Ding Jie, Lin Shili, Liu Yang
Department of Statistics, The Ohio State University, Columbus, OH 43210-1247, USA.
Am J Hum Genet. 2006 Sep;79(3):567-73. doi: 10.1086/507609. Epub 2006 Aug 1.
Because of the need for fine mapping of disease loci and the availability of dense single-nucleotide-polymorphism markers, many forms of association tests have been developed. Most of them are applicable only to triads, whereas some are amenable to nuclear families (sibships). Although there are a number of methods that can deal with extended families (e.g., the pedigree disequilibrium test [PDT]), most of them cannot accommodate incomplete data. Furthermore, despite a large body of literature on association mapping, only a very limited number of publications are applicable to X-chromosomal markers. In this report, we first extend the PDT to markers on the X chromosome for testing linkage disequilibrium in the presence of linkage. This method is applicable to any pedigree structure and is termed "X-chromosomal pedigree disequilibrium test" (XPDT). We then further extend the XPDT to accommodate pedigrees with missing genotypes in some of the individuals, especially founders. Monte Carlo (MC) samples of the missing genotypes are generated and used to calculate the XMCPDT (X-chromosomal MC PDT) statistic, which is defined as the conditional expectation of the XPDT statistic given the incomplete (observed) data. This MC version of the XPDT remains a valid test for association under linkage with the assumption that the pedigrees and their associated affection patterns are drawn randomly from a population of pedigrees with at least one affected offspring. This set of methods was compared with existing approaches through simulation, and substantial power gains were observed in all settings considered, with type I error rates closely tracking their nominal values.
由于对疾病基因座进行精细定位的需求以及密集单核苷酸多态性标记的可用性,已经开发了多种形式的关联测试。其中大多数仅适用于三联体,而有些适用于核心家庭(同胞组)。尽管有许多方法可以处理扩展家庭(例如,系谱不平衡检验[PDT]),但其中大多数无法处理不完整数据。此外,尽管有大量关于关联定位的文献,但仅有非常有限的出版物适用于X染色体标记。在本报告中,我们首先将PDT扩展到X染色体上的标记,以在存在连锁的情况下测试连锁不平衡。该方法适用于任何系谱结构,称为“X染色体系谱不平衡检验”(XPDT)。然后,我们进一步扩展XPDT,以适应某些个体(尤其是奠基者)存在缺失基因型的系谱。生成缺失基因型的蒙特卡罗(MC)样本,并用于计算XMCPDT(X染色体MC PDT)统计量,该统计量定义为在不完整(观察到的)数据条件下XPDT统计量的条件期望。在假设系谱及其相关的患病模式是从至少有一个患病后代的系谱群体中随机抽取的情况下,XPDT的这种MC版本仍然是连锁情况下关联的有效检验。通过模拟将这组方法与现有方法进行了比较,在所有考虑的情况下都观察到了显著的功效提升,I型错误率紧密跟踪其标称值。