Research Group "Functional Genome Analysis," Leibniz Institute for Farm Animal Biology, 18196 Dummerstorf, Germany.
Genetics. 2012 Nov;192(3):1109-22. doi: 10.1534/genetics.112.143081. Epub 2012 Aug 17.
Cortisol is a steroid hormone with important roles in regulating immune and metabolic functions and organismal responses to external stimuli are mediated by the glucocorticoid system. Dysregulation of the afferent and efferent axis of glucocorticoid signaling have adverse effects on growth, health status, and well-being. Glucocorticoid secretion and signaling show large interindividual variation that has a considerable genetic component; however, little is known about the underlying genetic variants. Here, we used trait-correlated expression analysis, screening for expression quantitative trait loci (eQTL), genome-wide association (GWA) studies, and causality modeling to identify candidate genes in porcine liver and muscle that affect or respond to plasma cortisol levels. Through trait-correlated expression, we characterized transcript activities in many biological functions in liver and muscle. Candidates from the list of trait-correlated expressed genes were narrowed using only those genes with an eQTL, and these were further prioritized by determining whether their expression was predicted to be related to variation in plasma cortisol levels. Using network edge orienting (NEO), a causality modeling algorithm, 26 of 990 candidates in liver were predicted to affect and 70 to respond to plasma cortisol levels. Of 593 candidates in muscle that were correlated with cortisol levels and were regulated by eQTL, 2 and 25 were predicted as effective and responsive, respectively, to plasma cortisol levels. Comprehensive data integration has helped to elucidate the complex molecular networks contributing to cortisol levels and thus its subsequent metabolic effects. The discrimination of up- and downstream effects of transcripts affecting or responding to plasma cortisol concentrations improves the understanding of the biology of complex traits related to growth, health, and well-being.
皮质醇是一种类固醇激素,在调节免疫和代谢功能方面发挥着重要作用,机体对外界刺激的反应是由糖皮质激素系统介导的。糖皮质激素信号传入和传出轴的失调对生长、健康状况和幸福感都有不良影响。糖皮质激素的分泌和信号传递表现出很大的个体间差异,这种差异有相当大的遗传成分;然而,关于潜在的遗传变异知之甚少。在这里,我们使用与性状相关的表达分析、筛选表达数量性状基因座 (eQTL)、全基因组关联 (GWA) 研究和因果建模来鉴定影响或响应血浆皮质醇水平的猪肝脏和肌肉中的候选基因。通过与性状相关的表达,我们描述了肝脏和肌肉中许多生物学功能的转录活性。从与性状相关的表达基因列表中筛选出候选基因,只保留那些具有 eQTL 的基因,并通过确定其表达是否与血浆皮质醇水平的变化相关来进一步优先考虑这些基因。使用网络边缘定向 (NEO) 因果建模算法,在肝脏中,990 个候选基因中有 26 个被预测为影响和 70 个响应血浆皮质醇水平。在肌肉中,有 593 个与皮质醇水平相关且受 eQTL 调节的候选基因中,有 2 个和 25 个被预测为对血浆皮质醇水平有有效和响应作用。综合数据整合有助于阐明导致皮质醇水平及其随后代谢效应的复杂分子网络。区分影响或响应血浆皮质醇浓度的转录本的上下游效应,提高了对与生长、健康和幸福感相关的复杂性状的生物学的理解。