Joint Estimation of Pedigrees and Effective Population Size Using Markov Chain Monte Carlo

被引:4
|
作者
Ko, Amy [1 ]
Nielsen, Rasmus [1 ,2 ,3 ]
机构
[1] Univ Calif Berkeley, Dept Integrat Biol, Valley Life Sci Bldg,Harmon Way, Berkeley, CA 94720 USA
[2] Univ Calif Berkeley, Dept Stat, Berkeley, CA 94720 USA
[3] Univ Copenhagen, Museum Nat Hist, DK-1123 Copenhagen, Denmark
关键词
pedigree inference; effective population size; Markov Chain Monte Carlo; MISSPECIFIED RELATIONSHIPS; RECONSTRUCTING PEDIGREES; PARENTAGE ASSIGNMENT; SIBSHIP INFERENCE; GENETIC DATA; GENOME; RELATEDNESS; ALGORITHM; GENEALOGIES; PARTITION;
D O I
10.1534/genetics.119.302280
中图分类号
Q3 [遗传学];
学科分类号
071007 ; 090102 ;
摘要
Pedigrees provide the genealogical relationships among individuals at a fine resolution and serve an important function in many areas of genetic studies. One such use of pedigree information is in the estimation of the short-term effective population size (Ne), which is of great relevance in fields such as conservation genetics. Despite the usefulness of pedigrees, however, they are often an unknown parameter and must be inferred from genetic data. In this study, we present a Bayesian method to jointly estimate pedigrees and Ne from genetic markers using Markov Chain Monte Carlo. Our method supports analysis of a large number of markers and individuals within a single generation with the use of a composite likelihood, which significantly increases computational efficiency. We show, on simulated data, that our method is able to jointly estimate relationships up to first cousins and Ne with high accuracy. We also apply the method on a real dataset of house sparrows to reconstruct their previously unreported pedigree.
引用
收藏
页码:855 / 868
页数:14
相关论文
共 50 条
  • [1] Population Markov Chain Monte Carlo
    Laskey, KB
    Myers, JW
    MACHINE LEARNING, 2003, 50 (1-2) : 175 - 196
  • [2] Population Markov Chain Monte Carlo
    Kathryn Blackmond Laskey
    James W. Myers
    Machine Learning, 2003, 50 : 175 - 196
  • [3] Segmentation Using Population based Markov Chain Monte Carlo
    Wang, Xiangrong
    2013 NINTH INTERNATIONAL CONFERENCE ON NATURAL COMPUTATION (ICNC), 2013, : 184 - 188
  • [4] Time delay estimation using Markov Chain Monte Carlo method
    Li Jing
    Zhao Yong-Jun
    Li Dong-Hai
    ACTA PHYSICA SINICA, 2014, 63 (13)
  • [5] Parameter estimation in deformable models using Markov chain Monte Carlo
    Chalana, V
    Haynor, DR
    Sampson, PD
    Kim, YM
    IMAGE PROCESSING - MEDICAL IMAGING 1997, PTS 1 AND 2, 1997, 3034 : 287 - 298
  • [6] Probabilistic parameter estimation of activated sludge processes using Markov Chain Monte Carlo
    Sharifi, Soroosh
    Murthy, Sudhir
    Takacs, Imre
    Massoudieh, Arash
    WATER RESEARCH, 2014, 50 : 254 - 266
  • [7] On quantile estimation and Markov chain Monte Carlo convergence
    Brooks, SP
    Roberts, GO
    BIOMETRIKA, 1999, 86 (03) : 710 - 717
  • [8] Parameter Estimation in Population Balance through Bayesian Technique Markov Chain Monte Carlo
    Moura, Carlos H. R.
    Viegas, Bruno M.
    Tavares, Maria R. M.
    Macedo, Emanuel N.
    Estumano, Diego C.
    Quaresma, Joao N. N.
    JOURNAL OF APPLIED AND COMPUTATIONAL MECHANICS, 2021, 7 (02): : 890 - 901
  • [9] Adaptive Markov chain Monte Carlo sampling and estimation in Mata
    Baker, Matthew J.
    STATA JOURNAL, 2014, 14 (03) : 623 - 661
  • [10] Logistic Growth Modeling with Markov Chain Monte Carlo Estimation
    Choi, Jaehwa
    Chen, Jinsong
    Harring, Jeffery R.
    JOURNAL OF MODERN APPLIED STATISTICAL METHODS, 2019, 18 (01) : 2 - 18