Djordjevic Djordje, Deshpande Vinita, Szczesnik Tomasz, Yang Andrian, Humphreys David T, Giannoulatou Eleni, Ho Joshua W K
Victor Chang Cardiac Research Institute, Darlinghurst, NSW, 2010, Australia.
St. Vincent's Clinical School, The University of New South Wales, Darlinghurst, NSW, 2010, Australia.
Biophys Rev. 2015 Mar;7(1):141-159. doi: 10.1007/s12551-014-0145-3. Epub 2014 Dec 10.
The pace of disease gene discovery is still much slower than expected, even with the use of cost-effective DNA sequencing and genotyping technologies. It is increasingly clear that many inherited heart diseases have a more complex polygenic aetiology than previously thought. Understanding the role of gene-gene interactions, epigenetics, and non-coding regulatory regions is becoming increasingly critical in predicting the functional consequences of genetic mutations identified by genome-wide association studies and whole-genome or exome sequencing. A systems biology approach is now being widely employed to systematically discover genes that are involved in heart diseases in humans or relevant animal models through bioinformatics. The overarching premise is that the integration of high-quality causal gene regulatory networks (GRNs), genomics, epigenomics, transcriptomics and other genome-wide data will greatly accelerate the discovery of the complex genetic causes of congenital and complex heart diseases. This review summarises state-of-the-art genomic and bioinformatics techniques that are used in accelerating the pace of disease gene discovery in heart diseases. Accompanying this review, we provide an interactive web-resource for systems biology analysis of mammalian heart development and diseases, CardiacCode ( http://CardiacCode.victorchang.edu.au/ ). CardiacCode features a dataset of over 700 pieces of manually curated genetic or molecular perturbation data, which enables the inference of a cardiac-specific GRN of 280 regulatory relationships between 33 regulator genes and 129 target genes. We believe this growing resource will fill an urgent unmet need to fully realise the true potential of predictive and personalised genomic medicine in tackling human heart disease.
即便使用了性价比高的DNA测序和基因分型技术,疾病基因的发现速度仍比预期慢得多。越来越清楚的是,许多遗传性心脏病的病因比之前认为的更为复杂,具有多基因性质。了解基因与基因之间的相互作用、表观遗传学以及非编码调控区域在预测全基因组关联研究、全基因组或外显子组测序所识别的基因突变的功能后果方面正变得越来越关键。现在,一种系统生物学方法正被广泛应用,通过生物信息学系统地发现人类或相关动物模型中涉及心脏病的基因。总体前提是,高质量的因果基因调控网络(GRNs)、基因组学、表观基因组学、转录组学和其他全基因组数据的整合将极大地加速先天性和复杂性心脏病复杂遗传病因的发现。本综述总结了用于加快心脏病疾病基因发现步伐的最新基因组学和生物信息学技术。伴随本综述,我们提供了一个用于哺乳动物心脏发育和疾病系统生物学分析的交互式网络资源——心脏编码(http://CardiacCode.victorchang.edu.au/)。心脏编码具有一个包含700多条人工整理的遗传或分子扰动数据的数据集,这使得能够推断出一个心脏特异性的GRN,该GRN包含33个调控基因和129个靶基因之间的280种调控关系。我们相信,这一不断增长的资源将满足一项紧迫的未满足需求,即充分实现预测性和个性化基因组医学在攻克人类心脏病方面的真正潜力。