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Imputing single-cell RNA-seq data by considering cell heterogeneity and prior expression of dropouts

机译:通过考虑细胞异质性和现有辍学的表达来抵御单细胞RNA-SEQ数据

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摘要

Single-cell RNA sequencing (scRNA-seq) provides a powerful tool to determine expression patterns of thousands of individual cells. However, the analysis of scRNA-seq data remains a computational challenge due to the high technical noise such as the presence of dropout events that lead to a large proportion of zeros for expressed genes. Taking into account the cell heterogeneity and the relationship between dropout rate and expected expression level, we present a cell sub-population based bounded low-rank (PBLR) method to impute the dropouts of scRNA-seq data. Through application to both simulated and real scRNA-seq datasets, PBLR is shown to be effective in recovering dropout events, and it can dramatically improve the low-dimensional representation and the recovery of gene?gene relationships masked by dropout events compared to several state-of-the-art methods. Moreover, PBLR also detects accurate and robust cell sub-populations automatically, shedding light on its flexibility and generality for scRNA-seq data analysis.
机译:单细胞RNA测序(ScRNA-SEQ)提供了一种强大的工具,用于确定数千个单个细胞的表达模式。然而,由于高技术噪声,诸如导致表达基因的大部分零的辍学事件的存在诸如存在的高的技术噪声,ScRNA-SEQ数据的分析仍然是计算挑战。考虑到细胞异质性和辍学率和预期表达水平之间的关系,我们介绍了一种基于细胞基群的有界低秩(PBLR)方法,以赋予ScrNA-SEQ数据的丢弃。通过应用于模拟和真实的ScrNA-SEQ数据集,PBLR显示在恢复辍学事件中有效,并且可以显着提高低维表示和基因的恢复?与若干状态相比,通过辍学事件掩盖的基因关系掩蔽了基因关系。最新方法。此外,PBLR还会自动检测精确且强大的细胞子群,脱位呈其灵活性和通用性用于SCRNA-SEQ数据分析。

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