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Clustering Single-Cell RNA-Seq Data with Regularized Gaussian Graphical Model

机译:聚集单个单元RNA-SEQ数据与正则化高斯图形模型

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摘要

Single-cell RNA-seq (scRNA-seq) is a powerful tool to measure the expression patterns of individual cells and discover heterogeneity and functional diversity among cell populations. Due to variability, it is challenging to analyze such data efficiently. Many clustering methods have been developed using at least one free parameter. Different choices for free parameters may lead to substantially different visualizations and clusters. Tuning free parameters is also time consuming. Thus there is need for a simple, robust, and efficient clustering method. In this paper, we propose a new regularized Gaussian graphical clustering (RGGC) method for scRNA-seq data. RGGC is based on high-order (partial) correlations and subspace learning, and is robust over a wide-range of a regularized parameter λ. Therefore, we can simply set λ=2 or λ=log(p) for AIC (Akaike information criterion) or BIC (Bayesian information criterion) without cross-validation. Cell subpopulations are discovered by the Louvain community detection algorithm that determines the number of clusters automatically. There is no free parameter to be tuned with RGGC. When evaluated with simulated and benchmark scRNA-seq data sets against widely used methods, RGGC is computationally efficient and one of the top performers. It can detect inter-sample cell heterogeneity, when applied to glioblastoma scRNA-seq data.
机译:单细胞RNA-SEQ(ScRNA-SEQ)是一种强大的工具,用于测量单个细胞的表达模式,并发现细胞群之间的异质性和功能多样性。由于可变性,有效地分析这些数据是具有挑战性的。使用至少一个自由参数开发了许多聚类方法。免费参数的不同选择可能导致显着不同的可视化和集群。调整免费参数也是耗时的。因此,需要一种简单,坚固且有效的聚类方法。在本文中,我们提出了一种用于SCRNA-SEQ数据的新的正则化高斯图形聚类(RGGC)方法。 RGGC基于高阶(部分)相关性和子空间学习,并且在宽范围的正则化参数λ上是强大的。因此,我们可以简单地设置λ= 2或λ= log(p),用于AIC(akaike信息标准)或BIC(贝叶斯信息标准)而无需交叉验证。通过Louvain群落检测算法发现细胞亚步骤,其自动确定群集数。没有使用RGGC调整的免费参数。当用仿真和基准SCRNA-SEQ数据集进行评估时,针对广泛使用的方法,RGGC是计算的高效,并且顶部表演者之一。当应用于胶质母细胞瘤SCRNA-SEQ数据时,它可以检测样品间细胞异质性。

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