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The power to detect linkage in complex disease by means of simple LOD-score analyses.

机译:通过简单的LOD得分分析来检测复杂疾病中连锁的能力。

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摘要

Maximum-likelihood analysis (via LOD score) provides the most powerful method for finding linkage when the mode of inheritance (MOI) is known. However, because one must assume an MOI, the application of LOD-score analysis to complex disease has been questioned. Although it is known that one can legitimately maximize the maximum LOD score with respect to genetic parameters, this approach raises three concerns: (1) multiple testing, (2) effect on power to detect linkage, and (3) adequacy of the approximate MOI for the true MOI. We evaluated the power of LOD scores to detect linkage when the true MOI was complex but a LOD score analysis assumed simple models. We simulated data from 14 different genetic models, including dominant and recessive at high (80%) and low (20%) penetrances, intermediate models, and several additive two-locus models. We calculated LOD scores by assuming two simple models, dominant and recessive, each with 50% penetrance, then took the higher of the two LOD scores as the raw test statistic and corrected for multiple tests. We call this test statistic "MMLS-C." We found that the ELODs for MMLS-C are >=80% of the ELOD under the true model when the ELOD for the true model is >=3. Similarly, the power to reach a given LOD score was usually >=80% that of the true model, when the power under the true model was >=60%. These results underscore that a critical factor in LOD-score analysis is the MOI at the linked locus, not that of the disease or trait per se. Thus, a limited set of simple genetic models in LOD-score analysis can work well in testing for linkage.
机译:当遗传模式(MOI)已知时,最大似然分析(通过LOD分数)提供了找到链接的最强大方法。但是,由于必须假定MOI,因此对将LOD评分分析应用于复杂疾病提出了质疑。尽管已知可以合理地最大化遗传参数方面的最大LOD分数,但这种方法引起了三个方面的关注:(1)多重测试;(2)对检测连锁的能力的影响;(3)近似MOI的充分性真正的MOI。当真正的MOI复杂但LOD分数分析假设模型简单时,我们评估了LOD分数检测链接的能力。我们模拟了来自14种不同遗传模型的数据,包括显性和隐性显性(80%)和显性(20%),中间模型和几个加性两基因座模型。我们通过假设两个简单的模型(显性模型和隐性模型,分别具有50%的渗透率)来计算LOD分数,然后将两个LOD分数中的较高者作为原始测试统计量,并针对多个测试进行了校正。我们称此测试统计为“ MMLS-C”。我们发现,当真实模型的ELOD> = 3时,MMLS-C的ELOD大于真实模型下ELOD的80%。同样,当真实模型下的功效> = 60%时,达到给定LOD分数的功效通常> = 80%。这些结果表明,LOD得分分析的关键因素是链接基因座的MOI,而不是疾病或性状本身。因此,在LOD得分分析中,一组有限的简单遗传模型可以很好地测试链接。

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