脂质和代谢特征基因位点非编码变异的肝脏调控机制。

IF 3.3 Q2 GENETICS & HEREDITY HGG Advances Pub Date : 2024-04-11 Epub Date: 2024-01-30 DOI:10.1016/j.xhgg.2024.100275
Gautam K Pandey, Swarooparani Vadlamudi, Kevin W Currin, Anne H Moxley, Jayna C Nicholas, Jessica C McAfee, K Alaine Broadaway, Karen L Mohlke
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引用次数: 0

摘要

全基因组关联研究(GWAS)已经确定了数百个肝病和脂质相关代谢特征的风险位点,但确定其靶基因和分子机制仍具有挑战性。我们通过整合肝脏基因表达的分子定量性状位点(eQTL)和肝脏染色质可及性定量性状位点(caQTL),预测了GWAS信号的靶基因。我们预测了位于 EFHD1、LITAF、ZNF329 和 GPR180 附近的四个 GWAS 信号的特定调控 caQTL 变异。通过转录报告实验,我们确定 caQTL 变体 rs13395911、rs11644920、rs34003091 和 rs9556404 在调控活性方面存在等位基因差异。我们还对 rs13395911 进行了蛋白质结合试验,发现 FOXA2 与 rs13395911 的等位基因有不同的相互作用。对于rs13395911和rs11644920等位基因在假定的增强子调控元件中的变异,我们使用CRISPRi证明了增强子的抑制改变了预测的目标基因和/或附近基因的表达。抑制rs13395911处的元件会降低EFHD1的表达,抑制rs11644920处的元件会降低LITAF、SNN和TXNDC11的表达。最后,我们发现 EFHD1 在 HepG2 细胞中是一个代谢活跃的基因。这些结果为将基因变异与细胞机制联系起来提供了关键步骤,有助于阐明肝病的病因。
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Liver regulatory mechanisms of noncoding variants at lipid and metabolic trait loci.

Genome-wide association studies (GWASs) have identified hundreds of risk loci for liver disease and lipid-related metabolic traits, although identifying their target genes and molecular mechanisms remains challenging. We predicted target genes at GWAS signals by integrating them with molecular quantitative trait loci for liver gene expression (eQTL) and liver chromatin accessibility QTL (caQTL). We predicted specific regulatory caQTL variants at four GWAS signals located near EFHD1, LITAF, ZNF329, and GPR180. Using transcriptional reporter assays, we determined that caQTL variants rs13395911, rs11644920, rs34003091, and rs9556404 exhibit allelic differences in regulatory activity. We also performed a protein binding assay for rs13395911 and found that FOXA2 differentially interacts with the alleles of rs13395911. For variants rs13395911 and rs11644920 in putative enhancer regulatory elements, we used CRISPRi to demonstrate that repression of the enhancers altered the expression of the predicted target and/or nearby genes. Repression of the element at rs13395911 reduced the expression of EFHD1, and repression of the element at rs11644920 reduced the expression of LITAF, SNN, and TXNDC11. Finally, we showed that EFHD1 is a metabolically active gene in HepG2 cells. Together, these results provide key steps to connect genetic variants with cellular mechanisms and help elucidate the causes of liver disease.

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来源期刊
HGG Advances
HGG Advances Biochemistry, Genetics and Molecular Biology-Molecular Medicine
CiteScore
4.30
自引率
4.50%
发文量
69
审稿时长
14 weeks
期刊最新文献
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