Fearnhead Paul, Harding Rosalind M, Schneider Julie A, Myers Simon, Donnelly Peter
Department of Mathematics and Statistics, Lancaster University, Lancaster LA1 4YF, United Kingdom.
Genetics. 2004 Aug;167(4):2067-81. doi: 10.1534/genetics.103.021584.
There has been considerable recent interest in understanding the way in which recombination rates vary over small physical distances, and the extent of recombination hotspots, in various genomes. Here we adapt, apply, and assess the power of recently developed coalescent-based approaches to estimating recombination rates from sequence polymorphism data. We apply full-likelihood estimation to study rate variation in and around a well-characterized recombination hotspot in humans, in the beta-globin gene cluster, and show that it provides similar estimates, consistent with those from sperm studies, from two populations deliberately chosen to have different demographic and selectional histories. We also demonstrate how approximate-likelihood methods can be used to detect local recombination hotspots from genomic-scale SNP data. In a simulation study based on 80 100-kb regions, these methods detect 43 out of 60 hotspots (ranging from 1 to 2 kb in size), with only two false positives out of 2000 subregions that were tested for the presence of a hotspot. Our study suggests that new computational tools for sophisticated analysis of population diversity data are valuable for hotspot detection and fine-scale mapping of local recombination rates.
最近,人们对了解不同基因组中重组率在小物理距离上的变化方式以及重组热点的范围产生了浓厚兴趣。在此,我们采用、应用并评估了最近开发的基于溯祖理论的方法从序列多态性数据估计重组率的能力。我们应用全似然估计来研究人类β-珠蛋白基因簇中一个特征明确的重组热点及其周围的速率变化,并表明它提供了与精子研究结果相似的估计值,这些估计值来自特意选择的具有不同人口统计学和选择历史的两个人群。我们还展示了如何使用近似似然方法从基因组规模的单核苷酸多态性(SNP)数据中检测局部重组热点。在一项基于80个100 kb区域的模拟研究中,这些方法在60个热点(大小从1到2 kb不等)中检测到了43个,在2000个测试是否存在热点的子区域中仅有两个假阳性。我们的研究表明,用于复杂分析群体多样性数据的新计算工具对于热点检测和局部重组率的精细定位很有价值。