AdmixKJump:确定最近分化的群体的人口结构。

Q2 Decision Sciences Source Code for Biology and Medicine Pub Date : 2015-02-03 eCollection Date: 2015-01-01 DOI:10.1186/s13029-014-0031-1
Timothy D O'Connor
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引用次数: 0

摘要

动机:正确建模种群结构对于理解最近的进化和人类的关联研究是重要的。虽然预先存在的人口历史知识可用于指定预期的细分水平,但检测人口结构的客观指标很重要,在某些情况下甚至可能更适合于确定群体。在admix程序的交叉验证过程中实现了基因组规模数据的一个这样的度量,但它尚未在最近分化和潜在的种群结构水平上进行评估。在这里,我开发了一个新方法AdmixKJump,并在此场景下测试这两个指标。研究结果:我表明,与使用现实模拟和欧洲1000基因组计划基因组数据的交叉验证度量相比,AdmixKJump对最近的种群划分更敏感。AdmixKJump有两个种群,每个种群50个个体,能够以100%的准确率检测两个种群,分裂至少10KYA,而交叉验证在14KYA时获得100%的水平。我还展示了AdmixKJump在每个群体的样本更少的情况下更准确。此外,与交叉验证方法相比,AdmixKJump能够检测1000基因组计划中芬兰和托斯卡纳种群之间的种群分裂。结论:AdmixKJump在样本量较小、发散时间较短的样本队列中具有更强的检测种群数量的能力。可用性:可以在https://sites.google.com/site/igsevolgenomicslab/home/downloads上找到java实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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AdmixKJump: identifying population structure in recently diverged groups.

Motivation: Correctly modeling population structure is important for understanding recent evolution and for association studies in humans. While pre-existing knowledge of population history can be used to specify expected levels of subdivision, objective metrics to detect population structure are important and may even be preferable for identifying groups in some situations. One such metric for genomic scale data is implemented in the cross-validation procedure of the program ADMIXTURE, but it has not been evaluated on recently diverged and potentially cryptic levels of population structure. Here, I develop a new method, AdmixKJump, and test both metrics under this scenario.

Findings: I show that AdmixKJump is more sensitive to recent population divisions compared to the cross-validation metric using both realistic simulations, as well as 1000 Genomes Project European genomic data. With two populations of 50 individuals each, AdmixKJump is able to detect two populations with 100% accuracy that split at least 10KYA, whereas cross-validation obtains this 100% level at 14KYA. I also show that AdmixKJump is more accurate with fewer samples per population. Furthermore, in contrast to the cross-validation approach, AdmixKJump is able to detect the population split between the Finnish and Tuscan populations of the 1000 Genomes Project.

Conclusion: AdmixKJump has more power to detect the number of populations in a cohort of samples with smaller sample sizes and shorter divergence times.

Availability: A java implementation can be found at https://sites.google.com/site/igsevolgenomicslab/home/downloads.

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Source Code for Biology and Medicine
Source Code for Biology and Medicine Decision Sciences-Information Systems and Management
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期刊介绍: Source Code for Biology and Medicine is a peer-reviewed open access, online journal that publishes articles on source code employed over a wide range of applications in biology and medicine. The journal"s aim is to publish source code for distribution and use in the public domain in order to advance biological and medical research. Through this dissemination, it may be possible to shorten the time required for solving certain computational problems for which there is limited source code availability or resources.
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