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Statistical Techniques for Defining Reference Sets of Accessions and Microsatellite Markers

机译:定义种质和微卫星标记参考集的统计技术

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Exploitation of the available genetic resources around the world requires information about the relationships and genetic diversity present among genebank collections. These relations can be established by defining for each crop a small but informative set of accessions, together with a small set of reliable molecular markers, that can be used as reference material. In this study, various strategies to arrive at small but informative reference sets are discussed. For selection of accessions, we proposed genetic distance optimization (GDOpt) method, which selects a subset of accessions that optimally represent the accessions not included in the core collection. The performance of GDOpt was compared with Core Hunter, an advanced stochastic local search algorithm for selecting core subsets. For the selection of molecular markers, we evaluated (i) the backward elimination (BE) method and (ii) methods based on principal component analysis (PCA). We examined the performance of the proposed methodologies using five real datasets. Relative to average distance between an accession and the nearest selected accession (representativeness), GDOpt outperformed Core Hunter. However, Core Hunter outperformed GDOpt with respect to allelic richness. The BE performed much better than other methods in selecting subsets of markers. Methods based on PCA showed that, for practical purposes, the inclusion of the first few (two or three) principal components (PCs) was often sufficient. To obtain robust and high-quality reference sets of accessions and markers we advise a combination of GDOpt (for accessions) and BE or methods based on PCA using a few PCs (for subsets of markers).
机译:开发世界各地现有的遗传资源需要有关种质库集合之间存在的关系和遗传多样性的信息。通过为每种作物定义少量但有用的种质以及少量可靠的分子标记物(可以用作参考材料)来建立这些关系。在这项研究中,讨论了各种策略,以得出较小但内容丰富的参考集。对于种质的选择,我们提出了遗传距离优化(GDOpt)方法,该方法选择了一个种质的子集,该子集可以最佳地表示核心集合中未包含的种质。将GDOpt的性能与Core Hunter(一种用于选择核心子集的高级随机局部搜索算法)进行了比较。为了选择分子标记,我们评估了(i)后向消除(BE)方法和(ii)基于主成分分析(PCA)的方法。我们使用五个真实数据集检查了所提出方法的性能。相对于某个品系和最接近的所选品系(代表性)之间的平均距离,GDOpt的表现优于Core Hunter。但是,就等位基因丰富度而言,Core Hunter优于GDOpt。在选择标记子集方面,BE的性能比其他方法好得多。基于PCA的方法表明,出于实际目的,通常仅包含前几个(两个或三个)主成分(PC)就足够了。为了获得健壮和高质量的登录和标记参考集,我们建议结合使用GDOpt(用于登录)和BE或基于PCA的方法,并使用少量PC(用于标记的子集)。

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