Principal component (PC) maps, which plot the values of a given PC estimated on the basis of allele frequency variation at the geographic sampling locations of a set of populations, are often used to investigate the properties of past range expansions. Some studies have argued that in a range expansion, the axis of greatest variation (i.e., the first PC) is parallel to the axis of expansion. In contrast, others have identified a pattern in which the axis of greatest variation is perpendicular to the axis of expansion. Here, we seek to understand this difference in outcomes by investigating the effect of the geographic sampling scheme on the direction of the axis of greatest variation under a two-dimensional range expansion model. From datas...
Genetic variation in a population can be summarized through principal component analysis (PCA) on ge...
Principal components analysis, PCA, is a statistical method commonly used in population genetics to ...
Understanding the effects of landscape heterogeneity on spatial genetic variation is a primary goal ...
Principal component (PC) maps, which plot the values of a given PC estimated on the basis of allele ...
International audienceIn a series of highly influential publications, Cavalli-Sforza and colleagues ...
Geographic patterns of genetic variation within modern populations, produced by complex histories of...
The recent expansion of genetic datasets in diverse populations has allowed researchers to investiga...
<div><p>Multivariate statistical techniques such as principal components analysis (PCA) and multidim...
Although genome scans have become a popular approach towards understanding the genetic basis of loca...
Abstract There has been a recent trend in genetic studies of wild populations where researchers have...
Identifying adaptive loci is important to understand the evolutionary potential of species undergoin...
<p>(A) Graphics represent the genetic relationships between the MLGs from each country population ba...
Principal components analysis, PCA, is a statistical method commonly used in population genetics to ...
(A) Genetic clustering by general sampling locality (left, pie charts) and individual (bar graph to ...
A challenging issue in current molecular ecology is to take landscape information into account as we...
Genetic variation in a population can be summarized through principal component analysis (PCA) on ge...
Principal components analysis, PCA, is a statistical method commonly used in population genetics to ...
Understanding the effects of landscape heterogeneity on spatial genetic variation is a primary goal ...
Principal component (PC) maps, which plot the values of a given PC estimated on the basis of allele ...
International audienceIn a series of highly influential publications, Cavalli-Sforza and colleagues ...
Geographic patterns of genetic variation within modern populations, produced by complex histories of...
The recent expansion of genetic datasets in diverse populations has allowed researchers to investiga...
<div><p>Multivariate statistical techniques such as principal components analysis (PCA) and multidim...
Although genome scans have become a popular approach towards understanding the genetic basis of loca...
Abstract There has been a recent trend in genetic studies of wild populations where researchers have...
Identifying adaptive loci is important to understand the evolutionary potential of species undergoin...
<p>(A) Graphics represent the genetic relationships between the MLGs from each country population ba...
Principal components analysis, PCA, is a statistical method commonly used in population genetics to ...
(A) Genetic clustering by general sampling locality (left, pie charts) and individual (bar graph to ...
A challenging issue in current molecular ecology is to take landscape information into account as we...
Genetic variation in a population can be summarized through principal component analysis (PCA) on ge...
Principal components analysis, PCA, is a statistical method commonly used in population genetics to ...
Understanding the effects of landscape heterogeneity on spatial genetic variation is a primary goal ...