Principal-component analysis (PCA) has been used for decades to summarize the human genetic variation across geographic regions and to infer population migration history. Reduction of spurious associations due to population structure is crucial for the success of disease association studies. Recently, PCA has also become a popular method for detecting population structure and correction of population stratification in disease association studies. Inspired by manifold learning, we propose a novel method based on spectral graph theory. Regarding each study subject as a node with suitably defined weights for its edges to close neighbors, one can form a weighted graph. We suggest using the spectrum of the associated graph Laplacian operator, na...
<div><p>The advent of genome-wide dense variation data provides an opportunity to investigate ancest...
Large-scale repositories of genomic data are providing opportunities for researchers to answer biolo...
BACKGROUND: The dramatic progress in sequencing technologies offers unprecedented prospects for deci...
Principal components analysis has been used for decades to summarize genetic variation across geogra...
Identification of a small panel of population structure informative markers can reduce genotyping co...
Population structure occurs when a sample is composed of individuals with different ancestries and c...
Existing methods to ascertain small sets of markers for the identification of human population struc...
Association studies using unrelated individuals have become the most popular design for mapping comp...
Current methods for inferring population structure from genetic data do not provide formal significa...
Genotype data, consisting large numbers of markers, is used as demographic and association studies t...
<div><p>The dimension of the population genetics data produced by next-generation sequencing platfor...
Studying genomic patterns of human population structure provides important insights into human evolu...
The advent of genome-wide dense variation data provides an opportunity to investigate ancestry in un...
The advent of genome-wide dense variation data provides an opportunity to investigate ancestry in un...
The advent of genome-wide dense variation data provides an opportunity to investigate ancestry in un...
<div><p>The advent of genome-wide dense variation data provides an opportunity to investigate ancest...
Large-scale repositories of genomic data are providing opportunities for researchers to answer biolo...
BACKGROUND: The dramatic progress in sequencing technologies offers unprecedented prospects for deci...
Principal components analysis has been used for decades to summarize genetic variation across geogra...
Identification of a small panel of population structure informative markers can reduce genotyping co...
Population structure occurs when a sample is composed of individuals with different ancestries and c...
Existing methods to ascertain small sets of markers for the identification of human population struc...
Association studies using unrelated individuals have become the most popular design for mapping comp...
Current methods for inferring population structure from genetic data do not provide formal significa...
Genotype data, consisting large numbers of markers, is used as demographic and association studies t...
<div><p>The dimension of the population genetics data produced by next-generation sequencing platfor...
Studying genomic patterns of human population structure provides important insights into human evolu...
The advent of genome-wide dense variation data provides an opportunity to investigate ancestry in un...
The advent of genome-wide dense variation data provides an opportunity to investigate ancestry in un...
The advent of genome-wide dense variation data provides an opportunity to investigate ancestry in un...
<div><p>The advent of genome-wide dense variation data provides an opportunity to investigate ancest...
Large-scale repositories of genomic data are providing opportunities for researchers to answer biolo...
BACKGROUND: The dramatic progress in sequencing technologies offers unprecedented prospects for deci...