Li Wang, Songjoon Baek, Gauri Prasad, John Wildenthal, Konnie Guo, David Sturgill, Thucnhi Truongvo, Erin Char, Gianluca Pegoraro, Katherine McKinnon, The Pancreatic Cancer Cohort Consortium, The Pancreatic Cancer Case-Control Consortium, Jason W. Hoskins, Laufey T. Amundadottir, Efsun Arda
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引用次数: 0
摘要
调控增强子元件的遗传和表观遗传变异会增加对一系列病症的易感性。尽管最近取得了进展,但将增强子元件与靶基因联系起来以及预测增强子功能障碍的转录结果仍然是重大挑战。我们利用三维染色质构象测定法为人类胰腺生成了一个广泛的增强子相互作用数据集,涵盖了20多个供体和五种主要细胞类型,包括外分泌和内分泌区。我们采用网络方法将染色质相互作用解析为增强子-启动子树模型,从而促进了对增强子连通性的全基因组定量分析。利用这些树状模型,我们开发了一种机器学习算法来估计增强子扰动对人类胰腺细胞类型特异性基因表达的影响。与我们的计算方法相对应,我们利用 CRISPR 干扰技术扰乱了原代人类胰腺细胞中的增强子功能,并通过 RNA FISH 和高通量成像技术在单细胞水平上量化了其影响。我们的增强子树模型能够注释与胰腺疾病相关的常见种系风险变异,并将它们与特定细胞类型中的假定靶基因联系起来。对于胰腺导管腺癌,尽管导管细胞历来被认为是主要的原发细胞,但我们发现疾病易感性变异在针叶细胞调控元件中的富集程度更高。我们的综合方法结合了细胞类型特异性增强子-启动子相互作用图谱、计算模型和单细胞增强子扰动试验,为研究胰腺疾病的遗传基础提供了强大的资源。
Predictive Prioritization of Enhancers Associated with Pancreas Disease Risk
Genetic and epigenetic variations in regulatory enhancer elements increase susceptibility to a range of pathologies. Despite recent advances, linking enhancer elements to target genes and predicting transcriptional outcomes of enhancer dysfunction remain significant challenges. Using 3D chromatin conformation assays, we generated an extensive enhancer interaction dataset for the human pancreas, encompassing more than 20 donors and five major cell types, including both exocrine and endocrine compartments. We employed a network approach to parse chromatin interactions into enhancer-promoter tree models, facilitating a quantitative, genome-wide analysis of enhancer connectivity. With these tree models, we developed a machine learning algorithm to estimate the impact of enhancer perturbations on cell type- specific gene expression in the human pancreas. Orthogonal to our computational approach, we perturbed enhancer function in primary human pancreas cells using CRISPR interference and quantified the effects at the single-cell level through RNA FISH coupled with high-throughput imaging. Our enhancer tree models enabled the annotation of common germline risk variants associated with pancreas diseases, linking them to putative target genes in specific cell types. For pancreatic ductal adenocarcinoma, we found a stronger enrichment of disease susceptibility variants within acinar cell regulatory elements, despite ductal cells historically being assumed as the primary cell-of-origin. Our integrative approach — combining cell type-specific enhancer-promoter interaction mapping, computational models and single-cell enhancer perturbation assays — produced a robust resource for studying the genetic basis of pancreas disorders.