Li Heng-De, Bao Zhen-Min, Sun Xiao-Wen
The Centre for Applied Aquatic Genomics, Chinese Academy of Fishery Sciences, Beijing, China.
Yi Chuan. 2011 Dec;33(12):1308-16. doi: 10.3724/sp.j.1005.2011.01308.
Selective breeding is very important in agricultural production and breeding value estimation is the core of selective breeding. With the development of genetic markers, especially high throughput genotyping technology, it becomes available to estimate breeding value at genome level, i.e. genomic selection (GS). In this review, the methods of GS was categorized into two groups: one is to predict genomic estimated breeding value (GEBV) based on the allele effect, such as least squares, random regression - best linear unbiased prediction (RR-BLUP), Bayes and principle component analysis, etc; the other is to predict GEBV with genetic relationship matrix, which constructs genetic relationship matrix via high throughput genetic markers and then predicts GEBV through linear mixed model, i.e. GBLUP. The basic principles of these methods were also introduced according to the above two classifications. Factors affecting GS accuracy include markers of type and density, length of haplotype, the size of reference population, the extent between marker-QTL and so on. Among the methods of GS, Bayes and GBLUP are usually more accurate than the others and least squares is the worst. GBLUP is time-efficient and can combine pedigree with genotypic information, hence it is superior to other methods. Although progress was made in GS, there are still some challenges, for examples, united breeding, long-term genetic gain with GS, and disentangling markers with and without contribution to the traits. GS has been applied in animal and plant breeding practice and also has the potential to predict genetic predisposition in humans and study evolutionary dynamics. GS, which is more precise than the traditional method, is a breakthrough at measuring genetic relationship. Therefore, GS will be a revolutionary event in the history of animal and plant breeding.
选择育种在农业生产中非常重要,而育种值估计是选择育种的核心。随着遗传标记的发展,特别是高通量基因分型技术的出现,在基因组水平上估计育种值成为可能,即基因组选择(GS)。在本综述中,GS方法分为两类:一类是基于等位基因效应预测基因组估计育种值(GEBV),如最小二乘法、随机回归-最佳线性无偏预测(RR-BLUP)、贝叶斯法和主成分分析等;另一类是利用遗传关系矩阵预测GEBV,即通过高通量遗传标记构建遗传关系矩阵,然后通过线性混合模型预测GEBV,即GBLUP。还根据上述两种分类介绍了这些方法的基本原理。影响GS准确性的因素包括标记类型和密度、单倍型长度、参考群体大小、标记与数量性状位点之间的距离等。在GS方法中,贝叶斯法和GBLUP通常比其他方法更准确,最小二乘法最差。GBLUP效率高,能将系谱信息与基因型信息结合起来,因此优于其他方法。尽管GS取得了进展,但仍存在一些挑战,例如联合育种、GS的长期遗传增益以及区分对性状有贡献和无贡献的标记。GS已应用于动植物育种实践,也有预测人类遗传易感性和研究进化动态的潜力。GS比传统方法更精确,是测量遗传关系的一个突破。因此,GS将是动植物育种史上的一次革命性事件。