将现实的生理性状纳入作物生长模型以支持遗传改良

IF 2.6 Q1 AGRONOMY in silico Plants Pub Date : 2021-01-01 DOI:10.1093/INSILICOPLANTS/DIAB002
K. Boote, J. Jones, G. Hoogenboom
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引用次数: 16

摘要

硅植物建模是使用动态作物模拟模型来评估假设的植物性状(物候、过程和植物结构),这些性状将在确定的目标环境和作物管理(天气、土壤、有限资源)下提高作物生长和产量。为了对遗传改良有用,作物模型必须真实地模拟作物对环境的生理反应原理以及遗传变异影响作物动态碳、水和营养过程的原理。理想情况下,作物模型应该有足够的生理过程细节,以纳入这些过程的遗传效应,从而允许对不同环境下的响应结果进行稳健的模拟。产量、生物量、收获指数、开花日期和成熟度是许多基因和过程相互作用的结果,而不是单一遗传直接驱动的主要性状。本文将以几种豆科谷物为例,使用cms - cropgro模型来说明基因型特异性参数的单一和多种组合所模拟的紧急结果,并通过不同目标环境中可能发生的环境相互作用来说明基因型。特定的受遗传影响的性状可导致G × E相互作用,影响作物生长和产量结果,受可用水分、CO2浓度、温度和其他因素的影响。某一遗传性状的突现结果可能在一种环境中增加产量,但在另一种环境中几乎没有或产生负面影响。将遗传效应与生理过程联系起来用于计算机模拟应用,特别是在未来气候变化下的植物育种方面,还需要做很多工作。
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Incorporating realistic trait physiology into crop growth models to support genetic improvement
In silico plant modelling is the use of dynamic crop simulation models to evaluate hypothetical plant traits (phenology, processes and plant architecture) that will enhance crop growth and yield for a defined target environment and crop management (weather, soils, limited resource). To be useful for genetic improvement, crop models must realistically simulate the principles of crop physiology responses to the environment and the principles by which genetic variation affects the dynamic crop carbon, water and nutrient processes. Ideally, crop models should have sufficient physiological detail of processes to incorporate the genetic effects on these processes to allow for robust simulations of response outcomes in different environments. Yield, biomass, harvest index, flowering date and maturity are emergent outcomes of many interacting genes and processes rather than being primary traits directly driven by singular genetics. Examples will be given for several grain legumes, using the CSM-CROPGRO model, to illustrate emergent outcomes simulated as a result of single and multiple combinations of genotype-specific parameters and to illustrate genotype by environment interactions that may occur in different target environments. Specific genetically influenced traits can result in G × E interactions on crop growth and yield outcomes as affected by available water, CO2 concentration, temperature, and other factors. An emergent outcome from a given genetic trait may increase yield in one environment but have little or negative effect in another environment. Much work is needed to link genetic effects to the physiological processes for in silico modelling applications, especially for plant breeding under future climate change.
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来源期刊
in silico Plants
in silico Plants Agricultural and Biological Sciences-Agronomy and Crop Science
CiteScore
4.70
自引率
9.70%
发文量
21
审稿时长
10 weeks
期刊最新文献
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