Choudhury Mudra, Ramsey Stephen A
Department of Biomedical Sciences, Oregon State University, Corvallis, OR, USA.
Gene Regul Syst Bio. 2016 Dec 13;10:105-110. doi: 10.4137/GRSB.S40768. eCollection 2016.
We describe a novel computational approach to identify transcription factors (TFs) that are candidate regulators in a human cell type of interest. Our approach involves integrating cell type-specific expression quantitative trait locus (eQTL) data and TF data from chromatin immunoprecipitation-to-tag-sequencing (ChIP-seq) experiments in cell lines. To test the method, we used eQTL data from human monocytes in order to screen for TFs. Using a list of known monocyte-regulating TFs, we tested the hypothesis that the binding sites of cell type-specific TF regulators would be concentrated in the vicinity of monocyte eQTLs. For each of 397 ChIP-seq data sets, we obtained an enrichment ratio for the number of ChIP-seq peaks that are located within monocyte eQTLs. We ranked ChIP-seq data sets according to their statistical significances for eQTL overlap, and from this ranking, we observed that monocyte-regulating TFs are more highly ranked than would be expected by chance. We identified 27 TFs that had significant monocyte enrichment scores and mapped them into a protein interaction network. Our analysis uncovered two novel candidate monocyte-regulating TFs, BCLAF1 and SIN3A. Our approach is an efficient method to identify candidate TFs that can be used for any cell/tissue type for which eQTL data are available.
我们描述了一种新颖的计算方法,用于识别在感兴趣的人类细胞类型中作为候选调节因子的转录因子(TFs)。我们的方法涉及整合细胞类型特异性表达数量性状位点(eQTL)数据和来自细胞系中染色质免疫沉淀测序(ChIP-seq)实验的TF数据。为了测试该方法,我们使用了来自人类单核细胞的eQTL数据来筛选TFs。利用已知的单核细胞调节TFs列表,我们检验了细胞类型特异性TF调节因子的结合位点将集中在单核细胞eQTL附近的假设。对于397个ChIP-seq数据集中的每一个,我们获得了位于单核细胞eQTL内的ChIP-seq峰数量的富集率。我们根据ChIP-seq数据集与eQTL重叠的统计显著性对其进行排名,从这个排名中我们观察到,单核细胞调节TFs的排名比随机预期的更高。我们鉴定出27个具有显著单核细胞富集分数的TFs,并将它们映射到一个蛋白质相互作用网络中。我们的分析发现了两个新型的候选单核细胞调节TFs,即BCLAF1和SIN3A。我们的方法是一种有效的方法,可用于识别可用于任何有eQTL数据的细胞/组织类型的候选TFs。