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Genetic Association Studies of Copy-Number Variation: Should Assignment of Copy Number States Precede Testing?

机译:拷贝数变异的遗传关联研究:拷贝数状态的分配是否应先进行测试?

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摘要

Recently, structural variation in the genome has been implicated in many complex diseases. Using genomewide single nucleotide polymorphism (SNP) arrays, researchers are able to investigate the impact not only of SNP variation, but also of copy-number variants (CNVs) on the phenotype. The most common analytic approach involves estimating, at the level of the individual genome, the underlying number of copies present at each location. Once this is completed, tests are performed to determine the association between copy number state and phenotype. An alternative approach is to carry out association testing first, between phenotype and raw intensities from the SNP array at the level of the individual marker, and then aggregate neighboring test results to identify CNVs associated with the phenotype. Here, we explore the strengths and weaknesses of these two approaches using both simulations and real data from a pharmacogenomic study of the chemotherapeutic agent gemcitabine. Our results indicate that pooled marker-level testing is capable of offering a dramatic increase in power (-fold) over CNV-level testing, particularly for small CNVs. However, CNV-level testing is superior when CNVs are large and rare; understanding these tradeoffs is an important consideration in conducting association studies of structural variation.
机译:近来,基因组的结构变异已经牵涉到许多复杂的疾病中。使用全基因组单核苷酸多态性(SNP)阵列,研究人员不仅可以研究SNP变异,还可以研究拷贝数变异(CNV)对表型的影响。最常见的分析方法涉及在单个基因组的水平上估计每个位置存在的潜在拷贝数。完成此操作后,将执行测试以确定拷贝数状态与表型之间的关联。另一种方法是先在单个标记水平上在SNP阵列的表型和原始强度之间进行关联测试,然后汇总相邻的测试结果以识别与表型相关的CNV。在这里,我们使用模拟和化疗药物吉西他滨的药物基因组学研究的实际数据,探索这两种方法的优缺点。我们的结果表明,合并标记级别的测试能够提供比CNV级别测试大得多的功率(倍数),特别是对于小型CNV。但是,当CNV很大且很少见时,CNV级别的测试会更好。理解这些折衷是进行结构变异的关联研究的重要考虑因素。

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