High-dimensional multi-omics measured in controlled conditions are useful for maize platform and field trait predictions

被引:1
作者
Ali, Baber [1 ]
Huguenin-Bizot, Bertrand [2 ]
Laurent, Maxime [3 ]
Chaumont, Francois [3 ]
Maistriaux, Laurie C. [3 ]
Nicolas, Stephane [1 ]
Duborjal, Herve [4 ]
Welcker, Claude [5 ]
Tardieu, Francois [5 ]
Mary-Huard, Tristan [1 ]
Moreau, Laurence [1 ]
Charcosset, Alain [1 ]
Runcie, Daniel [6 ]
Rincent, Renaud [1 ]
机构
[1] Univ Paris Saclay, INRAE, CNRS, AgroParisTech,GQE Le Moulon, F-91190 Gif Sur Yvette, France
[2] ENS Lyon, Lab Reprod & Dev Plantes, CNRS, 46 Allee Italie, F-69364 Lyon, France
[3] UCLouvain, Louvain Inst Biomol Sci & Technol, Louvain La Neuve, Belgium
[4] Limagrain, Res Ctr, Limagrain Fields Seeds, F-63720 Chappes, France
[5] Univ Montpellier, LEPSE, INRAE, Montpellier, France
[6] Univ Calif Davis, Dept Plant Sci, Davis, CA USA
基金
美国农业部; 美国食品与农业研究所;
关键词
DIFFERENTIAL EXPRESSION ANALYSIS; GENOMIC SELECTION; HYBRID PERFORMANCE; BREEDING VALUES; MODEL; GENOTYPE; GENETICS; DROUGHT;
D O I
10.1007/s00122-024-04679-w
中图分类号
S3 [农学(农艺学)];
学科分类号
0901 ;
摘要
Key messageTranscriptomics and proteomics information collected on a platform can predict additive and non-additive effects for platform traits and additive effects for field traits.Abstract The effects of climate change in the form of drought, heat stress, and irregular seasonal changes threaten global crop production. The ability of multi-omics data, such as transcripts and proteins, to reflect a plant's response to such climatic factors can be capitalized in prediction models to maximize crop improvement. Implementing multi-omics characterization in field evaluations is challenging due to high costs. It is, however, possible to do it on reference genotypes in controlled conditions. Using omics measured on a platform, we tested different multi-omics-based prediction approaches, using a high dimensional linear mixed model (MegaLMM) to predict genotypes for platform traits and agronomic field traits in a panel of 244 maize hybrids. We considered two prediction scenarios: in the first one, new hybrids are predicted (CV-NH), and in the second one, partially observed hybrids are predicted (CV-POH). For both scenarios, all hybrids were characterized for omics on the platform. We observed that omics can predict both additive and non-additive genetic effects for the platform traits, resulting in much higher predictive abilities than GBLUP. It highlights their efficiency in capturing regulatory processes in relation to growth conditions. For the field traits, we observed that the additive components of omics only slightly improved predictive abilities for predicting new hybrids (CV-NH, model MegaGAO) and for predicting partially observed hybrids (CV-POH, model GAOxW-BLUP) in comparison to GBLUP. We conclude that measuring the omics in the fields would be of considerable interest in predicting productivity if the costs of omics drop significantly.
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页数:18
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  • [21] Multi-omics prediction of oat agronomic and seed nutritional traits across environments and in distantly related populations
    Hu, Haixiao
    Campbell, Malachy T.
    Yeats, Trevor H.
    Zheng, Xuying
    Runcie, Daniel E.
    Covarrubias-Pazaran, Giovanny
    Broeckling, Corey
    Yao, Linxing
    Caffe-Treml, Melanie
    Gutierrez, Luci'a
    Smith, Kevin P.
    Tanaka, James
    Hoekenga, Owen A.
    Sorrells, Mark E.
    Gore, Michael A.
    Jannink, Jean-Luc
    [J]. THEORETICAL AND APPLIED GENETICS, 2021, 134 (12) : 4043 - 4054
  • [22] Heritable temporal gene expression patterns correlate with metabolomic seed content in developing hexaploid oat seed
    Hu, Haixiao
    Gutierrez-Gonzalez, Juan J.
    Liu, Xinfang
    Yeats, Trevor H.
    Garvin, David F.
    Hoekenga, Owen A.
    Sorrells, Mark E.
    Gore, Michael A.
    Jannink, Jean-Luc
    [J]. PLANT BIOTECHNOLOGY JOURNAL, 2020, 18 (05) : 1211 - 1222
  • [23] A reaction norm model for genomic selection using high-dimensional genomic and environmental data
    Jarquin, Diego
    Crossa, Jose
    Lacaze, Xavier
    Du Cheyron, Philippe
    Daucourt, Joelle
    Lorgeou, Josiane
    Piraux, Francis
    Guerreiro, Laurent
    Perez, Paulino
    Calus, Mario
    Burgueno, Juan
    de los Campos, Gustavo
    [J]. THEORETICAL AND APPLIED GENETICS, 2014, 127 (03) : 595 - 607
  • [24] Multiple-Trait Genomic Selection Methods Increase Genetic Value Prediction Accuracy
    Jia, Yi
    Jannink, Jean-Luc
    [J]. GENETICS, 2012, 192 (04) : 1513 - +
  • [25] Identification of major QTLs for drought tolerance in soybean, together with a novel candidate gene, GmUAA6
    Jiang, Wei
    Liu, Yandang
    Zhang, Chi
    Pan, Lang
    Wang, Wei
    Zhao, Chunzhao
    Zhao, Tuanjie
    Li, Yan
    [J]. JOURNAL OF EXPERIMENTAL BOTANY, 2024, 75 (07) : 1852 - 1871
  • [26] Variance component model to account for sample structure in genome-wide association studies
    Kang, Hyun Min
    Sul, Jae Hoon
    Service, Susan K.
    Zaitlen, Noah A.
    Kong, Sit-yee
    Freimer, Nelson B.
    Sabatti, Chiara
    Eskin, Eleazar
    [J]. NATURE GENETICS, 2010, 42 (04) : 348 - U110
  • [27] Heat Stress Tolerance in Rice (Oryza sativa L.): Identification of Quantitative Trait Loci and Candidate Genes for Seedling Growth Under Heat Stress
    Kilasi, Newton Lwiyiso
    Singh, Jugpreet
    Vallejos, Carlos Eduardo
    Ye, Changrong
    Jagadish, S. V. Krishna
    Kusolwa, Paul
    Rathinasabapathi, Bala
    [J]. FRONTIERS IN PLANT SCIENCE, 2018, 9
  • [28] MTG2: an efficient algorithm for multivariate linear mixed model analysis based on genomic information
    Lee, S. H.
    van der Werf, J. H. J.
    [J]. BIOINFORMATICS, 2016, 32 (09) : 1420 - 1422
  • [29] Integrating Gene Expression Data Into Genomic Prediction
    Li, Zhengcao
    Gao, Ning
    Martini, Johannes W. R.
    Simianer, Henner
    [J]. FRONTIERS IN GENETICS, 2019, 10
  • [30] Exploiting biological priors and sequence variants enhances QTL discovery and genomic prediction of complex traits
    MacLeod, I. M.
    Bowman, P. J.
    Vander Jagt, C. J.
    Haile-Mariam, M.
    Kemper, K. E.
    Chamberlain, A. J.
    Schrooten, C.
    Hayes, B. J.
    Goddard, M. E.
    [J]. BMC GENOMICS, 2016, 17