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An accurate and robust imputation method scImpute for single-cell RNA-seq data

机译:一种准确,可靠的插补方法,适用于单细胞RNA-seq数据

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The emerging single-cell RNA sequencing (scRNA-seq) technologies enable the investigation of transcriptomic landscapes at the?single-cell resolution. ScRNA-seq data analysis is complicated by excess zero counts, the so-called dropouts due to low amounts of mRNA sequenced within individual cells. We introduce scImpute, a statistical method to accurately and robustly impute the dropouts in scRNA-seq data. scImpute automatically identifies likely dropouts, and only perform imputation on these values without introducing new biases to the rest data. scImpute also detects outlier cells and excludes them from imputation. Evaluation based on both simulated and real human and mouse scRNA-seq data suggests that scImpute is an effective tool to recover transcriptome dynamics masked by dropouts. scImpute is shown to identify likely dropouts, enhance the clustering of cell subpopulations, improve the accuracy of differential expression analysis, and aid the study of gene expression dynamics.
机译:新兴的单细胞RNA测序(scRNA-seq)技术能够以单细胞分辨率研究转录组学情况。 ScRNA-seq数据分析由于过多的零计数而变得复杂,这是由于单个细胞内的mRNA测序量较低而导致的所谓缺失。我们介绍了scImpute,这是一种统计方法,可以准确而可靠地估算scRNA-seq数据中的缺失。 scImpute自动识别可能的丢失,并且仅对这些值执行插补,而不会对其余数据引入新的偏差。 scImpute还可以检测离群细胞并将其排除在插补之外。基于模拟和真实人类和小鼠scRNA-seq数据的评估表明,scImpute是恢复被辍学掩盖的转录组动态的有效工具。 scImpute可显示出可能的缺失,增强细胞亚群的聚集,提高差异表达分析的准确性,并有助于基因表达动力学的研究。

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