SCRABBLE: single-cell RNA-seq imputation constrained by bulk RNA-seq data

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作者
Tao Peng
Qin Zhu
Penghang Yin
Kai Tan
机构
[1] Children’s Hospital of Philadelphia,Division of Oncology and Center for Childhood Cancer Research
[2] University of Pennsylvania,Graduate Group in Genomics and Computational Biology
[3] University of California,Department of Mathematics
[4] Children’s Hospital of Philadelphia,Department of Biomedical and Health Informatics
[5] University of Pennsylvania,Department of Pediatrics, Perelman School of Medicine
[6] University of Pennsylvania,Department of Cell and Developmental Biology, Perelman School of Medicine
[7] University of Pennsylvania,Department of Genetics, Perelman School of Medicine
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关键词
Single-cell RNA-seq; Imputation; Matrix regularization; Optimization;
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摘要
Single-cell RNA-seq data contain a large proportion of zeros for expressed genes. Such dropout events present a fundamental challenge for various types of data analyses. Here, we describe the SCRABBLE algorithm to address this problem. SCRABBLE leverages bulk data as a constraint and reduces unwanted bias towards expressed genes during imputation. Using both simulation and several types of experimental data, we demonstrate that SCRABBLE outperforms the existing methods in recovering dropout events, capturing true distribution of gene expression across cells, and preserving gene-gene relationship and cell-cell relationship in the data.
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