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首页> 外文期刊>Journal of computational biology: A journal of computational molecular cell biology >Haplotype Reconstruction in Large Pedigrees with Untyped Individuals through IBD Inference
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Haplotype Reconstruction in Large Pedigrees with Untyped Individuals through IBD Inference

机译:通过IBD推断在大谱系中与未分类个体进行单倍型重建

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摘要

Haplotypes, as they specify the linkage patterns between dispersed genetic variations, provide important information for understanding the genetics of human traits. However, haplotypes are not directly obtainable from current genotyping platforms, which pushes extensive investigations of computational methods to recover such information. Two major computational challenges arising in current family-based disease studies are large family sizes and many ungenotyped family members. Traditional haplotyping methods can neither handle large families nor families with missing members. In this article, we propose a method that addresses these issues by integrating multiple novel techniques. The method consists of three major components: pairwise identical-by-descent (IBD) inference, global IBD reconstruction, and haplotype restoring. By reconstructing the global IBD of a family from pairwise IBD and then restoring the haplotypes based on the inferred IBD, this method can scale to large pedigrees, and more importantly it can handle families with missing members. Compared with existing approaches, this method demonstrates much higher power to recover haplotype information, especially in families with many untyped individuals. Availability: http://sites.google.com/site/xinlishomepage/pedibd.
机译:单倍型,因为它们指定了分散的遗传变异之间的联系方式,为理解人类特征的遗传学提供了重要的信息。然而,单倍型不能直接从当前的基因分型平台获得,这推动了对回收这些信息的计算方法的广泛研究。当前基于家庭的疾病研究中出现的两个主要计算挑战是大家庭规模和许多未定型的家庭成员。传统的单体型方法既不能处理大家庭,也不能处理缺少成员的家庭。在本文中,我们提出了一种通过集成多种新颖技术来解决这些问题的方法。该方法包括三个主要组成部分:成对逐次下降(IBD)推断,全局IBD重建和单倍型恢复。通过从成对的IBD重建一个家庭的全局IBD,然后根据推断的IBD恢复单倍型,该方法可以扩展到较大的谱系,更重要的是,它可以处理成员缺失的家庭。与现有方法相比,此方法显示出更高的恢复单倍型信息的能力,尤其是在有许多未打字个体的家庭中。可用性:http://sites.google.com/site/xinlishomepage/pedibd。

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