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利用植被指数和计算智能对玉米和大豆基因型进行高通量表型分析。

High-throughput phenotyping in maize and soybean genotypes using vegetation indices and computational intelligence.

作者信息

Teodoro Paulo E, Teodoro Larissa P R, Baio Fabio H R, Silva Junior Carlos A, Santana Dthenifer C, Bhering Leonardo L

机构信息

Federal University of Mato Grosso do Sul (UFMS), Chapadão do Sul, MS, Brazil.

Department of Geography, State University of Mato Grosso (UNEMAT), Sinop, MT, Brazil.

出版信息

Plant Methods. 2024 Oct 29;20(1):164. doi: 10.1186/s13007-024-01294-0.

DOI:10.1186/s13007-024-01294-0
PMID:39472979
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11520857/
Abstract

Building models that allow phenotypic evaluation of complex agronomic traits in crops of global economic interest, such as grain yield (GY) in soybean and maize, is essential for improving the efficiency of breeding programs. In this sense, understanding the relationships between agronomic variables and those obtained by high-throughput phenotyping (HTP) is crucial to this goal. Our hypothesis is that vegetation indices (VIs) obtained from HTP can be used to indirectly measure agronomic variables in annual crops. The objectives were to study the association between agronomic variables in maize and soybean genotypes with VIs obtained from remote sensing and to identify computational intelligence for predicting GY of these crops from VIs as input in the models. Comparative trials were carried out with 30 maize genotypes in the 2020/2021, 2021/2022 and 2022/2023 crop seasons, and with 32 soybean genotypes in the 2021/2022 and 2022/2023 seasons. In all trials, an overflight was performed at R1 stage using the UAV Sensefly eBee equipped with a multispectral sensor for acquiring canopy reflectance in the green (550 nm), red (660 nm), near-infrared (735 nm) and infrared (790 nm) wavelengths, which were used to calculate the VIs assessed. Agronomic traits evaluated in maize crop were: leaf nitrogen content, plant height, first ear insertion height, and GY, while agronomic traits evaluated in soybean were: days to maturity, plant height, first pod insertion height, and GY. The association between the variables were expressed by a correlation network, and to identify which indices are best associated with each of the traits evaluated, a path analysis was performed. Lastly, VIs with a cause-and-effect association on each variable in maize and soybean trials were adopted as independent explanatory variables in multiple regression model (MLR) and artificial neural network (ANN), in which the 10 best topologies able to simultaneously predict all the agronomic variables evaluated in each crop were selected. Our findings reveal that VIs can be used to predict agronomic variables in maize and soybean. Soil-adjusted Vegetation Index (SAVI) and Green Normalized Dif-ference Vegetation Index (GNDVI) have a positive and high direct effect on all agronomic variables evaluated in maize, while Normalized Difference Vegetation Index (NDVI) and Normalized Difference Red Edge Index (NDRE) have a positive cause-and-effect association with all soybean variables. ANN outperformed MLR, providing higher accuracy when predicting agronomic variables using the VIs select by path analysis as input. Future studies should evaluate other plant traits, such as physiological or nutritional ones, as well as different spectral variables from those evaluated here, with a view to contributing to an in-depth understanding about cause-and-effect relationships between plant traits and spectral variables. Such studies could contribute to more specific HTP at the level of traits of interest in each crop, helping to develop genetic materials that meet the future demands of population growth and climate change.

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8cc9/11520857/86b80010e134/13007_2024_1294_Fig4_HTML.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8cc9/11520857/e50468e982c2/13007_2024_1294_Fig1_HTML.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8cc9/11520857/506486c6d1bd/13007_2024_1294_Fig2_HTML.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8cc9/11520857/b15736cac769/13007_2024_1294_Fig3_HTML.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8cc9/11520857/86b80010e134/13007_2024_1294_Fig4_HTML.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8cc9/11520857/e50468e982c2/13007_2024_1294_Fig1_HTML.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8cc9/11520857/506486c6d1bd/13007_2024_1294_Fig2_HTML.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8cc9/11520857/b15736cac769/13007_2024_1294_Fig3_HTML.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8cc9/11520857/86b80010e134/13007_2024_1294_Fig4_HTML.jpg
摘要

