利用叶光谱鉴定耐旱大豆品种

IF 6.3 Q1 AGRICULTURAL ENGINEERING
Ramon Gonçalves de Paula , Martha Freire da Silva , Cibele Amaral , Guilherme de Sousa Paula , Laércio Junio da Silva , Herika Paula Pessoa , Felipe Lopes da Silva
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引用次数: 0

摘要

了解栽培品种在非生物胁迫下的生理性状变化,对于改进表型和选育抗性作物品种至关重要。获取植物生理特征的传统方法成本高、耗时长,无法用于育种计划。光谱数据和统计方法(如偏最小二乘法回归)可用于快速收集和预测叶片级的多个生理参数,从而以高通量的方式对多个基因型进行表型。我们收集了 20 个大豆栽培品种的光谱数据,这些栽培品种分别种植在生殖期水分充足和干旱条件下。在干旱发生 20 天后,我们测量了叶片色素含量(叶绿素 a、b 和类胡萝卜素)、比叶面积、电子转移率和光合有效辐射。干旱发生 28 天后,我们测量了叶片色素含量、比叶面积、相对含水量和叶片温度。偏最小二乘法回归模型准确预测了叶色素含量、比叶面积和叶温(交叉验证 R2 为 0.56 至 0.84)。使用 54 个波长进行的判别分析能够选出在所有评估生理性状方面表现最佳的栽培品种。我们的研究表明,光谱法作为一种可行、非破坏性和准确的方法,在估计生理性状和筛选优良基因型方面具有巨大潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging leaf spectroscopy to identify drought-tolerant soybean cultivars
Understanding cultivars' physiological traits variations under abiotic stresses is critical to improve phenotyping and selections of resistant crop varieties. Traditional methods of accessing physiological traits in plants are costly and time consuming, which prevents their use in breeding programs. Spectroscopy data and statistical approaches such as partial least square regression could be applied to rapidly collect and predict several physiological parameters at leaf-level, allowing phenotyping several genotypes in a high-throughput manner. We collected spectroscopy data of twenty soybean cultivars planted under well-watered and drought conditions during the reproductive phase. At 20 days after drought was imposed, we measured leaf pigments content (chlorophyll a and b, and carotenoids), specific leaf area, electrons transfer rate, and photosynthetic active radiation. At 28 days after drought imposition, we measured leaf pigments content, specific leaf area, relative water content, and leaf temperature. Partial least square regression models accurately predicted leaf pigments content, specific leaf area, and leaf temperature (cross-validation R2 ranging from 0.56 to 0.84). Discriminant analysis using 54 wavelengths was able to select the best-performance cultivars regarding all evaluated physiological traits. We showed the great potential of using spectroscopy as a feasible, non-destructive, and accurate method to estimate physiological traits and screening of superior genotypes.
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