Wambi Wilber, Makumbi Dan, Asea Godfrey, Zeleke Habtamu, Bruce Anani Y, Wakgari Mulatu, Kwemoi Daniel Bomet, Prasanna Boddupalli M
African Centre of Excellence for Climate-Smart Agriculture and Biodiversity Conservation, Haramaya University, Dire Dawa, Ethiopia.
Bulindi Zonal Agricultural Research and Development Institute, National Agricultural Research Organization, Hoima, Uganda.
Front Plant Sci. 2025 Mar 27;16:1544010. doi: 10.3389/fpls.2025.1544010. eCollection 2025.
The Fall armyworm (FAW), (J. E. Smith) invaded sub-Saharan Africa (SSA) in 2016 and has since become prevalent in many countries, causing significant maize grain yield losses and reduced grain quality. Breeding for host plant resistance to FAW requires improving multiple traits, complicating selection. This study evaluated the use of principal component (PC)-based multi-trait selection indices to identify FAW resistant maize genotypes. A total of 192 maize hybrids alongside four commercial hybrids, were evaluated over four seasons under artificial FAW infestation. Data on FAW leaf feeding damage (LD) at 7, 14, and 21 days after infestation, and ear damage (ED), ear rot (ER), and grain yield (GY) were recorded. The data were subjected to analysis of variance and PC analysis, and results used to construct two economic weight-free selection indices: PC1-based index (PC1BI) and PC2-based index (PC2BI). Broad-sense heritability estimates were 0.59 to 0.73 for LD, and 0.69 for GY. The two PCs explained 97.1% of the variation among the hybrids. PC1BI, with higher loadings for the leaf feeding damage traits, showed the larger desired gains for these traits (-2.92 to -3.84%) and GY (19.9%), making it a superior index to PC2BI. PC1BI identified six promising hybrids with GY above the cutoff of 7.0 t ha for selection under FAW infestation. PC2BI exhibited larger gains for ED (-11.1%) and ER (-45.4%). The index-based selected hybrids consistently outperformed the commercial hybrid checks. The PC-based indices have the potential to serve as valuable tools for breeders to maximize selection gains; however, modifications are necessary to incorporate other desirable agronomic and adaptive traits.
草地贪夜蛾(Spodoptera frugiperda (J. E. Smith))于2016年入侵撒哈拉以南非洲(SSA),自那时起在许多国家广泛传播,导致玉米籽粒产量大幅损失且品质下降。培育对草地贪夜蛾具有寄主植物抗性的品种需要改良多个性状,这使得选择过程变得复杂。本研究评估了基于主成分(PC)的多性状选择指数在鉴定抗草地贪夜蛾玉米基因型中的应用。在人工接种草地贪夜蛾的条件下,对192个玉米杂交种以及4个商业杂交种进行了四个季节的评估。记录了接种后7天、14天和21天的草地贪夜蛾叶片取食损伤(LD)数据,以及穗部损伤(ED)、穗腐病(ER)和籽粒产量(GY)数据。对数据进行方差分析和主成分分析,并将结果用于构建两个无经济权重的选择指数:基于PC1的指数(PC1BI)和基于PC2的指数(PC2BI)。LD的广义遗传力估计值为0.59至0.73,GY为0.69。这两个主成分解释了杂交种间97.1%的变异。PC1BI对叶片取食损伤性状的载荷较高,这些性状(-2.92%至-3.84%)和GY(19.9%)的期望增益较大,使其成为优于PC2BI的指数。PC1BI鉴定出6个有前景的杂交种,其GY在草地贪夜蛾侵染条件下高于7.0 t/ha的选择阈值。PC2BI在ED(-11.1%)和ER(-45.4%)方面表现出较大的增益。基于指数选择的杂交种始终优于商业杂交种对照。基于主成分的指数有潜力成为育种者最大化选择增益的有价值工具;然而,需要进行修改以纳入其他理想的农艺和适应性性状。