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MOBIT的特性与评估——一种用于印记分析的基于连锁的新型检验统计量和定量方法

Properties and Evaluation of the MOBIT - a novel Linkage-based Test Statistic and Quantification Method for Imprinting.

作者信息

Brugger Markus, Knapp Michael, Strauch Konstantin

机构信息

Chair of Genetic Epidemiology, IBE, Faculty of Medicine, LMU Munich, Munich, Germany.

Institute of Genetic Epidemiology, Helmholtz Zentrum München - German Research Center for Environmental Health, Ingolstädter Landstraße 1, DE-85764 Neuherberg, Germany.

出版信息

Stat Appl Genet Mol Biol. 2019 Jul 10;18(4):sagmb-2018-0025. doi: 10.1515/sagmb-2018-0025.

Abstract

Genomic imprinting is a parent-of-origin effect apparent in an appreciable number of human diseases. We have proposed the new imprinting test statistic MOBIT, which is based on MOD score analysis. We were interested in the properties of the MOBIT concerning its distribution under three hypotheses: (1) H0,a: no linkage, no imprinting; (2) H0,b: linkage, no imprinting; (3) H1: linkage and imprinting. More specifically, we assessed the confounding between imprinting and sex-specific recombination frequencies, which presents a major difficulty in linkage-based testing for imprinting, and evaluated the power of the test. To this end, we have performed a linkage simulation study of affected sib-pairs and a three-generation pedigree with two trait models, many two- and multipoint marker scenarios, three genetic map ratios, two sample sizes, and five imprinting degrees. We also investigated the ability of the MOBIT to quantify the degree of imprinting and applied the MOBIT using a real data example on house dust mite allergy. We further proposed and evaluated two approaches to obtain empiric p values for the MOBIT. Our results showed that twopoint analyses assuming a sex-averaged marker map led to an inflated type I error due to confounding, especially for a larger marker-trait locus distance. When the correct sex-specific marker map was assumed, twopoint analyses have a reduced power to detect imprinting, compared to sex-averaged analyses with an appropriate correction for the inflation of the test statistic. However, confounding was not an issue in multipoint analysis unless the map ratio was extreme and marker spacing was sparse. With multipoint analysis, power as well as the ability to quantify the imprinting degree were almost equally high when a sex-averaged or the correct sex-specific map was used in the analysis. We recommend to obtain empiric p values for the MOBIT using genotype simulations based on the best-fitting nonimprinting model of the real dataset analysis. In addition, an implementation of a method based on the permutation of parental sexes is also available. In summary, we propose to perform multipoint analyses using densely spaced markers to efficiently discover new imprinted loci and to reliably quantify the degree of imprinting.

摘要

基因组印记是一种源自亲代的效应,在相当数量的人类疾病中都很明显。我们提出了基于MOD分数分析的新印记检验统计量MOBIT。我们感兴趣的是MOBIT在以下三个假设下的分布特性:(1)H0,a:无连锁,无印记;(2)H0,b:连锁,无印记;(3)H1:连锁且有印记。更具体地说,我们评估了印记与性别特异性重组频率之间的混杂情况,这在基于连锁的印记检测中是一个主要困难,并评估了检验的效能。为此,我们对受累同胞对和三代家系进行了连锁模拟研究,采用了两种性状模型、多种两点和多点标记情景、三种遗传图谱比率、两种样本量以及五种印记程度。我们还研究了MOBIT量化印记程度的能力,并使用关于屋尘螨过敏的真实数据示例应用了MOBIT。我们进一步提出并评估了两种获得MOBIT经验性p值的方法。我们的结果表明,假设性别平均标记图谱的两点分析由于混杂导致I型错误膨胀,特别是对于较大的标记 - 性状基因座距离。当假设正确的性别特异性标记图谱时,与对检验统计量膨胀进行适当校正的性别平均分析相比,两点分析检测印记的效能降低。然而,除非图谱比率极端且标记间距稀疏,否则在多点分析中混杂不是问题。在多点分析中,当使用性别平均或正确的性别特异性图谱进行分析时,效能以及量化印记程度的能力几乎同样高。我们建议基于真实数据集分析的最佳拟合非印记模型,通过基因型模拟来获得MOBIT的经验性p值。此外,也可以采用基于亲代性别置换的方法。总之,我们建议使用紧密间隔的标记进行多点分析,以有效地发现新的印记基因座并可靠地量化印记程度。

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