增强子
计算生物学
生物
基因组
稳健性(进化)
上位性
遗传学
基因
增强子rna
基因表达
作者
Xueqiu Lin,Yanxia Liu,Shuai Liu,Xiang Zhu,Lingling Wu,Yan‐Yu Zhu,Dehua Zhao,Xiaoshu Xu,Augustine Chemparathy,Haifeng Wang,Yaqiang Cao,Muneaki Nakamura,Jasprina N. Noordermeer,Marie La Russa,Wing Hung Wong,Keji Zhao,Lei S. Qi
出处
期刊:Science
[American Association for the Advancement of Science]
日期:2022-08-11
卷期号:377 (6610): 1077-1085
被引量:86
标识
DOI:10.1126/science.abk3512
摘要
Mammalian genomes have multiple enhancers spanning an ultralong distance (>megabases) to modulate important genes, but it is unclear how these enhancers coordinate to achieve this task. We combine multiplexed CRISPRi screening with machine learning to define quantitative enhancer-enhancer interactions. We find that the ultralong distance enhancer network has a nested multilayer architecture that confers functional robustness of gene expression. Experimental characterization reveals that enhancer epistasis is maintained by three-dimensional chromosomal interactions and BRD4 condensation. Machine learning prediction of synergistic enhancers provides an effective strategy to identify noncoding variant pairs associated with pathogenic genes in diseases beyond genome-wide association studies analysis. Our work unveils nested epistasis enhancer networks, which can better explain enhancer functions within cells and in diseases.
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