论文标题

根据大量表达数据估算的细胞类型比例的统计推断

Statistical Inference of Cell-type Proportions Estimated from Bulk Expression Data

论文作者

Cai, Biao, Zhang, Jingfei, Li, Hongyu, Su, Chang, Zhao, Hongyu

论文摘要

从不同细胞类型的混合物中,对细胞类型的特异性分析的兴趣越来越大。此类分析的关键第一步是对大量样品中细胞类型比例的准确估计。尽管最近提出了许多方法,但量化与估计的细胞类型比例相关的不确定性尚未得到很好的研究。缺乏对这些不确定性的考虑可能会导致下游分析中错过或错误的发现。在本文中,我们介绍了一个灵活的统计反卷积框架,该框架允许散装基因表达的一般和特定于主体的协方差。在此框架下,我们提出了一种称为贴花的被压缩的约束最小二乘方法,该方法估计细胞类型比例以及估计值的采样分布。仿真研究表明,贴花可以准确地量化估计比例的不确定性,而其他方法失败。应用贴花来分析Rosmap和GTEX项目中验尸脑样本的大量基因表达数据,我们表明,考虑到估计的细胞类型比例中的不确定性可能会导致细胞类型特异性差异表达的基因和Alzheimers病患者之间的不同受试者的细胞特异性差异基因和转录,例如,在Alzheimerse病之间和对照组之间进行了更准确的识别。

There is a growing interest in cell-type-specific analysis from bulk samples with a mixture of different cell types. A critical first step in such analyses is the accurate estimation of cell-type proportions in a bulk sample. Although many methods have been proposed recently, quantifying the uncertainties associated with the estimated cell-type proportions has not been well studied. Lack of consideration of these uncertainties can lead to missed or false findings in downstream analyses. In this article, we introduce a flexible statistical deconvolution framework that allows a general and subject-specific covariance of bulk gene expressions. Under this framework, we propose a decorrelated constrained least squares method called DECALS that estimates cell-type proportions as well as the sampling distribution of the estimates. Simulation studies demonstrate that DECALS can accurately quantify the uncertainties in the estimated proportions whereas other methods fail. Applying DECALS to analyze bulk gene expression data of post mortem brain samples from the ROSMAP and GTEx projects, we show that taking into account the uncertainties in the estimated cell-type proportions can lead to more accurate identifications of cell-type-specific differentially expressed genes and transcripts between different subject groups, such as between Alzheimer's disease patients and controls and between males and females.

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