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Linkage analysis using co-phenotypes in the BRIGHT study reveals novel potential susceptibility loci for hypertension

机译:在BRIGHT研究中使用共表型进行的连锁分析揭示了高血压的新型潜在易感基因座

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Identification of the genetic influences on human essential hypertension and other complex diseases has proved difficult, partly because of genetic heterogeneity. In many complex-trait resources, additional phenotypic data have been collected, allowing comorbid intermediary phenotypes to be used to characterize more genetically homogeneous subsets. The traditional approach to analyzing covariate-defined subsets has typically depended on researchers' previous expectations for definition of a comorbid subset and leads to smaller data sets, with a concomitant attrition in power. An alternative is to test for dependence between genetic sharing and covariates across the entire data set. This approach offers the advantage of exploiting the full data set and could be widely applied to complex-trait genome scans. However, existing maximum-likelihood methods can be prohibitively computationally expensive, especially since permutation is often required to determine significance. We developed a less computationally intensive score test and applied it to biometric and biochemical covariate data, from 2,044 sibling pairs with severe hypertension, collected by the British Genetics of Hypertension (BRIGHT) study. We found genomewide-significant evidence for linkage with hypertension and several related covariates. The strongest signals were with leaner-body-mass measures on chromosome 20q (maximum) and with parameters of renal function on chromosome 5p (maximum). After correction for LOD = 4.24 LOD = 3.71 the multiple traits and genetic locations studied, our global genomewide P value was .046. This is the first identity-by-descent regression analysis of hypertension to our knowledge, and it demonstrates the value of this approach for the incorporation of additional phenotypic information in genetic studies of complex traits.
机译:事实证明很难确定对人类原发性高血压和其他复杂疾病的遗传影响,部分原因是遗传异质性。在许多复杂性状资源中,已经收集了更多的表型数据,从而允许使用共病的中间表型来表征更多的遗传同质子集。分析协变量定义的子集的传统方法通常取决于研究人员先前对共病子集定义的期望,并导致数据集更小,同时功耗也随之降低。另一种方法是测试整个数据集中遗传共享和协变量之间的依赖性。这种方法具有利用完整数据集的优势,可广泛应用于复杂性状基因组扫描。但是,现有的最大似然方法的计算量可能过高,特别是因为通常需要通过排列来确定重要性。我们开发了一种计算强度较低的分数测试,并将其应用于英国高血压遗传学(BRIGHT)研究收集的来自2044例重度高血压兄弟姐妹对的生物统计和生化协变量数据。我们发现全基因组显着证据表明与高血压和一些相关的协变量有关。最强的信号是在20q染色体上最大程度采用瘦体质量测量(最大),在5p染色体上最大程度带有肾脏功能参数。在校正LOD = 4.24 LOD = 3.71的多重性状和遗传位置后,我们的全球全基因组P值为.046。这是我们所了解的高血压的第一个按血统通过血统回归分​​析,它证明了这种方法对于将其他表型信息纳入复杂性状遗传研究的价值。

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