Performance of genomic selection in mice

被引:320
作者
Legarra, Andres [1 ]
Robert-Granie, Christele [1 ]
Manfredi, Eduardo [1 ]
Elsen, Jean-Michel [1 ]
机构
[1] INRA, UR 631, F-31326 Auzeville, France
关键词
D O I
10.1534/genetics.108.088575
中图分类号
Q3 [遗传学];
学科分类号
071007 ; 090102 ;
摘要
Selection plans in plant and animal breedding are driven by genetic evaluation. Recent developments suggest using massive genetic marker information, known as "genomic selection.' There is little evidence of its performance, though, We empirically compared three strategies for selection: (1) use of pedigree and phenotypic information, (2) use of genomewide markers and phenotypic information, and (3) the combination of both. We analyzed four traits form a heterogeneous mouse population (http://gscan.well.ox.ac.uk/), including 1884 individuals and 10,946 SNP markers. We used linear mixed models, using extensions of association analysis. Cross-validation techniques were used, providing assumption-free estimates of predictive ability. Sampling of validation and training data sets was carried out across and within families, which allows comparing across-and within-family information. Use of genomewide genetic markers increased predictive ability up to 0.22 across families and up to 0.03 within families. The latter is not statistically significant. These values are roughly comparable to increases of up to 0.57 (across family) and 0.14 (within family) in accuracy of prediction of genetic value. In this data set, within-family information was more accurate than across-family information, and populational linkage disequilibrium was not a completely accurate source of information for genetic evaluation. This fact questions some applications of genomic selection.
引用
收藏
页码:611 / 618
页数:8
相关论文
共 32 条
[31]   Assumption-free estimation of heritability from genome-wide identity-by-descent sharing between full siblings [J].
Visscher, Peter M. ;
Medland, Sarah E. ;
Ferreira, Manuel A. R. ;
Morley, Katherine I. ;
Zhu, Gu ;
Cornes, Belinda K. ;
Montgomery, Grant W. ;
Martin, Nicholas G. .
PLOS GENETICS, 2006, 2 (03) :316-325
[32]   A unified mixed-model method for association mapping that accounts for multiple levels of relatedness [J].
Yu, JM ;
Pressoir, G ;
Briggs, WH ;
Bi, IV ;
Yamasaki, M ;
Doebley, JF ;
McMullen, MD ;
Gaut, BS ;
Nielsen, DM ;
Holland, JB ;
Kresovich, S ;
Buckler, ES .
NATURE GENETICS, 2006, 38 (02) :203-208