Singamsetti Ashok, Zaidi Pervez H, Seetharam Kaliyamoorthy, Vinayan Madhumal Thayil, Olivoto Tiago, Mahato Anima, Madankar Kartik, Kumar Munnesh, Shikha Kumari
Department of Genetics and Plant Breeding, Institute of Agricultural Sciences, Banaras Hindu University, Varanasi, India.
Asia Regional Maize Programme, The International Maize and Wheat Improvement Center (CIMMYT)-Hyderabad, Patancheru, India.
Front Plant Sci. 2023 Mar 3;14:1147424. doi: 10.3389/fpls.2023.1147424. eCollection 2023.
Unpredictable weather vagaries in the Asian tropics often increase the risk of a series of abiotic stresses in maize-growing areas, hindering the efforts to reach the projected demands. Breeding climate-resilient maize hybrids with a cross-tolerance to drought and waterlogging is necessary yet challenging because of the presence of genotype-by-environment interaction (GEI) and the lack of an efficient multi-trait-based selection technique. The present study aimed at estimating the variance components, genetic parameters, inter-trait relations, and expected selection gains (SGs) across the soil moisture regimes through genotype selection obtained based on the novel multi-trait genotype-ideotype distance index (MGIDI) for a set of 75 tropical pre-released maize hybrids. Twelve traits including grain yield and other secondary characteristics for experimental maize hybrids were studied at two locations. Positive and negative SGs were estimated across moisture regimes, including drought, waterlogging, and optimal moisture conditions. Hybrid, moisture condition, and hybrid-by-moisture condition interaction effects were significant ( ≤ 0.001) for most of the traits studied. Eleven genotypes were selected in each moisture condition through MGIDI by assuming 15% selection intensity where two hybrids, viz., ZH161289 and ZH161303, were found to be common across all the moisture regimes, indicating their moisture stress resilience, a unique potential for broader adaptation in rainfed stress-vulnerable ecologies. The selected hybrids showed desired genetic gains such as positive gains for grain yield (almost 11% in optimal and drought; 22% in waterlogging) and negative gains in flowering traits. The view on strengths and weaknesses as depicted by the MGIDI assists the breeders to develop maize hybrids with desired traits, such as grain yield and other yield contributors under specific stress conditions. The MGIDI would be a robust and easy-to-handle multi-trait selection process under various test environments with minimal multicollinearity issues. It was found to be a powerful tool in developing better selection strategies and optimizing the breeding scheme, thus contributing to the development of climate-resilient maize hybrids.
亚洲热带地区不可预测的天气变化常常增加玉米种植区一系列非生物胁迫的风险,阻碍了实现预计需求的努力。培育对干旱和涝害具有交叉耐受性的气候适应型玉米杂交种是必要的,但由于存在基因型与环境互作(GEI)且缺乏基于多性状的高效选择技术,这一过程具有挑战性。本研究旨在通过基于新型多性状基因型-理想型距离指数(MGIDI)对75个热带预发布玉米杂交种进行基因型选择,估计不同土壤水分条件下的方差分量、遗传参数、性状间关系以及预期选择增益(SGs)。在两个地点研究了包括籽粒产量和实验玉米杂交种其他次要特征在内的12个性状。在干旱、涝害和最佳水分条件等不同水分条件下估计了正向和负向SGs。对于大多数研究性状,杂交种、水分条件以及杂交种与水分条件的交互作用效应均显著(≤0.001)。通过MGIDI在每种水分条件下选择了11个基因型,假设选择强度为15%,其中两个杂交种ZH161289和ZH161303在所有水分条件下均被选中,表明它们具有水分胁迫恢复力,在雨养胁迫脆弱生态环境中具有更广泛适应的独特潜力。所选杂交种表现出理想的遗传增益,如籽粒产量正向增益(在最佳和干旱条件下近11%;在涝害条件下22%)以及开花性状负向增益。MGIDI所呈现的优缺点观点有助于育种者培育具有所需性状的玉米杂交种,如在特定胁迫条件下的籽粒产量和其他产量构成因素。MGIDI将是一个强大且易于操作的多性状选择过程,在各种测试环境中具有最小的多重共线性问题。它被发现是制定更好的选择策略和优化育种方案的有力工具,从而有助于培育气候适应型玉米杂交种。