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首页> 外文期刊>BMC Genomics >scNPF: an integrative framework assisted by network propagation and network fusion for preprocessing of single-cell RNA-seq data
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scNPF: an integrative framework assisted by network propagation and network fusion for preprocessing of single-cell RNA-seq data

机译:SCNPF:通过网络传播和网络融合为预处理单小区RNA-SEQ数据进行辅助的一体化框架

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摘要

Single-cell RNA-sequencing (scRNA-seq) is fast becoming a powerful tool for profiling genome-scale transcriptomes of individual cells and capturing transcriptome-wide cell-to-cell variability. However, scRNA-seq technologies suffer from high levels of technical noise and variability, hindering reliable quantification of lowly and moderately expressed genes. Since most downstream analyses on scRNA-seq, such as cell type clustering and differential expression analysis, rely on the gene-cell expression matrix, preprocessing of scRNA-seq data is a critical preliminary step in the analysis of scRNA-seq data. We presented scNPF, an integrative scRNA-seq preprocessing framework assisted by network propagation and network fusion, for recovering gene expression loss, correcting gene expression measurements, and learning similarities between cells. scNPF leverages the context-specific topology inherent in the given data and the priori knowledge derived from publicly available molecular gene-gene interaction networks to augment gene-gene relationships in a data driven manner. We have demonstrated the great potential of scNPF in scRNA-seq preprocessing for accurately recovering gene expression values and learning cell similarity networks. Comprehensive evaluation of scNPF across a wide spectrum of scRNA-seq data sets showed that scNPF achieved comparable or higher performance than the competing approaches according to various metrics of internal validation and clustering accuracy. We have made scNPF an easy-to-use R package, which can be used as a versatile preprocessing plug-in for most existing scRNA-seq analysis pipelines or tools. scNPF is a universal tool for preprocessing of scRNA-seq data, which jointly incorporates the global topology of priori interaction networks and the context-specific information encapsulated in the scRNA-seq data to capture both shared and complementary knowledge from diverse data sources. scNPF could be used to recover gene signatures and learn cell-to-cell similarities from emerging scRNA-seq data to facilitate downstream analyses such as dimension reduction, cell type clustering, and visualization.
机译:单细胞RNA测序(ScRNA-SEQ)正在快速成为分析个体细胞的基因组转录组和捕获转录组细胞对细胞变异性的强大工具。然而,Scrna-SEQ技术患有高水平的技术噪音和可变性,妨碍低且中间表达基因的可靠定量。由于大多数下游分析SCRNA-SEQ,例如细胞型聚类和差异表达分析,依赖于基因细胞表达矩阵,SCRNA-SEQ数据的预处理是SCRNA-SEQ数据分析中的关键初步步骤。我们介绍了通过网络传播和网络融合的一体化ScRNA-SEQ预处理框架,用于回收基因表达损失,校正基因表达测量和细胞之间的学习相似性。 SCNPF利用给定数据中固有的上下文拓扑和从公共可用的分子基因相互作用网络衍生的先验知识以数据驱动的方式增强基因基因关系。我们已经证明了SCNPF在SCRNA-SEQ预处理中的巨大潜力,以准确地回收基因表达值和学习细胞相似网络。 SCNPF跨越SCNPF跨越SCRNA-SEQ数据集的综合评价显示,根据内部验证和聚类精度的各种指标,SCNPF的性能比竞争方法相当或更高。我们已经制作了SCNPF易于使用的R包,可用作大多数现有ScrNA-SEQ分析管道或工具的多功能预处理插件。 SCNPF是用于预处理SCRNA-SEQ数据的普遍工具,其共同包含先验交互网络的全局拓扑以及封装在SCRNA-SEQ数据中的上下文专用信息,以捕获来自不同数据源的共享和互补知识。 SCNPF可用于恢复基因签名,并学习从出现SCRNA-SEQ数据的细胞对细胞相似性,以便于下游分析,例如尺寸减少,细胞类型聚类和可视化。

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