构建能够对全球经济作物中复杂农艺性状进行表型评估的模型,如大豆和玉米的籽粒产量(GY),对于提高育种计划的效率至关重要。从这个意义上讲,了解农艺变量与高通量表型分析(HTP)所获得变量之间的关系对于实现这一目标至关重要。我们的假设是,通过HTP获得的植被指数(VIs)可用于间接测量一年生作物中的农艺变量。目标是研究玉米和大豆基因型中的农艺变量与从遥感获得的VIs之间的关联,并识别用于从VIs预测这些作物GY的计算智能,将其作为模型输入。在2020/2021、2021/2022和2022/2023作物季对30个玉米基因型进行了比较试验,在2021/2022和2022/2023季对32个大豆基因型进行了比较试验。在所有试验中,在R1阶段使用配备多光谱传感器的无人机Sensefly eBee进行飞越,以获取绿色(550 nm)、红色(660 nm)、近红外(735 nm)和红外(790 nm)波长的冠层反射率,用于计算所评估的VIs。在玉米作物中评估的农艺性状为:叶片氮含量、株高、第一穗着生高度和GY,而在大豆中评估的农艺性状为:成熟天数、株高、第一荚着生高度和GY。变量之间的关联通过相关网络表示,为确定哪些指数与每个评估性状关联最佳,进行了通径分析。最后,在玉米和大豆试验中对每个变量具有因果关联的VIs被用作多元回归模型(MLR)和人工神经网络(ANN)中的独立解释变量,其中选择了能够同时预测每种作物中所有评估农艺变量的10种最佳拓扑结构。我们的研究结果表明,VIs可用于预测玉米和大豆中的农艺变量。土壤调节植被指数(SAVI)和绿色归一化差异植被指数(GNDVI)对玉米中评估的所有农艺变量具有正向且高度的直接影响,而归一化差异植被指数(NDVI)和归一化差异红边指数(NDRE)与所有大豆变量具有正向因果关联。ANN的表现优于MLR,在使用通径分析选择的VIs作为输入预测农艺变量时提供了更高的准确性。未来的研究应评估其他植物性状,如生理或营养性状,以及与本文评估不同的光谱变量,以期有助于深入了解植物性状与光谱变量之间的因果关系。此类研究有助于在每种作物感兴趣的性状水平上进行更具体的HTP,有助于培育满足未来人口增长和气候变化需求的遗传材料。

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本文引用的文献

1
Application of UAV Multisensor Data and Ensemble Approach for High-Throughput Estimation of Maize Phenotyping Traits.无人机多传感器数据及集成方法在玉米表型性状高通量估计中的应用
Plant Phenomics. 2022 Aug 27;2022:9802585. doi: 10.34133/2022/9802585. eCollection 2022.
2
High-throughput phenotyping to dissect genotypic differences in safflower for drought tolerance.高通量表型分析解析红花耐旱性的基因型差异。
PLoS One. 2021 Jul 23;16(7):e0254908. doi: 10.1371/journal.pone.0254908. eCollection 2021.
3
Scaling up high-throughput phenotyping for abiotic stress selection in the field.
扩大田间非生物胁迫选择的高通量表型分析规模。
Theor Appl Genet. 2021 Jun;134(6):1845-1866. doi: 10.1007/s00122-021-03864-5. Epub 2021 Jun 2.
4
Harnessing High-throughput Phenotyping and Genotyping for Enhanced Drought Tolerance in Crop Plants.利用高通量表型和基因型分析提高作物的耐旱性。
J Biotechnol. 2020 Dec 20;324:248-260. doi: 10.1016/j.jbiotec.2020.11.010. Epub 2020 Nov 10.
5
Simultaneous phenotyping of leaf growth and chlorophyll fluorescence via GROWSCREEN FLUORO allows detection of stress tolerance in Arabidopsis thaliana and other rosette plants.通过GROWSCREEN FLUORO对叶片生长和叶绿素荧光进行同步表型分析,能够检测拟南芥和其他莲座状植物的胁迫耐受性。
Funct Plant Biol. 2009 Nov;36(11):902-914. doi: 10.1071/FP09095.
6
Quantitative and comparative analysis of whole-plant performance for functional physiological traits phenotyping: New tools to support pre-breeding and plant stress physiology studies.定量和比较分析全植物性能的功能生理性状表型:支持预繁殖和植物胁迫生理学研究的新工具。
Plant Sci. 2019 May;282:49-59. doi: 10.1016/j.plantsci.2018.05.008. Epub 2018 May 17.
7
A review of imaging techniques for plant phenotyping.植物表型成像技术综述。
Sensors (Basel). 2014 Oct 24;14(11):20078-111. doi: 10.3390/s141120078.
8
Drought tolerance through biotechnology: improving translation from the laboratory to farmers' fields.通过生物技术实现耐旱性:提高从实验室到农民田间的转化。
Curr Opin Biotechnol. 2012 Apr;23(2):243-50. doi: 10.1016/j.copbio.2011.11.003. Epub 2011 Dec 9.
9
Phenomics--technologies to relieve the phenotyping bottleneck.表型组学——缓解表型分析瓶颈的技术。
Trends Plant Sci. 2011 Dec;16(12):635-44. doi: 10.1016/j.tplants.2011.09.005. Epub 2011 Nov 9.
10
A growth phenotyping pipeline for Arabidopsis thaliana integrating image analysis and rosette area modeling for robust quantification of genotype effects.拟南芥生长表型分析流水线,整合图像分析和莲座叶面积建模,稳健量化基因型效应。
New Phytol. 2011 Aug;191(3):895-907. doi: 10.1111/j.1469-8137.2011.03756.x. Epub 2011 May 13.