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Improving Genomic Prediction in Cassava Field Experiments by Accounting for Interplot Competition

机译:通过考虑地块间竞争来改善木薯田间试验的基因组预测

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摘要

Plants competing for available resources is an unavoidable phenomenon in a field. We conducted studies in cassava (Manihot esculenta Crantz) in order to understand the pattern of this competition. Taking into account the competitive ability of genotypes while selecting parents for breeding advancement or commercialization can be very useful. We assumed that competition could occur at two levels: (i) the genotypic level, which we call interclonal, and (ii) the plot level irrespective of the type of genotype, which we call interplot competition or competition error. Modification in incidence matrices was applied in order to relate neighboring genotype/plot to the performance of a target genotype/plot with respect to its competitive ability. This was added into a genomic selection (GS) model to simultaneously predict the direct and competitive ability of a genotype. Predictability of the models was tested through a 10-fold cross-validation method repeated five times. The best model was chosen as the one with the lowest prediction root mean squared error (pRMSE) compared to that of the base model having no competitive component. Results from our real data studies indicated that <10% increase in accuracy was achieved with GS-interclonal competition model, but this value reached up to 25% with a GS-competition error model. We also found that the competitive influence of a cassava clone is not just limited to the adjacent neighbors but spreads beyond them. Through simulations, we found that a 26% increase of accuracy in estimating trait genotypic effect can be achieved even in the presence of high competitive variance.
机译:植物争夺可用资源是田间不可避免的现象。我们在木薯(Manihot esculenta Crantz)中进行了研究,以了解这场比赛的方式。在选择亲本进行育种或商业化时考虑基因型的竞争能力可能非常有用。我们假设竞争可能发生在两个级别:(i)基因型水平,我们称之为克隆间竞争;以及(ii)地块水平,与基因型类型无关,我们称之为情节间竞争或竞争错误。为了使邻近的基因型/图谱与目标基因型/图谱的竞争能力相关,可以对入射矩阵进行修改。这被添加到基因组选择(GS)模型中,以同时预测基因型的直接和竞争能力。通过重复五次的10倍交叉验证方法测试了模型的可预测性。与没有竞争成分的基本模型相比,选择最佳模型作为具有最低预测均方根误差(pRMSE)的模型。我们的真实数据研究结果表明,GS-竞争克隆模型的准确性提高了<10%,而GS-竞争误差模型的准确性达到了25%。我们还发现,木薯无性系的竞争影响力不仅限于相邻的邻居,而且还扩展到它们之外。通过仿真,我们发现,即使在存在高竞争差异的情况下,估计性状基因型效应的准确性也可以提高26%。

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