首页> 美国卫生研究院文献>American Journal of Human Genetics >A linkage strategy for detection of human quantitative-trait loci. II. Optimization of study designs based on extreme sib pairs and generalized relative risk ratios.
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A linkage strategy for detection of human quantitative-trait loci. II. Optimization of study designs based on extreme sib pairs and generalized relative risk ratios.

机译:一种检测人类定量特征基因座的连锁策略。二。基于极端同胞对和广义相对风险比的研究设计优化。

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摘要

We are concerned here with practical issues in the application of extreme sib-pair (ESP) methods to quantitative traits. Two important factors-namely, the way extreme trait values are defined and the proportions in which different types of ESPs are pooled, in the analysis-are shown to determine the power and the cost effectiveness of a study design. We found that, in general, combining reasonable numbers of both extremely discordant and extremely concordant sib pairs that were available in the sample is more powerful and more cost effective than pursuing only a single type of ESP. We also found that dividing trait values with a less extreme threshold at one end or at both ends of the trait distribution leads to more cost-effective designs. The notion of generalized relative risk ratios (the lambda methods, as described in the first part of this series of two articles) is used to calculate the power and sample size for various choices of polychotomization of trait values and for the combination of different types of ESPs. A balance then can be struck among these choices, to attain an optimum design.
机译:在这里,我们关注将极端同胞对(ESP)方法应用于数量性状的实际问题。显示了两个重要因素,即定义极端特征值的方式以及在分析中汇总不同类型的ESP的比例,从而确定研究设计的功能和成本效益。我们发现,总的来说,将样本中可用的合理数量的极端不一致和极端一致的同胞对组合在一起,比仅追求单一类型的ESP更强大,更具成本效益。我们还发现,在特征分布的一端或两端用较低的极限阈值划分特征值会导致更具成本效益的设计。广义相对风险比的概念(lambda方法,如本系列两篇文章的第一部分所述)用于计算特征值的多选择的多种选择以及不同类型的特征组合的功效和样本量。 ESP。然后可以在这些选择之间取得平衡,以获得最佳设计。

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