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Combining Crop Growth Modeling and Statistical Genetic Modeling to Evaluate Phenotyping Strategies
- Source :
- Frontiers in Plant Science, Vol 10 (2019), Frontiers in Plant Science, Frontiers in Plant Science 10 (2019), Frontiers in Plant Science, 10
- Publication Year :
- 2019
- Publisher :
- Frontiers Media S.A., 2019.
-
Abstract
- Genomic prediction of complex traits, say yield, benefits from including information on correlated component traits. Statistical criteria to decide which yield components to consider in the prediction model include the heritability of the component traits and their genetic correlation with yield. Not all component traits are easy to measure. Therefore, it may be attractive to include proxies to yield components, where these proxies are measured in (high-throughput) phenotyping platforms during the growing season. Using the Agricultural Production Systems Simulator (APSIM)-wheat cropping systems model, we simulated phenotypes for a wheat diversity panel segregating for a set of physiological parameters regulating phenology, biomass partitioning, and the ability to capture environmental resources. The distribution of the additive quantitative trait locus effects regulating the APSIM physiological parameters approximated the same distribution of quantitative trait locus effects on real phenotypic data for yield and heading date. We use the crop growth model APSIM-wheat to simulate phenotypes in three Australian environments with contrasting water deficit patterns. The APSIM output contained the dynamics of biomass and canopy cover, plus yield at the end of the growing season. Each water deficit pattern triggered different adaptive mechanisms and the impact of component traits differed between drought scenarios. We evaluated multiple phenotyping schedules by adding plot and measurement error to the dynamics of biomass and canopy cover. We used these trait dynamics to fit parametric models and P-splines to extract parameters with a larger heritability than the phenotypes at individual time points. We used those parameters in multi-trait prediction models for final yield. The combined use of crop growth models and multi-trait genomic prediction models provides a procedure to assess the efficiency of phenotyping strategies and compare methods to model trait dynamics. It also allows us to quantify the impact of yield components on yield prediction accuracy even in different environment types. In scenarios with mild or no water stress, yield prediction accuracy benefitted from including biomass and green canopy cover parameters. The advantage of the multi-trait model was smaller for the early-drought scenario, due to the reduced correlation between the secondary and the target trait. Therefore, multi-trait genomic prediction models for yield require scenario-specific correlated traits.
- Subjects :
- 0106 biological sciences
0301 basic medicine
Yield (finance)
Plant Science
Quantitative trait locus
lcsh:Plant culture
Wiskundige en Statistische Methoden - Biometris
01 natural sciences
Genetic correlation
crop growth model
03 medical and health sciences
wheat
Statistics
P-spline
dynamic traits
lcsh:SB1-1110
Mathematical and Statistical Methods - Biometris
genomic prediction
Mathematics
Original Research
2. Zero hunger
APSIM model
15. Life on land
Heritability
genotype to phenotype
PE&RC
Biometris
030104 developmental biology
Parametric model
Trait
Biomass partitioning
Predictive modelling
trait hierarchy
010606 plant biology & botany
Subjects
Details
- Language :
- English
- ISSN :
- 1664462X
- Volume :
- 10
- Database :
- OpenAIRE
- Journal :
- Frontiers in Plant Science
- Accession number :
- edsair.doi.dedup.....911de5439c3b1fa07fc8c2330f93ffdc
- Full Text :
- https://doi.org/10.3389/fpls.2019.01491/full