Phenotyping for heat stress tolerance in wheat population using physiological traits, multispectral imagery, and machine learning approaches

IF 6.8 Q1 PLANT SCIENCES
Neelesh Sharma , Manu Kumar , Hans D Daetwyler , Richard M Trethowan , Matthew Hayden , Surya Kant
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引用次数: 0

Abstract

Heat stress is a critical environmental factor that adversely affects crop productivity. With the increasing frequency and intensity of heat waves and extreme weather events, heat stress has become a challenge for wheat production, which is one of the most important cereal crops. To sustain wheat production under heat stress conditions, there is an urgent need to develop high-yielding, heat-tolerant wheat varieties. This requires characterizing the genetic and physiological mechanisms underlying heat tolerance, as well as developing efficient phenotyping methods to evaluate a large number of wheat genotypes under heat stress field conditions. In this study, we used 184 wheat genotypes that were sown at two times of sowing (TOS), i.e., optimal sowing as TOS1 and late sowing as TOS2, with higher temperatures faced by plants during heading and grain filling in TOS2. We used a combination of physiological traits, multispectral vegetative indices (VIs) derived from aerial imagery and machine learning approaches to effectively differentiate wheat genotypes for heat tolerance and susceptibility. The response of wheat genotypes to heat stress was delineated as being susceptible, moderate, and tolerant using the stress susceptibility index, percentage loss, and tolerance index. Different VIs varied significantly between the two TOS. The decline in VIs during anthesis and post-anthesis was minimal in heat tolerant genotypes compared to susceptible genotypes under TOS2. We classified the stress severity and yield using VIs with a machine learning approach. A model was created with a random forest classifier (RFC) trained to categorize genotypes based on the stress susceptibility index using Python libraries. The PCA was utilized to reduce dimensionality, and five principal components explaining 99 % of the variability were employed as input for developing the model. The RFC model achieved an accuracy of 64 % and excelled in recognizing crops under extreme stress, with a recall rate of 0.87 and an F1 score of 0.77 for the susceptible class. The model had high precision metrics, with values of 0.69, 0.42, and 0.80 for the susceptible, moderate, and tolerant classes, respectively. Our results suggest that multispectral-driven phenotypic traits can be used by breeders to select and develop wheat varieties tolerant to heat stress.

利用生理特征、多光谱图像和机器学习方法对小麦群体的热胁迫耐受性进行表型分析
热胁迫是对作物生产力产生不利影响的一个关键环境因素。随着热浪和极端天气事件的频率和强度不断增加,热胁迫已成为小麦生产面临的一项挑战,而小麦是最重要的谷类作物之一。为了在热胁迫条件下维持小麦生产,迫切需要培育高产、耐热的小麦品种。这就需要鉴定耐热性的遗传和生理机制,并开发高效的表型鉴定方法,以评估热胁迫田间条件下的大量小麦基因型。在这项研究中,我们使用了 184 个小麦基因型,这些基因型在两个播种时间(TOS)播种,即最佳播种时间为 TOS1,晚播时间为 TOS2,在 TOS2 中,植物在打顶和籽粒灌浆期间面临更高的温度。我们结合使用了生理性状、从航空图像中获得的多光谱植被指数(VIs)和机器学习方法,以有效区分小麦基因型的耐热性和感热性。利用胁迫易感性指数、损失百分比和耐受性指数将小麦基因型对热胁迫的反应划分为易感、中等和耐受。不同的VIs在两个TOS之间差异显著。与 TOS2 下的易感基因型相比,耐热基因型在花期和花后的 VIs 下降幅度最小。我们采用机器学习方法,利用VIs对胁迫严重程度和产量进行了分类。我们使用 Python 库创建了一个随机森林分类器 (RFC) 模型,根据胁迫敏感性指数对基因型进行分类。利用 PCA 来降低维度,并将解释了 99% 变异性的五个主成分作为建立模型的输入。RFC 模型的准确率达到 64%,在识别极端胁迫下的作物方面表现出色,易感类别的召回率为 0.87,F1 得分为 0.77。该模型的精确度指标较高,易感、中等和耐受类别的精确度分别为 0.69、0.42 和 0.80。我们的研究结果表明,育种者可以利用多光谱驱动的表型性状来选育耐热胁迫的小麦品种。
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来源期刊
Plant Stress
Plant Stress PLANT SCIENCES-
CiteScore
5.20
自引率
8.00%
发文量
76
审稿时长
63 days
期刊介绍: The journal Plant Stress deals with plant (or other photoautotrophs, such as algae, cyanobacteria and lichens) responses to abiotic and biotic stress factors that can result in limited growth and productivity. Such responses can be analyzed and described at a physiological, biochemical and molecular level. Experimental approaches/technologies aiming to improve growth and productivity with a potential for downstream validation under stress conditions will also be considered. Both fundamental and applied research manuscripts are welcome, provided that clear mechanistic hypotheses are made and descriptive approaches are avoided. In addition, high-quality review articles will also be considered, provided they follow a critical approach and stimulate thought for future research avenues. Plant Stress welcomes high-quality manuscripts related (but not limited) to interactions between plants and: Lack of water (drought) and excess (flooding), Salinity stress, Elevated temperature and/or low temperature (chilling and freezing), Hypoxia and/or anoxia, Mineral nutrient excess and/or deficiency, Heavy metals and/or metalloids, Plant priming (chemical, biological, physiological, nanomaterial, biostimulant) approaches for improved stress protection, Viral, phytoplasma, bacterial and fungal plant-pathogen interactions. The journal welcomes basic and applied research articles, as well as review articles and short communications. All submitted manuscripts will be subject to a thorough peer-reviewing process.
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