当前位置: X-MOL 学术Annu. Rev. Genomics Hum. Genet. › 论文详情
Our official English website, www.x-mol.net, welcomes your feedback! (Note: you will need to create a separate account there.)
Enhancer Predictions and Genome-Wide Regulatory Circuits.
Annual Review of Genomics and Human Genetics ( IF 8.7 ) Pub Date : 2020-09-01 , DOI: 10.1146/annurev-genom-121719-010946
Michael A Beer 1 , Dustin Shigaki 1 , Danwei Huangfu 2
Affiliation  

Spatiotemporal control of gene expression during development requires orchestrated activities of numerous enhancers, which are cis-regulatory DNA sequences that, when bound by transcription factors, support selective activation or repression of associated genes. Proper activation of enhancers is critical during embryonic development, adult tissue homeostasis, and regeneration, and inappropriate enhancer activity is often associated with pathological conditions such as cancer. Multiple consortia [e.g., the Encyclopedia of DNA Elements (ENCODE) Consortium and National Institutes of Health Roadmap Epigenomics Mapping Consortium] and independent investigators have mapped putative regulatory regions in a large number of cell types and tissues, but the sequence determinants of cell-specific enhancers are not yet fully understood. Machine learning approaches trained on large sets of these regulatory regions can identify core transcription factor binding sites and generate quantitative predictions of enhancer activity and the impact of sequence variants on activity. Here, we review these computational methods in the context of enhancer prediction and gene regulatory network models specifying cell fate.

中文翻译:


增强子预测和全基因组调节电路。

发育过程中基因表达的时空控制需要众多增强子的协调活动,这些增强子是顺式的- 调节性 DNA 序列,当与转录因子结合时,支持相关基因的选择性激活或抑制。在胚胎发育、成体组织稳态和再生过程中,适当激活增强子至关重要,不适当的增强子活性通常与癌症等病理状况有关。多个联盟 [例如,DNA 元素百科全书 (ENCODE) 联盟和美国国立卫生研究院路线图表观基因组图谱联盟] 和独立研究人员已经在大量细胞类型和组织中绘制了推定的调控区域,但细胞特异性的序列决定因素增强子尚未完全了解。在大量这些调控区域上训练的机器学习方法可以识别核心转录因子结合位点,并生成增强子活性和序列变异对活性影响的定量预测。在这里,我们在增强子预测和指定细胞命运的基因调控网络模型的背景下回顾了这些计算方法。

更新日期:2020-09-03
down
wechat
bug