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Cell Subclass Identification in Single-Cell RNA-Sequencing Data Using Orthogonal Nonnegative Matrix Factorization

机译:使用正交非负矩阵分解的单细胞RNA测序数据中的细胞子类鉴定

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Identification of cell subclasses using single-cell RNA-Sequencing (scRNA-Seq) data is of paramount importance since it uncovers the hidden biological processes within the cell population. While the nonnegative matrix factorization (NMF) model has been reported to be effective in various unsupervised clustering tasks, it may still produce inappropriate results for some scRNA-Seq datasets with heterogeneous structures. In this paper, we propose the use of an orthogonally constrained NMF (ONMF) model for the subclass identification problem of scRNA-Seq datasets. The ONMF model in general can provide improved clustering performance, but is challenging to solve. We present a computationally efficient algorithm based on optimization techniques of variable splitting and alternating direction method of multipliers (ADMM). Through two scRNA-Seq datasets, we show that the proposed method can yield promising performance in identifying cell subclasses and detecting key genes over the existing methods. Moreover, the key genes identified by the proposed method are shown biologically significant via the gene set enrichment analysis.
机译:使用单细胞RNA测序(scRNA-SEQ)的数据单元的子类的鉴定是非常重要的,因为它揭示了在细胞群中的隐藏的生物过程。虽然非负矩阵分解(NMF)模型已报告是有效的各种无监督聚类的任务,它仍可能产生一些scRNA-Seq的数据集与异质结构不当的结果。在本文中,我们提出了scRNA-Seq的数据集的子类识别问题的使用正交约束NMF(ONMF)模式。一般ONMF模型可提供改进的聚类效果,但具有挑战性的解决。提出了一种基于乘法器的可变分割和交替方向法(ADMM)的优化技术在计算上高效的算法。通过两个scRNA-SEQ的数据集,我们表明,所提出的方法可以产生在确定细胞亚类和现有的方法在检测的关键基因有前途的性能。此外,由所提出的方法鉴定的关键基因被示为通过基因组富集分析生物显著。

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