Franke Daniel, Ziegler Andreas
Institute of Medical Biometry and Statistics, University at Lubeck, Lubeck, Germany.
Am J Hum Genet. 2005 Aug;77(2):230-41. doi: 10.1086/432378. Epub 2005 Jun 28.
For the analysis of affected sib pairs (ASPs), a variety of test statistics is applied in genomewide scans with microsatellite markers. Even in multipoint analyses, these statistics might not fully exploit the power of a given sample, because they do not account for incomplete informativity of an ASP. For meta-analyses of linkage and association studies, it has been shown recently that weighting by informativity increases statistical power. With this idea in mind, the first aim of this article was to introduce a new class of tests for ASPs that are based on the mean test. To take into account how much informativity an ASP contributes, we weighted families inversely proportional to their marker informativity. The weighting scheme is obtained by use of the de Finetti representation of the distribution of identity-by-descent values. We derive the limiting distribution of the weighted mean test and demonstrate the validity of the proposed test. We show that it can be much more powerful than the classical mean test in the case of low marker informativity. In the second part of the article, we propose a Monte Carlo simulation approach for evaluating significance among ASPs. We demonstrate the validity of the simulation approach for both the classical and the weighted mean test. Finally, we illustrate the use of the weighted mean test by reanalyzing two published data sets. In both applications, the maximum LOD score of the weighted mean test is 0.6 higher than that of the classical mean test.
对于患病同胞对(ASP)的分析,在使用微卫星标记进行全基因组扫描时会应用多种检验统计量。即使在多点分析中,这些统计量可能也无法充分利用给定样本的效能,因为它们没有考虑到ASP的信息不完全性。对于连锁和关联研究的荟萃分析,最近有研究表明,按信息性加权可提高统计效能。基于这一想法,本文的首要目标是引入一类基于均值检验的针对ASP的新检验方法。为了考虑一个ASP贡献了多少信息性,我们根据家系的标记信息性按反比给家系加权。加权方案是通过使用同宗系数值分布的德菲内蒂表示法获得的。我们推导出加权均值检验的极限分布,并证明所提出检验的有效性。我们表明,在标记信息性较低的情况下,它可能比经典均值检验更具效能。在本文的第二部分,我们提出一种蒙特卡罗模拟方法来评估ASP之间的显著性。我们证明了该模拟方法对于经典均值检验和加权均值检验都是有效的。最后,我们通过重新分析两个已发表的数据集来说明加权均值检验的应用。在这两个应用中,加权均值检验的最大LOD得分比经典均值检验高0.6。