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Variance-adjusted Mahalanobis (VAM): a fast and accurate method for cell-specific gene set scoring

机译:方差调整的Mahalanobis(VAM):一种快速准确的细胞特异性基因设定得分

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摘要

Statistical analysis of single cell RNA-sequencing (scRNA-seq) data is hindered by high levels of technical noise and inflated zero counts. One promising approach for addressing these challenges is gene set testing, or pathway analysis, which can mitigate sparsity and noise, and improve interpretation and power, by aggregating expression data to the pathway level. Unfortunately, methods optimized for bulk transcriptomics perform poorly on scRNA-seq data and progress on single cell-specific techniques has been limited. Importantly, no existing methods support cell-level gene set inference. To address this challenge, we developed a new gene set testing method, Variance-adjusted Mahalanobis (VAM), that integrates with the Seurat framework and can accommodate the technical noise, sparsity and large sample sizes characteristic of scRNA-seq data. The VAM method computes cell-specific pathway scores to transform a cell-by-gene matrix into a cell-by-pathway matrix that can be used for both data visualization and statistical enrichment analysis. Because the distribution of these scores under the null of uncorrelated technical noise has an accurate gamma approximation, both population and cell-level inference is supported. As demonstrated using simulated and real scRNA-seq data, the VAM method provides superior classification accuracy at a lower computation cost relative to existing single sample gene set testing approaches.
机译:单细胞RNA测序(ScRNA-SEQ)数据的统计分析受到高水平的技术噪音和零计数的阻碍。解决这些挑战的一个有希望的方法是基因设置测试或途径分析,可以通过将表达数据聚集到通路水平来减轻稀疏性和噪声,并改善解释和权力。遗憾的是,针对散装转录组织优化的方法对ScrNA-SEQ数据进行了很差的情况,并且有限地对单细胞特异性技术进行了有限。重要的是,没有现有方法支持细胞级基因集推断。为了解决这一挑战,我们开发了一种新的基因集测试方法,方差调整的Mahalanobis(VAM),与SeuraT框架集成,可以适应ScrNA-SEQ数据的技术噪音,稀疏性和大型样本尺寸。 VAM方法计算细胞特异性途径评分以将细胞逐矩阵转化为可用于数据可视化和统计富集分析的逐途径基质。由于这些分数在不相关技术噪声的零点下的分布具有精确的伽马近似,因此支持群体和细胞级推断。如使用模拟和真实SCRNA-SEQ数据所示,VAM方法在相对于现有的单样本基因设置测试方法的较低计算成本下提供卓越的分类精度。

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