A Statistical Method for Association Analysis of Cell Type Compositions.

Pub Date : 2021-12-01 Epub Date: 2021-09-15 DOI:10.1007/s12561-020-09293-0
Licai Huang, Paul Little, Jeroen R Huyghe, Qian Shi, Tabitha A Harrison, Greg Yothers, Thomas J George, Ulrike Peters, Andrew T Chan, Polly A Newcomb, Wei Sun
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Abstract

Gene expression data are often collected from tissue samples that are composed of multiple cell types. Studies of cell type composition based on gene expression data from tissue samples have recently attracted increasing research interest and led to new method development for cell type composition estimation. This new information on cell type composition can be associated with individual characteristics (e.g., genetic variants) or clinical outcomes (e.g., survival time). Such association analysis can be conducted for each cell type separately followed by multiple testing correction. An alternative approach is to evaluate this association using the composition of all the cell types, thus aggregating association signals across cell types. A key challenge of this approach is to account for the dependence across cell types. We propose a new method to quantify the distances between cell types while accounting for their dependencies, and use this information for association analysis. We demonstrate our method in two applied examples: to assess the association between immune cell type composition in tumor samples of colorectal cancer patients versus survival time and SNP genotypes. We found immune cell composition has prognostic value, and our distance metric leads to more accurate survival time prediction than other distance metrics that ignore cell type dependencies. In addition, survival time-associated SNPs are enriched among the SNPs associated with immune cell composition.

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细胞类型组成关联分析的统计方法。
基因表达数据通常是从由多种细胞类型组成的组织样本中收集的。基于组织样本基因表达数据的细胞类型组成研究最近吸引了越来越多的研究兴趣,并导致了细胞类型组成估计的新方法的发展。这种关于细胞类型组成的新信息可以与个体特征(例如,遗传变异)或临床结果(例如,生存时间)相关联。这种关联分析可以分别针对每种细胞类型进行,然后进行多次测试校正。另一种方法是使用所有细胞类型的组成来评估这种关联,从而聚集跨细胞类型的关联信号。这种方法的一个关键挑战是考虑跨细胞类型的依赖性。我们提出了一种新的方法来量化细胞类型之间的距离,同时考虑它们的相关性,并将这些信息用于关联分析。我们在两个应用实例中证明了我们的方法:评估结直肠癌癌症患者肿瘤样本中免疫细胞类型组成与生存时间和SNP基因型之间的关系。我们发现免疫细胞组成具有预后价值,与其他忽略细胞类型依赖性的距离指标相比,我们的距离指标可以更准确地预测生存时间。此外,存活时间相关的SNPs在与免疫细胞组成相关的SNP中富集。
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