Department of Biostatistics, State Key Laboratory of Organ Failure Research, Ministry of Education, and Guangdong Provincial Key Laboratory of Tropical Disease Research, School of Public Health, Southern Medical University, Guangzhou, China.
Guangdong-Hong Kong-Macao Joint Laboratory for Contaminants Exposure and Health, Guangzhou, China.
Heredity (Edinb). 2022 Oct;129(4):244-256. doi: 10.1038/s41437-022-00560-y. Epub 2022 Sep 10.
The genome-wide association study is an elementary tool to assess the genetic contribution to complex human traits. However, such association tests are mainly proposed for autosomes, and less attention has been given to methods for identifying loci on the X chromosome due to their distinct biological features. In addition, the existing association tests for quantitative traits on the X chromosome either fail to incorporate the information of males or only detect variance heterogeneity. Therefore, we propose four novel methods, which are denoted as QXcat, QZ, QMVX and QMVZ. When using these methods, it is assumed that the risk alleles for females and males are the same and that the locus being studied satisfies the generalized genetic model for females. The first two methods are based on comparing the means of the trait value across different genotypes, while the latter two methods test for the difference of both means and variances. All four methods effectively incorporate the information of X chromosome inactivation. Simulation studies demonstrate that the proposed methods control the type I error rates well. Under the simulated scenarios, the proposed methods are generally more powerful than the existing methods. We also apply our proposed methods to data from the Minnesota Center for Twin and Family Research and find 10 single nucleotide polymorphisms that are statistically significantly associated with at least two traits at the significance level of 1 × 10.
全基因组关联研究是评估复杂人类特征遗传贡献的基本工具。然而,由于 X 染色体具有独特的生物学特征,这些关联测试主要针对常染色体提出,而对识别 X 染色体上基因座的方法关注较少。此外,现有的 X 染色体上定量性状的关联测试要么未能整合男性的信息,要么只能检测到方差异质性。因此,我们提出了四种新方法,分别表示为 QXcat、QZ、QMVX 和 QMVZ。在使用这些方法时,假设女性和男性的风险等位基因相同,并且研究的基因座满足女性的广义遗传模型。前两种方法基于比较不同基因型下性状值的均值,而后两种方法则检验均值和方差的差异。这四种方法都有效地整合了 X 染色体失活的信息。模拟研究表明,所提出的方法能够很好地控制第一类错误率。在模拟场景下,所提出的方法通常比现有的方法更有效。我们还将我们提出的方法应用于明尼苏达州双胞胎和家庭研究中心的数据中,发现了 10 个单核苷酸多态性,它们在 1×10 的显著水平上与至少两个性状具有统计学显著相关性。