Reaction norm for genomic prediction of plant growth: modeling drought stress response in soybean

被引:1
|
作者
Toda, Yusuke [1 ]
Sasaki, Goshi [1 ]
Ohmori, Yoshihiro [1 ]
Yamasaki, Yuji [1 ,2 ]
Takahashi, Hirokazu [3 ]
Takanashi, Hideki [1 ]
Tsuda, Mai [4 ]
Kajiya-Kanegae, Hiromi [5 ]
Tsujimoto, Hisashi [2 ]
Kaga, Akito [6 ]
Hirai, Masami [7 ]
Nakazono, Mikio [3 ]
Fujiwara, Toru [1 ]
Iwata, Hiroyoshi [1 ]
机构
[1] Univ Tokyo, Grad Sch Agr & Life Sci, Tokyo, Japan
[2] Tottori Univ, Arid Land Res Ctr, Tottori, Japan
[3] Nagoya Univ, Grad Sch Bioagr Sci, Nagoya, Japan
[4] Univ Tsukuba, Tsukuba Plant Innovat Res Ctr T PIRC, Tsukuba, Japan
[5] NARO, Res Ctr Agr Informat Technol, Tokyo, Japan
[6] NARO, Inst Crop Sci, Tsukuba, Japan
[7] RIKEN Ctr Sustainable Resource Sci, Tsukuba, Japan
基金
日本科学技术振兴机构;
关键词
RANDOM REGRESSION-MODELS; ENVIRONMENT INTERACTION; SELECTION; GENOTYPE; YIELD; COWS;
D O I
10.1007/s00122-024-04565-5
中图分类号
S3 [农学(农艺学)];
学科分类号
0901 ;
摘要
Key messageWe proposed models to predict the effects of genomic and environmental factors on daily soybean growth and applied them to soybean growth data obtained with unmanned aerial vehicles.AbstractAdvances in high-throughput phenotyping technology have made it possible to obtain time-series plant growth data in field trials, enabling genotype-by-environment interaction (G x E) modeling of plant growth. Although the reaction norm is an effective method for quantitatively evaluating G x E and has been implemented in genomic prediction models, no reaction norm models have been applied to plant growth data. Here, we propose a novel reaction norm model for plant growth using spline and random forest models, in which daily growth is explained by environmental factors one day prior. The proposed model was applied to soybean canopy area and height to evaluate the influence of drought stress levels. Changes in the canopy area and height of 198 cultivars were measured by remote sensing using unmanned aerial vehicles. Multiple drought stress levels were set as treatments, and their time-series soil moisture was measured. The models were evaluated using three cross-validation schemes. Although accuracy of the proposed models did not surpass that of single-trait genomic prediction, the results suggest that our model can capture G x E, especially the latter growth period for the random forest model. Also, significant variations in the G x E of the canopy height during the early growth period were visualized using the spline model. This result indicates the effectiveness of the proposed models on plant growth data and the possibility of revealing G x E in various growth stages in plant breeding by applying statistical or machine learning models to time-series phenotype data.
引用
收藏
页数:14
相关论文
共 50 条
  • [1] Reaction norm for genomic prediction of plant growth: modeling drought stress response in soybean
    Yusuke Toda
    Goshi Sasaki
    Yoshihiro Ohmori
    Yuji Yamasaki
    Hirokazu Takahashi
    Hideki Takanashi
    Mai Tsuda
    Hiromi Kajiya-Kanegae
    Hisashi Tsujimoto
    Akito Kaga
    Masami Hirai
    Mikio Nakazono
    Toru Fujiwara
    Hiroyoshi Iwata
    Theoretical and Applied Genetics, 2024, 137
  • [2] Genomic insights into plant growth promoting rhizobia capable of enhancing soybean germination under drought stress
    Nicholas O. Igiehon
    Olubukola O. Babalola
    Bukola R. Aremu
    BMC Microbiology, 19
  • [3] Genomic insights into plant growth promoting rhizobia capable of enhancing soybean germination under drought stress
    Igiehon, Nicholas O.
    Babalola, Olubukola O.
    Aremu, Bukola R.
    BMC MICROBIOLOGY, 2019, 19 (1)
  • [4] The effect of drought stress on nodulation, plant growth, and nitrogen fixation in soybean during early plant growth
    Lumactud, Rhea Amor
    Dollete, Danielito
    Liyanage, Dilrukshi Kombala
    Szczyglowski, Krzysztof
    Hill, Brett
    Thilakarathna, Malinda S. S.
    JOURNAL OF AGRONOMY AND CROP SCIENCE, 2023, 209 (03) : 345 - 354
  • [5] Integrating a growth degree-days based reaction norm methodology and multi-trait modeling for genomic prediction in wheat
    Raffo, Miguel Angel
    Sarup, Pernille
    Andersen, Jeppe Reitan
    Orabi, Jihad
    Jahoor, Ahmed
    Jensen, Just
    FRONTIERS IN PLANT SCIENCE, 2022, 13
  • [6] Plant-associated bacteria mitigate drought stress in soybean
    Martins, Samuel Julio
    Rocha, Geisiane Alves
    de Melo, Hyrandir Cabral
    Georg, Raphaela de Castro
    Ulhoa, Cirano Jose
    Dianese, Erico de Campos
    Oshiquiri, Leticia Harumi
    da Cunha, Marcos Gomes
    da Rocha, Mara Rubia
    de Araujo, Leila Garces
    Vaz, Karina Santana
    Dunlap, Christopher A.
    ENVIRONMENTAL SCIENCE AND POLLUTION RESEARCH, 2018, 25 (14) : 13676 - 13686
  • [7] Plant-associated bacteria mitigate drought stress in soybean
    Samuel Julio Martins
    Geisiane Alves Rocha
    Hyrandir Cabral de Melo
    Raphaela de Castro Georg
    Cirano José Ulhôa
    Érico de Campos Dianese
    Leticia Harumi Oshiquiri
    Marcos Gomes da Cunha
    Mara Rúbia da Rocha
    Leila Garcês de Araújo
    Karina Santana Vaz
    Christopher A. Dunlap
    Environmental Science and Pollution Research, 2018, 25 : 13676 - 13686
  • [8] Identification of soybean plant characteristics that indicate the timing of drought stress
    Desclaux, D
    Huynh, TT
    Roumet, P
    CROP SCIENCE, 2000, 40 (03) : 716 - 722
  • [9] Lettuce reaction to drought stress: automated highthroughput phenotyping of plant growth and photosynthetic performance
    Sorrentino, M.
    Colla, G.
    Rouphael, Y.
    Panzarova, K.
    Trtilek, M.
    XI INTERNATIONAL SYMPOSIUM ON PROTECTED CULTIVATION IN MILD WINTER CLIMATES AND I INTERNATIONAL SYMPOSIUM ON NETTINGS AND SCREENS IN HORTICULTURE, 2020, 1268 : 133 - 141
  • [10] Modeling Plant Response to Drought and Salt Stress: Reformulation of the Root-Sink Term
    Dudley, L. M.
    Shani, U.
    VADOSE ZONE JOURNAL, 2003, 2 (04): : 751 - 758