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Advanced Imaging for Quantitative Evaluation of Aphanomyces Root Rot Resistance in Lentil

机译:先进成像技术定量评价扁豆中的蚜虫的根腐病抗性

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摘要

Aphanomyces root rot (ARR) is a soil-borne disease that results in severe yield losses in lentil. The development of resistant cultivars is one of the key strategies to control this pathogen. However, the evaluation of disease severity is limited to visual scores that can be subjective. This study utilized image-based phenotyping approaches to evaluate Aphanomyces euteiches resistance in lentil genotypes in greenhouse (351 genotypes from lentil single plant/LSP derived collection and 191 genotypes from recombinant inbred lines/RIL using digital Red-Green-Blue/RGB and hyperspectral imaging) and field (173 RIL genotypes using unmanned aerial system-based multispectral imaging) conditions. Moderate to strong correlations were observed between RGB, multispectral, and hyperspectral derived features extracted from lentil shoots/roots and visual scores. In general, root features extracted from RGB imaging were found to be strongly associated with disease severity. With only three root traits, elastic net regression model was able to predict disease severity across and within multiple datasets (R2 = 0.45–0.73 and RMSE = 0.66–1.00). The selected features could represent visual disease scores. Moreover, we developed twelve normalized difference spectral indices (NDSIs) that were significantly correlated with disease scores: two NDSIs for lentil shoot section – computed from wavelengths of 1170, 1160, 1270, and 1280 nm (0.12 ≤ |r| ≤ 0.24, P < 0.05) and ten NDSIs for lentil root sections – computed from wavelengths in the range of 630–670, 700–840, and 1320–1530 nm (0.10 ≤ |r| ≤ 0.50, P < 0.05). Root-derived NDSIs were more accurate in predicting disease scores with an R2 of 0.54 (RMSE = 0.86), especially when the model was trained and tested on LSP accessions, compared to R2 of 0.25 (RMSE = 1.64) when LSP and RIL genotypes were used as train and test datasets, respectively. Importantly, NDSIs – computed from wavelengths of 700, 710, 730, and 790 nm – had strong positive correlations with disease scores (0.35 ≤r ≤ 0.50, P < 0.0001), which was confirmed in field phenotyping with similar correlations using vegetation index with red edge wavelength (normalized difference red edge, 0.36 ≤ |r| ≤ 0.57, P < 0.0001). The adopted image-based phenotyping approaches can help plant breeders to objectively quantify ARR resistance and reduce the subjectivity in selecting potential genotypes.
机译:失语症根腐病(ARR)是一种土壤传播的疾病,会导致扁豆严重减产。抗性品种的发展是控制这种病原体的关键策略之一。但是,疾病严重程度的评估仅限于可能是主观的视觉评分。这项研究利用基于图像的表型方法来评估温室小扁豆基因型的Aphanomyces euteiches抗性(使用数字红-绿-蓝/ RGB和高光谱成像技术,从小扁豆单株/ LSP衍生品收集的351个基因型和重组自交系/ RIL的191个基因型) )和野外(使用无人航空系统基于多光谱成像的173种RIL基因型)条件。从小扁豆的枝条/根部提取的RGB,多光谱和高光谱派生的特征之间以及视觉分数之间观察到了中度到强相关性。通常,发现从RGB成像中提取的根特征与疾病严重程度密切相关。仅具有三个根性状,弹性净回归模型能够在多个数据集内和多个数据集内预测疾病的严重程度(R 2 = 0.45–0.73,RMSE = 0.66–1.00)。所选特征可以代表视觉疾病评分。此外,我们开发了与疾病评分显着相关的十二种归一化差异光谱指数(NDSI):两个小扁豆枝条的NDSI –根据1170、1160、1270和1280 nm的波长计算(0.12≤| r |≤0.24,P <0.05)和10个NDSI(用于小扁豆根部)–由630–670、700–840和1320–1530 nm范围内的波长计算得出(0.10≤| r |≤0.50,P <0.05)。与R 2 <相比,根源NDSI在R 2 为0.54(RMSE = 0.86)时更准确地预测疾病评分。当LSP和RIL基因型分别用作训练和测试数据集时,/ sup>为0.25(RMSE = 1.64)。重要的是,NDSI(由700、710、730和790 nm的波长计算得出)与疾病得分具有很强的正相关性(0.35≤r≤0.50,P <0.0001),这在田地表型分析中得到了证实,使用植被指数与红边波长(归一化差红边,0.36≤| r |≤0.57,P <0.0001)。采用的基于图像的表型分析方法可以帮助植物育种者客观地量化ARR抗性并减少选择潜在基因型的主观性。

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