Huang Yongxiang, Xie Zhihao, Chen Daming, Chen Haomin, Zeng Yuxiang, Dai Shuangfeng
National Center for Technology Innovation of Saline-Alkali Tolerant Rice, Guangdong Ocean University, Zhanjiang 524008, China.
College of Coastal Agricultural Sciences, Guangdong Ocean University, Zhanjiang 524008, China.
Int J Mol Sci. 2025 Jun 28;26(13):6249. doi: 10.3390/ijms26136249.
Although numerous rice plant height-related genes have been cloned and functionally characterized in recent years, a gap between the identified genes and their utilization in breeding still exists. Here, we developed a linear regression model by pyramiding plant height-related alleles to predict rice plant height and confirmed that it can be used in rice breeding. In our study, we firstly identified 22 plant height-associated molecular markers from 218 markers in an association mapping population which consisted of 273 rice varieties. Linear regression analysis revealed a positive correlation between rice plant height and the number of plant height-increasing alleles derived from these 22 molecular markers. Subsequently, linear regression models were developed using 2-10 loci based on the genotype and phenotype data of the association mapping population. The predictive accuracy of the model was tested using a recombinant inbred line (RIL) population consisting of 219 lines, and it revealed the trend that predictive accuracy increased with more loci in a certain range of less than five loci. If the prediction model was built based on 5-10 loci, it yielded an average absolute error from 11.05 to 11.96 cm, which was smaller than absolute error induced by environmental factors (5.72 cm to 12.79 cm). The reliable prediction of rice plant height by this model highlights its value as a practical tool for optimizing rice breeding strategies. Additionally, the linear regression model developed in this study not only can facilitate plant height manipulation but also will inspire other design breeding techniques in other crops or other traits.
尽管近年来已克隆并对众多与水稻株高相关的基因进行了功能表征,但已鉴定基因与其在育种中的应用之间仍存在差距。在此,我们通过聚合与株高相关的等位基因开发了一个线性回归模型来预测水稻株高,并证实其可用于水稻育种。在我们的研究中,我们首先在由273个水稻品种组成的关联作图群体中的218个标记中鉴定出22个与株高相关的分子标记。线性回归分析表明,水稻株高与源自这22个分子标记的株高增加等位基因数量之间呈正相关。随后,基于关联作图群体的基因型和表型数据,使用2 - 10个位点构建了线性回归模型。使用由219个株系组成的重组自交系(RIL)群体对模型的预测准确性进行了测试,结果表明在小于5个位点的一定范围内,预测准确性随着位点数量的增加而提高。如果基于5 - 10个位点构建预测模型,其平均绝对误差为11.05至11.96厘米,小于环境因素引起的绝对误差(5.72厘米至12.79厘米)。该模型对水稻株高的可靠预测突出了其作为优化水稻育种策略实用工具的价值。此外,本研究中开发的线性回归模型不仅有助于控制株高,还将启发其他作物其他性状的设计育种技术。