干旱条件下玉米生殖失败的动态决定因素研究

IF 2.6 Q1 AGRONOMY in silico Plants Pub Date : 2019-01-01 DOI:10.1093/INSILICOPLANTS/DIZ003
C. Messina, G. Hammer, G. McLean, M. Cooper, E. V. van Oosterom, F. Tardieu, S. Chapman, A. Doherty, C. Gho
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引用次数: 49

摘要

玉米(Zea mays)在干旱条件下的繁殖失败是全球粮食系统不稳定的主要原因。虽然对玉米生殖生理学进行了广泛的研究,但还没有以数学形式形式形式化,从而能够研究和预测紧急表型、生理上位性和多效性。我们开发了一个定量综合,作为一个动态模型,用于沿耳朵的生殖结构的共聚,同时考虑碳和水的供需平衡。该模型可以模拟丝的起始、伸长、受精和籽粒生长的动力学,并可以产生众所周知的紧急表型,如植物生长、花吐丝间隔、籽粒数量和产量之间的关系,以及干旱条件下的穗表型(如尖粒败育)。在受控干旱条件下进行的田间试验模拟表明,预测很好地跟踪了观察到的产量和产量组成部分对缺水时间的反应。该框架代表了对以前模拟玉米生殖生理学方法的显著改进。我们设想这种预测能力有机会通过为实验提供信息、支持玉米育种和提高玉米生产力来提高我们对玉米生殖生物学的理解。
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On the dynamic determinants of reproductive failure under drought in maize
Reproductive failure under drought in maize (Zea mays) is a major cause of instability in global food systems. While there has been extensive research on maize reproductive physiology, it has not been formalized in mathematical form to enable the study and prediction of emergent phenotypes, physiological epistasis and pleiotropy. We developed a quantitative synthesis organized as a dynamical model for cohorting of reproductive structures along the ear while accounting for carbon and water supply and demand balances. The model can simulate the dynamics of silk initiation, elongation, fertilization and kernel growth, and can generate well-known emergent phenotypes such as the relationship between plant growth, anthesis-silking interval, kernel number and yield, as well as ear phenotypes under drought (e.g. tip kernel abortion). Simulation of field experiments with controlled drought conditions showed that predictions tracked well the observed response of yield and yield components to timing of water deficit. This framework represents a significant improvement from previous approaches to simulate reproductive physiology in maize. We envisage opportunities for this predictive capacity to advance our understanding of maize reproductive biology by informing experimentation, supporting breeding and increasing productivity in maize.
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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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