Department of Genetics, Yale University, New Haven, CT, USA.
Department of Genetics, Yale University, New Haven, CT, USA.
Curr Opin Genet Dev. 2024 Oct;88:102256. doi: 10.1016/j.gde.2024.102256. Epub 2024 Aug 31.
The genetic differences underlying unique phenotypes in humans compared to our closest primate relatives have long remained a mystery. Similarly, the genetic basis of adaptations between human groups during our expansion across the globe is poorly characterized. Uncovering the downstream phenotypic consequences of these genetic variants has been difficult, as a substantial portion lies in noncoding regions, such as cis-regulatory elements (CREs). Here, we review recent high-throughput approaches to measure the functions of CREs and the impact of variation within them. CRISPR screens can directly perturb CREs in the genome to understand downstream impacts on gene expression and phenotypes, while massively parallel reporter assays can decipher the regulatory impact of sequence variants. Machine learning has begun to be able to predict regulatory function from sequence alone, further scaling our ability to characterize genome function. Applying these tools across diverse phenotypes, model systems, and ancestries is beginning to revolutionize our understanding of noncoding variation underlying human evolution.
与我们最亲近的灵长类动物相比,人类独特表型背后的遗传差异长期以来一直是个谜。同样,人类在全球扩张过程中群体间适应性的遗传基础也描述得很差。由于很大一部分遗传变异位于非编码区域,如顺式调控元件 (CREs),因此很难揭示这些遗传变异的下游表型后果。在这里,我们回顾了最近用于测量 CRE 功能和其内部变异影响的高通量方法。CRISPR 筛选可以直接在基因组中扰动 CRE,以了解对基因表达和表型的下游影响,而大规模平行报告基因检测可以解析序列变异的调控影响。机器学习已经开始能够仅从序列预测调控功能,进一步扩大了我们对基因组功能进行描述的能力。将这些工具应用于不同的表型、模型系统和祖源正在开始彻底改变我们对人类进化中非编码变异的理解。