Spatial genetic pattern in the land mollusc Helix aspersa inferred from a 'centre-based clustering' procedure.

Annie Guiller, Alain Bellido, Alain Coutelle, Luc Madec
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引用次数: 14

Abstract

The present work provides the first broad-scale screening of allozymes in the land snail Helix aspersa. By using overall information available on the distribution of genetic variation between 102 populations previously investigated, we expect to strengthen our knowledge on the spread of the invasive aspersa subspecies in the Western Mediterranean. We propose a new approach based on a centre-based clustering procedure to cluster populations into groups following rules of geographical proximity and genetic similarity. Assuming a stepping-stone model of diffusion, we apply a partitioning algorithm which clusters only populations that are geographically contiguous. The algorithm used, which is actually part of leading methods developed for analysing large microarray datasets, is that of the k-means. Its goal is to minimize the within-group variance. The spatial constraint is provided by a list of connections between localities deduced from a Delaunay network. After testing each optimal group for the presence of spatial arrangement in the genetic data, the inferred genetic structure was compared with partitions obtained from other methods published for defining homogeneous groups (i.e. the Monmonier and SAMOVA algorithms). Competing biogeographical scenarios inferred from the k-means procedure were then compared and discussed to shed more light on colonization routes taken by the species.

从“基于中心的聚类”过程中推断的陆地软体动物螺旋的空间遗传模式。
本研究首次广泛筛选了地螺螺壳的同工酶。通过利用已有的102个种群遗传变异分布的总体信息,我们期望加强我们对西地中海侵入性海芋亚种传播的认识。本文提出了一种基于中心聚类的聚类方法,根据地理接近度和遗传相似性对种群进行聚类。假设一个扩散的垫脚石模型,我们应用一种划分算法,该算法只聚集地理上连续的种群。所使用的算法实际上是用于分析大型微阵列数据集的主要方法的一部分,即k-means算法。它的目标是最小化组内方差。空间约束由从Delaunay网络推导出的位置之间的连接列表提供。在测试每个最优群体在遗传数据中是否存在空间排列后,将推断的遗传结构与从其他定义同质群体的方法(即Monmonier和SAMOVA算法)中获得的分区进行比较。然后比较和讨论了从k-means程序推断的相互竞争的生物地理情景,以更清楚地了解物种的殖民路线。
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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