cell lines to BET chemical degradation in a multiplexed fashion. We found the synthetic lethality of TOP2A inhibition and BET chemical degradation in BET inhibitor-resistant cells. The result indicates that mitoSplitter can accelerate the application of scRNA-seq assays in biomedical research.
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