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Mixed Effects Modeling of Proliferation Rates in Cell-Based Models: Consequence for Pharmacogenomics and Cancer

机译:基于细胞的模型中增殖率的混合效应模型:药物基因组学和癌症的后果

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摘要

The International HapMap project has made publicly available extensive genotypic data on a number of lymphoblastoid cell lines (LCLs). Building on this resource, many research groups have generated a large amount of phenotypic data on these cell lines to facilitate genetic studies of disease risk or drug response. However, one problem that may reduce the usefulness of these resources is the biological noise inherent to cellular phenotypes. We developed a novel method, termed Mixed Effects Model Averaging (MEM), which pools data from multiple sources and generates an intrinsic cellular growth rate phenotype. This intrinsic growth rate was estimated for each of over 500 HapMap cell lines. We then examined the association of this intrinsic growth rate with gene expression levels and found that almost 30% (2,967 out of 10,748) of the genes tested were significant with FDR less than 10%. We probed further to demonstrate evidence of a genetic effect on intrinsic growth rate by determining a significant enrichment in growth-associated genes among genes targeted by top growth-associated SNPs (as eQTLs). The estimated intrinsic growth rate as well as the strength of the association with genetic variants and gene expression traits are made publicly available through a cell-based pharmacogenomics database, PACdb. This resource should enable researchers to explore the mediating effects of proliferation rate on other phenotypes.
机译:国际HapMap项目已公开提供了许多淋巴细胞样细胞系(LCL)的广泛基因型数据。在此资源的基础上,许多研究小组已在这些细胞系上产生了大量的表型数据,以促进对疾病风险或药物反应的遗传研究。但是,可能降低这些资源的可用性的一个问题是细胞表型固有的生物噪声。我们开发了一种称为混合效应模型平均(MEM)的新方法,该方法可汇总来自多个来源的数据并生成固有的细胞生长速率表型。对于500多个HapMap细胞系中的每一个,都估计了此固有增长率。然后,我们检查了这种内在增长率与基因表达水平的关联,发现几乎30%(10,748个样本中的2967个)的基因显着,FDR小于10%。我们进一步探查,以通过确定由顶部与生长相关的SNP(作为eQTL)靶向的基因中与生长相关的基因的显着富集来证明遗传对内在增长率的影响。可通过基于细胞的药物基因组学数据库PACdb公开获得估计的内在增长率以及与遗传变异和基因表达性状关联的强度。该资源应使研究人员能够探索增殖速率对其他表型的介导作用。

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