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QTL Mapping on a Background of Variance Heterogeneity

机译:方差异质性背景下的QTL映射

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摘要

Standard QTL mapping procedures seek to identify genetic loci affecting the phenotypic mean while assuming that all individuals have the same residual variance. But when the residual variance differs systematically between groups, perhaps due to a genetic or environmental factor, such standard procedures can falter: in testing for QTL associations, they attribute too much weight to observations that are noisy and too little to those that are precise, resulting in reduced power and and increased susceptibility to false positives. The negative effects of such “background variance heterogeneity” (BVH) on standard QTL mapping have received little attention until now, although the subject is closely related to work on the detection of variance-controlling genes. Here we use simulation to examine how BVH affects power and false positive rate for detecting QTL affecting the mean (mQTL), the variance (vQTL), or both (mvQTL). We compare linear regression for mQTL and Levene’s test for vQTL, with tests more recently developed, including tests based on the double generalized linear model (DGLM), which can model BVH explicitly. We show that, when used in conjunction with a suitable permutation procedure, the DGLM-based tests accurately control false positive rate and are more powerful than the other tests. We also find that some adverse effects of BVH can be mitigated by applying a rank inverse normal transform. We apply our novel approach, which we term “mean-variance QTL mapping”, to publicly available data on a mouse backcross and, after accommodating BVH driven by sire, detect a new mQTL for bodyweight.
机译:标准QTL映射程序试图确定影响表型平均值的遗传位点,同时假设所有个体的残差均相同。但是,如果各组之间的残留方差系统地不同(可能是由于遗传或环境因素所致),则此类标准程序可能会步履蹒跚:在测试QTL关联时,它们将过多的权重归因于嘈杂的观测结果,而将其归因于精确的观测值,导致功率降低,并增加了对误报的敏感性。到目前为止,这种“背景差异异质性”(BVH)对标准QTL作图的负面影响很少受到关注,尽管该主题与变异控制基因的检测工作密切相关。在这里,我们使用仿真来检查BVH如何影响功率和误报率,以检测影响均值(mQTL),方差(vQTL)或两者(mvQTL)的QTL。我们将mQTL的线性回归与veven的Levene测试与最近开发的测试进行了比较,包括基于双重广义线性模型(DGLM)的测试,该模型可以为BVH明确建模。我们显示,当与适当的置换程序结合使用时,基于DGLM的测试可以准确控制误报率,并且比其他测试功能更强大。我们还发现,通过应用秩逆正态变换可以减轻BVH的某些不利影响。我们将新颖的方法(称为“均值QTL映射”)应用于鼠标回交的公开数据,并在适应由父亲驱动的BVH之后,检测体重的新mQTL。

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