Computational Biology Unit, Department of Informatics, University of Bergen, Bergen, Norway.
Front Endocrinol (Lausanne). 2022 Aug 17;13:949061. doi: 10.3389/fendo.2022.949061. eCollection 2022.
Hormones act within in highly dynamic systems and much of the phenotypic response to variation in hormone levels is mediated by changes in gene expression. The increase in the number and power of large genetic association studies has led to the identification of hormone linked genetic variants. However, the biological mechanisms underpinning the majority of these loci are poorly understood. The advent of affordable, high throughput next generation sequencing and readily available transcriptomic databases has shown that many of these genetic variants also associate with variation in gene expression levels as expression Quantitative Trait Loci (eQTLs). In addition to further dissecting complex genetic variation, eQTLs have been applied as tools for causal inference. Many hormone networks are driven by transcription factors, and many of these genes can be linked to eQTLs. In this mini-review, we demonstrate how causal inference and gene networks can be used to describe the impact of hormone linked genetic variation upon the transcriptome within an endocrinology context.
激素在高度动态的系统中发挥作用,激素水平变化引起的表型反应很大程度上是通过基因表达的变化来介导的。大量大型遗传关联研究的数量和能力的增加导致了与激素相关的遗传变异的识别。然而,这些基因座所依赖的大多数生物学机制尚未得到很好的理解。经济实惠、高通量的下一代测序和现成的转录组数据库的出现表明,许多这些遗传变异也与基因表达水平的变化相关,作为表达数量性状基因座 (eQTL)。除了进一步剖析复杂的遗传变异外,eQTL 还被用作因果推断的工具。许多激素网络由转录因子驱动,其中许多基因可以与 eQTL 相关。在这篇迷你综述中,我们展示了如何使用因果推断和基因网络来描述内分泌学背景下与激素相关的遗传变异对转录组的影响。