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Recent Demographic History Inferred by High-Resolution Analysis of Linkage Disequilibrium
by
Pardiñas, Antonio F
, Saura, María
, Caballero, Armando
, Santiago, Enrique
, Wang, Jinliang
, Novo, Irene
in
Animal populations
/ Computer simulation
/ Demographics
/ Demography
/ Diploids
/ DNA sequencing
/ Endangered species
/ Gene sequencing
/ Genetic algorithms
/ Genotypes
/ Genotyping
/ Heterogeneity
/ Linkage analysis
/ Linkage disequilibrium
/ Mathematical models
/ Population number
/ Subpopulations
/ Wildlife conservation
2020
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Recent Demographic History Inferred by High-Resolution Analysis of Linkage Disequilibrium
by
Pardiñas, Antonio F
, Saura, María
, Caballero, Armando
, Santiago, Enrique
, Wang, Jinliang
, Novo, Irene
in
Animal populations
/ Computer simulation
/ Demographics
/ Demography
/ Diploids
/ DNA sequencing
/ Endangered species
/ Gene sequencing
/ Genetic algorithms
/ Genotypes
/ Genotyping
/ Heterogeneity
/ Linkage analysis
/ Linkage disequilibrium
/ Mathematical models
/ Population number
/ Subpopulations
/ Wildlife conservation
2020
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Recent Demographic History Inferred by High-Resolution Analysis of Linkage Disequilibrium
by
Pardiñas, Antonio F
, Saura, María
, Caballero, Armando
, Santiago, Enrique
, Wang, Jinliang
, Novo, Irene
in
Animal populations
/ Computer simulation
/ Demographics
/ Demography
/ Diploids
/ DNA sequencing
/ Endangered species
/ Gene sequencing
/ Genetic algorithms
/ Genotypes
/ Genotyping
/ Heterogeneity
/ Linkage analysis
/ Linkage disequilibrium
/ Mathematical models
/ Population number
/ Subpopulations
/ Wildlife conservation
2020
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Recent Demographic History Inferred by High-Resolution Analysis of Linkage Disequilibrium
Journal Article
Recent Demographic History Inferred by High-Resolution Analysis of Linkage Disequilibrium
2020
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Overview
Inferring changes in effective population size (Ne) in the recent past is of special interest for conservation of endangered species and for human history research. Current methods for estimating the very recent historical Ne are unable to detect complex demographic trajectories involving multiple episodes of bottlenecks, drops, and expansions. We develop a theoretical and computational framework to infer the demographic history of a population within the past 100 generations from the observed spectrum of linkage disequilibrium (LD) of pairs of loci over a wide range of recombination rates in a sample of contemporary individuals. The cumulative contributions of all of the previous generations to the observed LD are included in our model, and a genetic algorithm is used to search for the sequence of historical Ne values that best explains the observed LD spectrum. The method can be applied from large samples to samples of fewer than ten individuals using a variety of genotyping and DNA sequencing data: haploid, diploid with phased or unphased genotypes and pseudohaploid data from low-coverage sequencing. The method was tested by computer simulation for sensitivity to genotyping errors, temporal heterogeneity of samples, population admixture, and structural division into subpopulations, showing high tolerance to deviations from the assumptions of the model. Computer simulations also show that the proposed method outperforms other leading approaches when the inference concerns recent timeframes. Analysis of data from a variety of human and animal populations gave results in agreement with previous estimations by other methods or with records of historical events.
Publisher
Oxford University Press
Subject
/ Diploids
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