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RNA-Bloom enables reference-free and reference-guided sequence assembly for single-cell transcriptomes

机译:RNA-Bloom使可以参考和参考引导序列组件进行单细胞转录om

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摘要

Despite the rapid advance in single-cell RNA sequencing (scRNA-seq) technologies within the last decade, single-cell transcriptome analysis workflows have primarily used gene expression data while isoform sequence analysis at the single-cell level still remains fairly limited. Detection and discovery of isoforms in single cells is difficult because of the inherent technical shortcomings of scRNA-seq data, and existing transcriptome assembly methods are mainly designed for bulk RNA samples. To address this challenge, we developed RNA-Bloom, an assembly algorithm that leverages the rich information content aggregated from multiple single-cell transcriptomes to reconstruct cell-specific isoforms. Assembly with RNA-Bloom can be either reference-guided or reference-free, thus enabling unbiased discovery of novel isoforms or foreign transcripts. We compared both assembly strategies of RNA-Bloom against five state-of-the-art reference-free and reference-based transcriptome assembly methods. In our benchmarks on a simulated 384-cell data set, reference-free RNA-Bloom reconstructed 37.9%–38.3% more isoforms than the best reference-free assembler, whereas reference-guided RNA-Bloom reconstructed 4.1%–11.6% more isoforms than reference-based assemblers. When applied to a real 3840-cell data set consisting of more than 4 billion reads, RNA-Bloom reconstructed 9.7%–25.0% more isoforms than the best competing reference-based and reference-free approaches evaluated. We expect RNA-Bloom to boost the utility of scRNA-seq data beyond gene expression analysis, expanding what is informatically accessible now.
机译:尽管在过去十年内单细胞RNA测序(SCRNA-SEQ)技术的快速进展,但单细胞转录组分析工作流程主要使用基因表达数据,而单细胞水平的同种型序列分析仍然存在相当有限。由于SCRNA-SEQ数据的固有技术缺点,单细胞中同种型的检测和发现是困难的,并且现有的转录组件方法主要设计用于散装RNA样品。为了解决这一挑战,我们开发了RNA-Bloom,一种装配算法,它利用了从多个单细胞转录om聚合的丰富的信息内容来重建特定的细胞同种型。具有RNA-Bloom的组装可以是参考导向或基准的,从而能够无偏见发现新型同种型或外国转录物。我们将RNA开花的装配策略与五个最先进的无参考文献和基于参考的转录组合体组装方法进行了比较。在模拟384单元数据集的基准中,可参考的RNA-BloM重建37.9%-38.3%的同种型,而不是最佳的无参考汇编器,而参考引导RNA-Bloom重建4.1%-11.6%的同种型基于参考的汇编程序。当应用于由超过40亿读数组成的Real 3840-Cell数据集时,RNA-Bloom重建了9.7%-25.0%的同种型,而不是评估的最佳竞争基于基于参考和可参考方法。我们预计RNA-Bloom将提高ScrNA-SEQ数据超出基因表达分析的效用,请立即扩展信息可供选择。

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