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Testing for association based on excess allele sharing in a sample of related cases and controls.

机译:根据相关病例和对照样本中过量的等位基因共享测试关联性。

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Samples consisting of a mix of unrelated cases and controls, small pedigrees, and much larger pedigrees present a unique challenge for association studies. Few methods are available for efficient analysis of such a broad spectrum of data structures. In this paper we introduce a new matching statistic that is well suited to complex data structures and compare it with frequency-based methods available in the literature. To investigate and compare the power of these methods we simulate datasets based on complex pedigrees. We examine the influence of various levels of linkage disequilibrium (LD) of the disease allele with a marker allele (or equivalently a haplotype). For low frequency marker alleles/haplotypes, frequency-based statistics are more powerful in detecting association. In contrast, for high frequency marker alleles, the matching statistic has greater power. The highest power for frequency-based statistics occurs when the disease allele frequency closely matches the frequency of the linked marker allele. In contrast maximum power of the matching statistic always occurs for intermediate marker allele frequency regardless of the disease allele frequency. Moreover, the matching and frequency-based statistics exhibit little correlation. We conclude that these two approaches can be viewed as complementary in finding possible association between a disease and a marker for many different situations.
机译:由不相关的病例和对照,小的谱系和更大的谱系组成的样本对关联研究提出了独特的挑战。很少有方法可以有效分析如此广泛的数据结构。在本文中,我们介绍了一种非常适合复杂数据结构的新匹配统计量,并将其与文献中基于频率的方法进行了比较。为了调查和比较这些方法的功能,我们基于复杂的谱系模拟了数据集。我们检查了疾病等位基因与标记等位基因(或等效单倍型)的各种水平的连锁不平衡(LD)的影响。对于低频标记等位基因/单倍型,基于频率的统计数据在检测关联方面更为强大。相反,对于高频标记等位基因,匹配统计量具有更大的功效。当疾病等位基因的频率与链接的标记等位基因的频率紧密匹配时,就会发生基于频率的统计的最高功效。相反,无论疾病等位基因频率如何,中间标记等位基因频率始终会出现匹配统计量的最大功效。此外,匹配和基于频率的统计数据之间几乎没有相关性。我们得出的结论是,这两种方法在发现疾病与许多不同情况的标记物之间可能的关联时,可以看作是互补的。

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