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Efficient and scalable parallel reconstruction of sibling relationships from genetic data in wild populations

机译:从野生种群的遗传数据中高效而可扩展地并行重建同胞关系

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Wild populations of organism are often difficult to study in their natural settings. Often, it is possible to infer mating information about these species by genotyping the offspring and using the genetic information to infer sibling, and other kinship, relationships. While sibling reconstruction has been studied for a long time, none of the existing approaches have targeted scalability. In this paper, we introduce the first parallel approach to reconstructing sibling relationships from microsatellite markers. We use both functional and data domain decomposition to break down the problem and argue that this approach can be applied to other problems where columns are independent and simple constraint-based enumeration is required. We discuss algorithmic and implementation choices and their effects on results. We show that our approach is highly efficient and scalable.
机译:野生生物种群通常很难在其自然环境中进行研究。通常,可以通过对后代进行基因分型并利用遗传信息来推断同胞关系和其他亲属关系来推断有关这些物种的交配信息。尽管对同级重建进行了很长时间的研究,但是现有方法都没有针对可伸缩性。在本文中,我们介绍了第一种并行方法,可从微卫星标记重建兄弟关系。我们同时使用功能域分解和数据域分解来分解问题,并认为该方法可以应用于其他问题,在这些问题中列是独立的,并且需要基于约束的简单枚举。我们讨论了算法和实现的选择及其对结果的影响。我们证明了我们的方法是高效且可扩展的。

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