Statistics Department, The Ohio State University, Columbus, Ohio.
Statistics Department, The Ohio State University, Newark, Ohio.
Genet Epidemiol. 2021 Feb;45(1):36-45. doi: 10.1002/gepi.22352. Epub 2020 Aug 30.
The breakthroughs in next generation sequencing have allowed us to access data consisting of both common and rare variants, and in particular to investigate the impact of rare genetic variation on complex diseases. Although rare genetic variants are thought to be important components in explaining genetic mechanisms of many diseases, discovering these variants remains challenging, and most studies are restricted to population-based designs. Further, despite the shift in the field of genome-wide association studies (GWAS) towards studying rare variants due to the "missing heritability" phenomenon, little is known about rare X-linked variants associated with complex diseases. For instance, there is evidence that X-linked genes are highly involved in brain development and cognition when compared with autosomal genes; however, like most GWAS for other complex traits, previous GWAS for mental diseases have provided poor resources to deal with identification of rare variant associations on X-chromosome. In this paper, we address the two issues described above by proposing a method that can be used to test X-linked variants using sequencing data on families. Our method is much more general than existing methods, as it can be applied to detect both common and rare variants, and is applicable to autosomes as well. Our simulation study shows that the method is efficient, and exhibits good operational characteristics. An application to the University of Miami Study on Genetics of Autism and Related Disorders also yielded encouraging results.
下一代测序的突破使我们能够获取包含常见和罕见变异的数据,特别是研究罕见遗传变异对复杂疾病的影响。尽管罕见遗传变异被认为是许多疾病遗传机制的重要组成部分,但发现这些变异仍然具有挑战性,并且大多数研究仅限于基于人群的设计。此外,尽管由于“遗传缺失”现象,全基因组关联研究(GWAS)领域已经转向研究罕见变异,但对于与复杂疾病相关的罕见 X 连锁变异知之甚少。例如,有证据表明,与常染色体基因相比,X 连锁基因在大脑发育和认知中高度参与;然而,与大多数其他复杂性状的 GWAS 一样,以前针对精神疾病的 GWAS 为识别 X 染色体上的罕见变异关联提供了很少的资源。在本文中,我们通过提出一种可以使用家族测序数据来测试 X 连锁变异的方法来解决上述两个问题。我们的方法比现有方法更通用,因为它可以应用于检测常见和罕见变异,并且也适用于常染色体。我们的模拟研究表明,该方法效率高,具有良好的操作特性。对迈阿密大学自闭症和相关障碍遗传学研究的应用也产生了令人鼓舞的结果。