2019
DOI: 10.1101/793463
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SCRIBE: a new approach to dropout imputation and batch effects correction for single-cell RNA-seq data

Abstract: Single-cell RNA sequencing technologies are widely used in recent years as a powerful tool allowing the observation of gene expression at the resolution of single cells. Two of the major challenges in scRNA-seq data analysis are dropout events and batch effects. The inflation of zero(dropout rate) varies substantially across single cells. Evidence has shown that technical noise, including batch effects, explains a notable proportion of this cell-to-cell variation. To capture biological variation, it is necessa… Show more

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