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Imputation from SNP chip to sequence: a case study in a Chinese indigenous chicken population

机译:从SNP芯片到序列的推算:以中国本土鸡种群为例

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摘要

Background: Genome-wide association studies and genomic predictions are thought to be optimized by using whole-genome sequence(WGS) data. However, sequencing thousands of individuals of interest is expensive.Imputation from SNP panels to WGS data is an attractive and less expensive approach to obtain WGS data. The aims of this study were to investigate the accuracy of imputation and to provide insight into the design and execution of genotype imputation.Results: We genotyped 450 chickens with a 600 K SNP array, and sequenced 24 key individuals by whole genome re-sequencing. Accuracy of imputation from putative 60 K and 600 K array data to WGS data was 0.620 and 0.812 for Beagle, and 0.810 and 0.914 for FImpute, respectively. By increasing the sequencing cost from 24 X to 144 X, the imputation accuracy increased from 0.525 to 0.698 for Beagle and from 0.654 to 0.823 for FImpute. With fixed sequence depth(12 X), increasing the number of sequenced animals from 1 to 24, improved accuracy from 0.421 to0.897 for FImpute and from 0.396 to 0.777 for Beagle. Using optimally selected key individuals resulted in a higher imputation accuracy compared with using randomly selected individuals as a reference population for resequencing. With fixed reference population size(24), imputation accuracy increased from 0.654 to 0.875 for FImpute and from 0.512 to 0.762 for Beagle as the sequencing depth increased from 1 X to 12 X. With a given total cost of genotyping, accuracy increased with the size of the reference population for FImpute, but the pattern was not valid for Beagle, which showed the highest accuracy at six fold coverage for the scenarios used in this study.Conclusions: In conclusion, we comprehensively investigated the impacts of several key factors on genotype imputation. Generally, increasing sequencing cost gave a higher imputation accuracy. But with a fixed sequencing cost, the optimal imputation enhance the performance of WGP and GWAS. An optimal imputation strategy should take size of reference population, imputation algorithms, marker density, and population structure of the target population and methods to select key individuals into consideration comprehensively. This work sheds additional light on how to design and execute genotype imputation for livestock populations.
机译:背景:全基因组关联研究和基因组预测被认为可通过使用全基因组序列(WGS)数据进行优化。但是,对数千个感兴趣的个体进行测序非常昂贵。从SNP面板到WGS数据的导入是一种获取WGS数据的有吸引力且便宜的方法。这项研究的目的是调查归因的准确性,并为基因型归因的设计和执行提供见识。结果:我们对600只SNP阵列的450只鸡进行了基因分型,并通过全基因组重新测序对24个关键个体进行了测序。从推定的60 K和600 K阵列数据到WGS数据的估算精度,Beagle分别为0.620和0.812,FImpute分别为0.810和0.914。通过将测序成本从24 X增加到144 X,Beagle的插补精度从0.525提高到0.698,FImpute的插补精度从0.654提高到0.823。在固定的序列深度(12 X)下,将测序动物的数量从1增加到24,FImpute的准确性从0.421提高到0.897,Beagle的准确性从0.396提高到0.777。与使用随机选择的个体作为重新测序的参考群体相比,使用最佳选择的关键个体会导致更高的插补准确性。在固定参考群体人数(24)的情况下,随着测序深度从1 X增加到12 X,FImpute的插补准确度从0.654上升到0.875,Beagle的插补准确度从0.512上升到0.762。的参考人群为FImpute,但该模式对Beagle无效,在本研究中使用的方案在6倍覆盖率下显示出最高的准确性。结论:总而言之,我们全面研究了几个关键因素对基因型推算的影响。通常,增加测序成本会带来更高的插补精度。但是,在固定的测序成本的情况下,最佳插补可提高WGP和GWAS的性能。最佳插补策略应考虑参考人群的大小,插补算法,标记密度和目标人群的人口结构以及综合选择关键人物的方法。这项工作为如何设计和执行牲畜种群的基因型估算提供了更多的启示。

著录项

  • 来源
    《畜牧与生物技术杂志:英文版》 |2018年第002期|P.294-305|共12页
  • 作者单位

    Guangdong Provincial Key Lab of Agro-Animal Genomics and Molecular Breeding, National Engineering Research Centre for Breeding Swine Industry,College of Animal Science, South China Agricultural University;

    Guangdong Provincial Key Lab of Agro-Animal Genomics and Molecular Breeding, National Engineering Research Centre for Breeding Swine Industry,College of Animal Science, South China Agricultural University;

    Guangdong Provincial Key Lab of Agro-Animal Genomics and Molecular Breeding, National Engineering Research Centre for Breeding Swine Industry,College of Animal Science, South China Agricultural University;

    Guangdong Provincial Key Lab of Agro-Animal Genomics and Molecular Breeding, National Engineering Research Centre for Breeding Swine Industry,College of Animal Science, South China Agricultural University;

    Guangdong Provincial Key Lab of Agro-Animal Genomics and Molecular Breeding, National Engineering Research Centre for Breeding Swine Industry,College of Animal Science, South China Agricultural University;

    Guangdong Provincial Key Lab of Agro-Animal Genomics and Molecular Breeding, National Engineering Research Centre for Breeding Swine Industry,College of Animal Science, South China Agricultural University;

    Guangdong Provincial Key Lab of Agro-Animal Genomics and Molecular Breeding, National Engineering Research Centre for Breeding Swine Industry,College of Animal Science, South China Agricultural University;

    Guangdong Provincial Key Lab of Agro-Animal Genomics and Molecular Breeding, National Engineering Research Centre for Breeding Swine Industry,College of Animal Science, South China Agricultural University;

    Guangdong Provincial Key Lab of Agro-Animal Genomics and Molecular Breeding, National Engineering Research Centre for Breeding Swine Industry,College of Animal Science, South China Agricultural University;

  • 收录信息 中国科学引文数据库(CSCD);
  • 原文格式 PDF
  • 正文语种 CHI
  • 中图分类 鸡;
  • 关键词

  • 入库时间 2022-08-19 04:27:35
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