首页> 外文期刊>Heredity: An International Journal of Genetics >CLIP Test: a new fast, simple and powerful method to distinguish between linked or pleiotropic quantitative trait loci in linkage disequilibria analysis
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CLIP Test: a new fast, simple and powerful method to distinguish between linked or pleiotropic quantitative trait loci in linkage disequilibria analysis

机译:夹子试验:一种新的快速,简单而强大的方法,可区分联动不平衡分析中的联系或磷酸性定量特征基因座

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摘要

An important question arises when mapping quantitative trait loci (QTLs) for genetically correlated traits: is the correlation due to pleiotropy (a single QTL affecting more than one trait) and/or close linkage (different QTLs that are physically close to each other and influence the traits)? In this article, we propose the Close Linkage versus Pleiotropism (CLIP) test, a fast, simple and powerful method to distinguish between these two situations. The CLIP test is based on the comparison of the square of the observed correlation between a combination of apparent effects at the marker level to the minimal value it can take under the pleiotropic assumption. A simulation study was performed to estimate the power and alpha risk of the CLIP test and compare it to a test that evaluated whether the confidence intervals of the two QTLs overlapped or not (CI test). On average, the CLIP test showed a higher power (68%) to detect close-linked QTLs than the CI test (43%) and a same alpha risk (4%). Heredity (2013) 110, 232-238; doi:10.1038/hdy.2012.70; published online 19 December 2012
机译:在映射到基因相关性状的定量特征基因座(QTLS)时出现了一个重要问题:是由于肺炎(影响多于一个特征的单个QTL)和/或密切联系(彼此的不同QTL和影响的不同QTL)的相关性特征)?在本文中,我们提出了密切的联动与肺炎(剪辑)测试,一种快速,简单而强大的方法来区分这两个情况。夹子测试基于在标记水平的表观效果的组合与最小值下的观察结果之间观察到的相关性的比较,其在渗透假设下它可以采用。进行仿真研究以估计夹子测试的功率和α风险,并将其与测试进行比较,该测试评估两个QTL的置信区间隔是否重叠(CI测试)。平均而言,夹子测试显示较高的功率(68%),以检测比CI试验(43%)和相同的α风险(4%)检测近距离连接的QTL。遗传(2013)110,232-238; DOI:10.1038 / hdy.2012.70;在线发布2012年12月19日

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