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Single-Cell RNA-Sequencing: Assessment of Differential Expression Analysis Methods

机译:单细胞RNA测序:差异表达分析方法的评估

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摘要

The sequencing of the transcriptomes of single-cells, or single-cell RNA-sequencing, has now become the dominant technology for the identification of novel cell types and for the study of stochastic gene expression. In recent years, various tools for analyzing single-cell RNA-sequencing data have been proposed, many of them with the purpose of performing differentially expression analysis. In this work, we compare four different tools for single-cell RNA-sequencing differential expression, together with two popular methods originally developed for the analysis of bulk RNA-sequencing data, but largely applied to single-cell data. We discuss results obtained on two real and one synthetic dataset, along with considerations about the perspectives of single-cell differential expression analysis. In particular, we explore the methods performance in four different scenarios, mimicking different unimodal or bimodal distributions of the data, as characteristic of single-cell transcriptomics. We observed marked differences between the selected methods in terms of precision and recall, the number of detected differentially expressed genes and the overall performance. Globally, the results obtained in our study suggest that is difficult to identify a best performing tool and that efforts are needed to improve the methodologies for single-cell RNA-sequencing data analysis and gain better accuracy of results.
机译:现在,单细胞或单细胞RNA测序的转录组测序已成为鉴定新型细胞类型和研究随机基因表达的主要技术。近年来,已经提出了用于分析单细胞RNA测序数据的各种工具,其中许多目的是进行差异表达分析。在这项工作中,我们比较了四种用于单细胞RNA测序差异表达的不同工具,以及两种最初为分析大体积RNA测序数据而开发但广泛应用于单细胞数据的流行方法。我们讨论了在两个真实的数据集和一个合成的数据集上获得的结果,以及关于单细胞差异表达分析的考虑。特别是,我们探索了在四种不同情况下方法的性能,它们模仿了数据的单峰或双峰分布,以此作为单细胞转录组学的特征。我们观察到所选方法之间在准确性和召回率,检测到的差异表达基因的数量和整体性能方面存在明显差异。在全球范围内,在我们的研究中获得的结果表明,难以确定性能最佳的工具,并且需要努力改善单细胞RNA测序数据分析的方法并获得更好的结果准确性。

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