Maulana Frank, Perumal Ramasamy, Serba Desalegn D, Tesso Tesfaye
Department of Agronomy, Kansas State University, Manhattan, KS, United States.
Kansas State University, Agricultural Research Center, Hays, KS, United States.
Front Plant Sci. 2023 Apr 25;14:1139896. doi: 10.3389/fpls.2023.1139896. eCollection 2023.
Genomic selection is expected to improve selection efficiency and genetic gain in breeding programs. The objective of this study was to assess the efficacy of predicting the performance of grain sorghum hybrids using genomic information of parental genotypes. One hundred and two public sorghum inbred parents were genotyped using genotyping-by-sequencing. Ninty-nine of the inbreds were crossed to three tester female parents generating a total of 204 hybrids for evaluation at two environments. The hybrids were sorted in to three sets of 77,59 and 68 and evaluated along with two commercial checks using a randomized complete block design in three replications. The sequence analysis generated 66,265 SNP markers that were used to predict the performance of 204 F1 hybrids resulted from crosses between the parents. Both additive (partial model) and additive and dominance (full model) were constructed and tested using various training population (TP) sizes and cross-validation procedures. Increasing TP size from 41 to 163 increased prediction accuracies for all traits. With the partial model, the five-fold cross validated prediction accuracies ranged from 0.03 for thousand kernel weight (TKW) to 0.58 for grain yield (GY) while it ranged from 0.06 for TKW to 0.67 for GY with the full model. The results suggest that genomic prediction could become an effective tool for predicting the performance of sorghum hybrids based on parental genotypes.
基因组选择有望提高育种计划中的选择效率和遗传增益。本研究的目的是评估利用亲本基因型的基因组信息预测粒用高粱杂交种表现的效果。使用简化基因组测序对102个公共高粱自交亲本进行基因分型。将其中99个自交系与3个测验种母本杂交,共产生204个杂交种,在两个环境中进行评估。将杂交种分为77、59和68的三组,并与两个商业对照一起,采用随机完全区组设计,进行三次重复试验。序列分析产生了66265个单核苷酸多态性(SNP)标记,用于预测亲本杂交产生的204个F1杂交种的表现。构建并使用各种训练群体(TP)大小和交叉验证程序测试了加性(部分模型)和加性及显性(完整模型)。将TP大小从41增加到163提高了所有性状的预测准确性。对于部分模型,五倍交叉验证的预测准确性,千粒重(TKW)为0.03,籽粒产量(GY)为0.58;而对于完整模型,TKW为0.06,GY为0.67。结果表明,基因组预测可能成为基于亲本基因型预测高粱杂交种表现的有效工具。