Pour-Aboughadareh Alireza, Jamshidi Bita, Jadidi Omid, Bocianowski Jan, Niemann Janetta
Seed and Plant Improvement Institute, Agricultural Research, Education and Extension Organization (AREEO), Karaj, 3183964653, Iran.
Department of Food Security and Public Health, Khabat Technical Institute, Erbil Polytechnic University, Erbil, 44001, Iraq.
J Appl Genet. 2025 Aug 7. doi: 10.1007/s13353-025-00998-w.
The analysis of genotype-by-environment interaction (GEI) in multi-environmental trials (METs) represents a crucial component of breeding programs prior to the release of new commercial cultivars tailored for specific regions or diverse environmental conditions. Moreover, emphasizing individual traits during selection can yield misleading conclusions. Consequently, the implementation of robust selection models is essential for identifying superior genotypes based on multiple traits. The present dataset demonstrates the utility of the multi-trait stability index (MTSI) in identifying high-yielding and stable barley genotypes across ten diverse environments. The evaluated phenological and agronomic traits included days to heading, days to physiological maturity, grain-filling period, plant height, thousand-kernel weight, and grain yield. A combined analysis of variance (ANOVA) revealed significant effects attributable to environments (E), genotypes (G), and their interaction (GEI) across all assessed traits. Correlation analysis further indicated positive associations between all measured traits and grain yield. In the MTSI model, three first factors accounted for 75% of the total phenotypic variation observed across the test environments. The highest selection gain percentages were recorded for thousand-kernel weight and grain yield. Among the genotypes evaluated, G3, G10, and G14, characterized by the lowest values of the MTSI index, were identified as superior in terms of grain yield, stability, and desirable agronomic attributes. In conclusion, the findings highlight the efficacy of the MTSI in reliably identifying superior genotypes in METs. The results demonstrate that the MTSI index not only enhances the efficiency of the selection process but also improves the accuracy of genotype evaluation and ranking across heterogeneous environmental conditions. This underscores the potential of the MTSI index to support informed breeding decisions, ultimately facilitating the development of high-performing plant varieties that exhibit both yield stability and adaptability across diverse environments.
在多环境试验(METs)中,对基因型与环境互作(GEI)的分析是培育适合特定区域或不同环境条件的新商业品种之前育种计划的关键组成部分。此外,在选择过程中强调个别性状可能会得出误导性结论。因此,实施稳健的选择模型对于基于多个性状识别优良基因型至关重要。本数据集展示了多性状稳定性指数(MTSI)在识别十个不同环境中高产且稳定的大麦基因型方面的效用。评估的物候和农艺性状包括抽穗天数、生理成熟天数、灌浆期、株高、千粒重和籽粒产量。方差组合分析(ANOVA)显示,在所有评估性状中,环境(E)、基因型(G)及其互作(GEI)均有显著影响。相关性分析进一步表明,所有测量性状与籽粒产量之间存在正相关。在MTSI模型中,前三个主因子占测试环境中观察到的总表型变异的75%。千粒重和籽粒产量的选择增益百分比最高。在评估的基因型中,MTSI指数值最低的G3、G10和G14在籽粒产量、稳定性和理想农艺性状方面表现优异。总之,研究结果突出了MTSI在可靠识别METs中优良基因型方面的功效。结果表明,MTSI指数不仅提高了选择过程的效率,还提高了基因型评估的准确性以及在异质环境条件下的排名。这强调了MTSI指数支持明智育种决策的潜力,最终促进开发在不同环境中兼具产量稳定性和适应性的高性能植物品种。