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      A model-based approach for analysis of spatial structure in genetic data

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          Abstract

          Characterizing genetic diversity within and between populations has broad applications in studies of human disease and evolution. We propose a new approach, spatial ancestry analysis, for the modeling of genotypes in two- or three-dimensional space. In spatial ancestry analysis (SPA), we explicitly model the spatial distribution of each SNP by assigning an allele frequency as a continuous function in geographic space. We show that the explicit modeling of the allele frequency allows individuals to be localized on the map on the basis of their genetic information alone. We apply our SPA method to a European and a worldwide population genetic variation data set and identify SNPs showing large gradients in allele frequency, and we suggest these as candidate regions under selection. These regions include SNPs in the well-characterized LCT region, as well as at loci including FOXP2, OCA2 and LRP1B.

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          Most cited references9

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          Molecular evolution of FOXP2, a gene involved in speech and language.

          Language is a uniquely human trait likely to have been a prerequisite for the development of human culture. The ability to develop articulate speech relies on capabilities, such as fine control of the larynx and mouth, that are absent in chimpanzees and other great apes. FOXP2 is the first gene relevant to the human ability to develop language. A point mutation in FOXP2 co-segregates with a disorder in a family in which half of the members have severe articulation difficulties accompanied by linguistic and grammatical impairment. This gene is disrupted by translocation in an unrelated individual who has a similar disorder. Thus, two functional copies of FOXP2 seem to be required for acquisition of normal spoken language. We sequenced the complementary DNAs that encode the FOXP2 protein in the chimpanzee, gorilla, orang-utan, rhesus macaque and mouse, and compared them with the human cDNA. We also investigated intraspecific variation of the human FOXP2 gene. Here we show that human FOXP2 contains changes in amino-acid coding and a pattern of nucleotide polymorphism, which strongly suggest that this gene has been the target of selection during recent human evolution.
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            Genotype, haplotype and copy-number variation in worldwide human populations.

            Genome-wide patterns of variation across individuals provide a powerful source of data for uncovering the history of migration, range expansion, and adaptation of the human species. However, high-resolution surveys of variation in genotype, haplotype and copy number have generally focused on a small number of population groups. Here we report the analysis of high-quality genotypes at 525,910 single-nucleotide polymorphisms (SNPs) and 396 copy-number-variable loci in a worldwide sample of 29 populations. Analysis of SNP genotypes yields strongly supported fine-scale inferences about population structure. Increasing linkage disequilibrium is observed with increasing geographic distance from Africa, as expected under a serial founder effect for the out-of-Africa spread of human populations. New approaches for haplotype analysis produce inferences about population structure that complement results based on unphased SNPs. Despite a difference from SNPs in the frequency spectrum of the copy-number variants (CNVs) detected--including a comparatively large number of CNVs in previously unexamined populations from Oceania and the Americas--the global distribution of CNVs largely accords with population structure analyses for SNP data sets of similar size. Our results produce new inferences about inter-population variation, support the utility of CNVs in human population-genetic research, and serve as a genomic resource for human-genetic studies in diverse worldwide populations.
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              Surfing during population expansions promotes genetic revolutions and structuration.

              Recent studies have shown that low-frequency alleles can sometimes surf on the wave of advance of a population range expansion, reaching high frequencies and spreading over large areas. Using microbial populations, Hallatschek and colleagues have provided the first experimental evidence of surfing during spatial expansions. They also show that the newly colonized area should become structured into sectors of low genetic diversity separated by sharp allele frequency gradients, increasing the global genetic differentiation of the population. These experimental results can be easily reproduced in silico and they should apply to a wide variety of higher organisms. They also suggest that a single range expansion can create very complex patterns at neutral loci, mimicking adaptive processes and resembling postglacial segregation of clades from distinct refuge areas.
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                Author and article information

                Journal
                9216904
                2419
                Nat Genet
                Nat. Genet.
                Nature genetics
                1061-4036
                1546-1718
                28 February 2013
                20 May 2012
                01 June 2013
                : 44
                : 6
                : 725-731
                Affiliations
                [1 ]Interdepartmental Program in Bioinformatics, University of California, Los Angeles, California, USA.
                [2 ]Department of Computer Science, University of California, Los Angeles, California, USA.
                [3 ]Department of Ecology and Evolutionary Biology, University of California, Los Angeles, California, USA.
                [4 ]Department of Human Genetics, University of California, Los Angeles, California, USA.
                [5 ]International Computer Science Institute, Berkeley, California, USA.
                [6 ]School of Computer Science, Tel Aviv University, Tel Aviv, Israel.
                [7 ]Department of Molecular Microbiology and Biotechnology, Tel Aviv University, Tel Aviv, Israel.
                Author notes
                [8]

                These authors contributed equally to this work.

                Correspondence should be addressed to E.E. ( eeskin@ 123456cs.ucla.edu ).
                Article
                PMC3592563 PMC3592563 3592563 nihpa448919
                10.1038/ng.2285
                3592563
                22610118
                281f82d3-832b-403d-ad4e-82e3cd4ad4aa
                © 2012 Nature America, Inc. All rights reserved.
                History
                Funding
                Funded by: National Heart, Lung, and Blood Institute : NHLBI
                Award ID: P01 HL030568 || HL
                Funded by: National Heart, Lung, and Blood Institute : NHLBI
                Award ID: K25 HL080079 || HL
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