Syngenta Seeds, Lucas do Rio Verde, MT, 78455-000, Brazil.
The Context Network, Sorriso, MT, 78603-237, Brazil.
Sci Rep. 2024 Jun 6;14(1):13076. doi: 10.1038/s41598-024-63809-y.
Yield multi-location trials associated to geostatistical techniques with environmental covariables can provide a better understanding of G x E interactions and, consequently, adaptation limits of soybean cultivars. Thus, the main objective of this study is understanding the environmental covariables effects on soybean adaptation, as well as predicting the adaptation of soybean under environmental variations and then recommend each soybean cultivar to favorable environments aiming maximize the average yield. The trials were carried out in randomized block design (RBD) with three replicates over three years, in 28 locations. Thirty-two genotypes (commercial and pre-commercial) representing different maturity groups (7.5-8.5) were evaluated in each trial were covering the Edaphoclimatic Region (REC) 401, 402 and 403. The covariables adopted as environmental descriptors were accumulated rainfall, minimum temperature, mean temperature, maximum temperature, photoperiod, relative humidity, soil clay content, soil water avaibility and altitude. After fitting means through Mixed Linear Model, the Regression-Kriging procedure was applied to spacialize the grain yield using environmental covariables as predictors. The covariables explained 32.54% of the GxE interaction, being the soil water avaibility the most important to the adaptation of soybean cultivars, contributing with 7.80%. Yield maps of each cultivar were obtained and, hence, the yield maximization map based on cultivar recommendation was elaborated.
多点试验与环境协变量相结合的产量研究,可以更好地了解基因-环境互作,并因此了解大豆品种的适应极限。因此,本研究的主要目的是了解环境协变量对大豆适应的影响,预测大豆在环境变化下的适应情况,然后为每个大豆品种推荐适宜的环境,以最大限度地提高平均产量。试验采用随机区组设计(RBD),三年共 28 个地点,每个试验重复三次。32 个基因型(商业和预商业)代表不同的成熟组(7.5-8.5),覆盖了 401、402 和 403 个土壤气候区(REC)。采用累积降雨量、最低温度、平均温度、最高温度、光照时间、相对湿度、土壤粘粒含量、土壤水分可用性和海拔作为环境描述符。通过混合线性模型拟合平均值后,应用回归克里金程序,利用环境协变量作为预测因子对籽粒产量进行空间化。协变量解释了 32.54%的 GxE 互作,其中土壤水分可用性对大豆品种的适应最重要,贡献了 7.80%。获得了每个品种的产量图,并基于品种推荐制定了产量最大化图。