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A Multipoint Method for Detecting Genotyping Errors and Mutations in Sibling-Pair Linkage Data

机译:检测同级对关联数据中基因分型错误和突变的多点方法

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摘要

The identification of genes contributing to complex diseases and quantitative traits requires genetic data of high fidelity, because undetected errors and mutations can profoundly affect linkage information. The recent emphasis on the use of the sibling-pair design eliminates or decreases the likelihood of detection of genotyping errors and marker mutations through apparent Mendelian incompatibilities or close double recombinants. In this article, we describe a hidden Markov method for detecting genotyping errors and mutations in multilocus linkage data. Specifically, we calculate the posterior probability of genotyping error or mutation for each sibling-pair-marker combination, conditional on all marker data and an assumed genotype-error rate. The method is designed for use with sibling-pair data when parental genotypes are unavailable. Through Monte Carlo simulation, we explore the effects of map density, marker-allele frequencies, marker position, and genotype-error rate on the accuracy of our error-detection method. In addition, we examine the impact of genotyping errors and error detection and correction on multipoint linkage information. We illustrate that even moderate error rates can result in substantial loss of linkage information, given efforts to fine-map a putative disease locus. Although simulations suggest that our method detects ⩽50% of genotyping errors, it generally flags those errors that have the largest impact on linkage results. For high-resolution genetic maps, removal of the errors identified by our method restores most or nearly all the lost linkage information and can be accomplished without generating false evidence for linkage by removing incorrectly identified errors.
机译:鉴定导致复杂疾病和数量性状的基因需要高保真度的遗传数据,因为未发现的错误和突变会深刻影响连锁信息。最近对兄弟姐妹对设计的使用强调消除或减少了通过明显的孟德尔不相容性或紧密的双重重组体检测基因型错误和标记突变的可能性。在本文中,我们描述了一种用于检测多基因座连锁数据中基因分型错误和突变的隐马尔可夫方法。具体来说,我们以所有标记数据和假定的基因型错误率为条件,计算每个同胞对标记组合的基因分型错误或突变的后验概率。当父母基因型不可用时,该方法设计用于同级对数据。通过蒙特卡洛模拟,我们探索了图密度,标记等位基因频率,标记位置和基因型错误率对我们的错误检测方法准确性的影响。此外,我们研究了基因分型错误以及错误检测和纠正对多点链接信息的影响。我们说明,如果努力细化推定的疾病位点,那么即使是中等的错误率也可能导致连锁信息的大量丢失。尽管模拟表明我们的方法可检测到50%的基因分型错误,但通常会标记出对连锁结果影响最大的那些错误。对于高分辨率遗传图谱,通过我们的方法识别的错误的消除将恢复大多数或几乎所有丢失的连锁信息,并且可以通过消除错误识别的错误而无需生成错误的连锁证据即可完成。

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