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Discovering Cell Types by Integrating Single-cell RNA-sequencing and Protein Interaction Network

机译:通过整合单细胞RNA测序和蛋白质相互作用网络来发现细胞类型

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Single-cell RNA-sequencing (scRNA-seq) investigates the transcriptome of individual cells, and discovering of cell types is one of the prominent job for scRNA-seq. Current algorithms address this issue by only exploiting the profiles of scRNA-seq, which is insufficient to fully characterize cell types. How to integrate the accumulated protein interaction networks and scRNA-seq is promising to identify cell types. In this study, we proposed a graph regularized nonnegative matrix factorization algorithm for the identification of cell types (called GrNMFCT), where the protein interaction network and scRNA-seq are integrated. Specifically, the profiles of scRNA-seq is factorized to obtain the latent features of cells, and protein interaction network is incorporated into the objective function via the regularization strategy. In this case, cell type discovery is formulated as an optimization problem. The experimental results demonstrate that the proposed algorithm is more accurate than state-of-the-art on the identification of cell types on both artificial and biological data. The proposed algorithm provides an effective way for the integrative analysis of scRNA-seq data.
机译:单细胞RNA测序(ScRNA-SEQ)研究单个细胞的转录组,发现细胞类型是SCRNA-SEQ的突出作业之一。当前算法仅通过利用SCRNA-SEQ的配置文件来解决此问题,这不足以完全表征单元类型。如何整合累积的蛋白质相互作用网络和ScrNA-SEQ是有希望识别细胞类型的。在这项研究中,我们提出了一种曲线图正规化的非负矩阵分解算法,用于识别细胞类型(称为GRNMFCT),其中蛋白质相互作用网络和SCRNA-SEQ集成。具体地,ScRNA-SEQ的分布是为了获得细胞的潜在特征,并且通过正则化策略将蛋白质相互作用网络结合到目标函数中。在这种情况下,将细胞类型发现被制定为优化问题。实验结果表明,在人工和生物数据的识别上,所提出的算法比最先进的算法更准确。该算法为ScrNA-SEQ数据的集成分析提供了有效的方法。

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