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Chromatin Interaction Maps Identify Oncogenic Targets of Enhancer Duplications in Cancer.

GENOME RESEARCH(2024)

Fudan Univ | McGill Univ Hlth Ctr

Cited 0|Views2
Abstract
As a major type of structural variants, tandem duplication plays a critical role in tumorigenesis by increasing oncogene dosage. Recent work has revealed that noncoding enhancers are also affected by duplications leading to the activation of oncogenes that are inside or outside of the duplicated regions. However, the prevalence of enhancer duplication and the identity of their target genes remains largely unknown in the cancer genome. Here, by analyzing whole-genome sequencing data in a non-gene-centric manner, we identify 881 duplication hotspots in 13 major cancer types, most of which do not contain protein-coding genes. We show that the hotspots are enriched with distal enhancer elements and are highly lineage-specific. We develop a HiChIP-based methodology that navigates enhancer-promoter contact maps to prioritize the target genes for the duplication hotspots harboring enhancer elements. The methodology identifies many novel enhancer duplication events activating oncogenes such as ESR1, FOXA1, GATA3, GATA6, TP63, and VEGFA, as well as potentially novel oncogenes such as GRHL2, IRF2BP2, and CREB3L1 In particular, we identify a duplication hotspot on Chromosome 10p15 harboring a cluster of enhancers, which skips over two genes, through a long-range chromatin interaction, to activate an oncogenic isoform of the NET1 gene to promote migration of gastric cancer cells. Focusing on tandem duplications, our study substantially extends the catalog of noncoding driver alterations in multiple cancer types, revealing attractive targets for functional characterization and therapeutic intervention.
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要点】:本研究通过全基因组测序数据和非基因中心分析方法,识别出881个增强子重复热点,并开发HiChIP方法绘制增强子-启动子接触图,确定了这些热点激活的致癌基因,为癌症治疗提供了新的靶点。

方法】:研究采用全基因组测序数据分析和HiChIP技术,结合生物信息学方法,确定增强子重复热点及其目标基因。

实验】:实验通过分析13种主要癌症类型的全基因组测序数据,使用HiChIP技术绘制了增强子-启动子接触图,识别了多个新型致癌基因,如ESR1、FOXA1、GATA3等,并在胃癌细胞中验证了特定增强子重复热点激活NET1基因促进细胞迁移的作用。