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Locality Sensitive Imputation for Single Cell RNA-Seq Data

机译:单个单元RNA-SEQ数据的位置敏感估算

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摘要

One of the most notable challenges in single cell RNA-Seq data analysis is the so called drop-out effect, where only a fraction of the transcriptome of each cell is captured. The random nature of dropouts, however, makes it possible to consider imputation methods as means of correcting for dropouts. In this article, we study some existing single cell RNA sequencing (scRNA-Seq) imputation methods and propose a novel iterative imputation approach based on efficiently computing highly similar cells. We then present the results of a comprehensive assessment of existing and proposed methods on real scRNA-Seq data sets with varying per cell sequencing depth.
机译:单细胞RNA-SEQ数据分析中最值得注意的挑战是所谓的辍学效果,其中仅捕获每个电池的转录组的一部分。 然而,辍学的随机性使得可以将估算方法视为纠正辍学的手段。 在本文中,我们研究了一些现有的单细胞RNA测序(SCRNA-SEQ)载体方法,并提出了一种基于有效计算高度相似的细胞的新型迭代借出方法。 然后,我们在真正的SCRNA-SEQ数据集上展示了对现有和提出方法的全面评估,每个细胞排序深度不同。

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