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Optimal selection for multiple quantitative trait loci and contributions of individuals using genetic algorithm

机译:利用遗传算法对多个数量性状基因座和个体贡献的最优选择

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摘要

Two methods (Scheme A and Scheme B) were developed to optimize the relative weights on quantitative trait loci (QTL) and contributions of selected individuals simultaneously to maximize selection response while constraining the rate of inbreeding to the rate observed in gene assisted selection (GAS). In Scheme A, both the relative weights give to QTL and contributions of the selected individuals were optimized using a genetic algorithm. The possible solutions for relative weights of QTL and contributions of the selected individuals were encoded simultaneously. A physical selection population was used to evaluate the fitness of each encoded solution using stochastic simulation with 50 replicates. The fitness of each solution was the mean of all replicates for accumulative discounted sum of genetic means of all generations in physical selection population. In Scheme B, the optimization for relative weights on QTL was similar to Scheme A, and also was implemented based on a genetic algorithm. However, unlike Scheme A, an optimal contribution algorithm (OC) was used to optimize contributions of selection candidates. When compared with GAS, Schemes A and B resulted in up to 15.88 and 22.26% extra discounted sum of genetic value of all generations in a long planning horizon, respectively. Compared GAS+OC and Scheme B, most of the increase (about 78%) in genetic gain was produced by only optimizing contributions of selected individuals. The optimization for relative weight given to QTL just avoided the long-term loss (about 22%) observed in GAS scheme.
机译:开发了两种方法(方案A和方案B)来优化定量特征位点(QTL)的相对权重,同时优化选定个体的贡献,以最大化选择反应,同时将近交率限制在基因辅助选择(GAS)中观察到的率。在方案A中,使用QTL的相对权重和所选个体的贡献均使用遗传算法进行了优化。同时编码QTL相对权重和所选个人贡献的可能解决方案。使用随机选择重复50次的物理选择种群评估每种编码溶液的适用性。每个解决方案的适用性是物理选择种群中所有世代遗传手段的累积折现总和的所有重复项的平均值。在方案B中,对QTL的相对权重的优化类似于方案A,并且也是基于遗传算法实现的。但是,与方案A不同,最佳贡献算法(OC)用于优化选择候选者的贡献。与GAS相比,方案A和B在较长的规划期内,分别使各个世代的遗传价值的折让总和分别高达15.88和22.26%。与GAS + OC和方案B相比,遗传增益的大部分增加(约78%)仅通过优化选定个体的贡献而产生。 QTL相对重量的优化只是避免了GAS方案中观察到的长期损失(约22%)。

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