植物抗性部署模型。

IF 9.1 1区 农林科学 Q1 PLANT SCIENCES Annual review of phytopathology Pub Date : 2021-08-25 Epub Date: 2021-04-30 DOI:10.1146/annurev-phyto-020620-122134
Loup Rimbaud, Frédéric Fabre, Julien Papaïx, Benoît Moury, Christian Lannou, Luke G Barrett, Peter H Thrall
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引用次数: 29

摘要

由于其进化潜力,植物病原体能够迅速适应遗传控制的植物抗性,往往导致抗性破坏和农作物大流行。已经提出了各种部署策略来改进抗性管理。在全球范围内,这些依赖于仔细选择抗性来源及其在不同时空尺度上的组合(例如,通过基因金字塔、作物轮作和混合、景观马赛克)。然而,在大的时空尺度上使用控制实验来测试和优化这些策略在逻辑上是具有挑战性的。数学模型提供了另一种调查工具,并且许多模型已经被开发用于探索各种环境下的抗性部署策略。本综述根据特定模型结构(例如,人口统计学或人类遗传学,空间与否)、潜在假设(例如,在耐药性部署之前是否存在预适应病原体)和评估标准(例如,耐药性持久性、疾病控制、成本效益)分析了69项建模研究。它强调了主要的研究成果,并讨论了未来建模工作的挑战。
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Models of Plant Resistance Deployment.

Owing to their evolutionary potential, plant pathogens are able to rapidly adapt to genetically controlled plant resistance, often resulting in resistance breakdown and major epidemics in agricultural crops. Various deployment strategies have been proposed to improve resistance management. Globally, these rely on careful selection of resistance sources and their combination at various spatiotemporal scales (e.g., via gene pyramiding, crop rotations and mixtures, landscape mosaics). However, testing and optimizing these strategies using controlled experiments at large spatiotemporal scales are logistically challenging. Mathematical models provide an alternative investigative tool, and many have been developed to explore resistance deployment strategies under various contexts. This review analyzes 69 modeling studies in light of specific model structures (e.g., demographic or demogenetic, spatial or not), underlying assumptions (e.g., whether preadapted pathogens are present before resistance deployment), and evaluation criteria (e.g., resistance durability, disease control, cost-effectiveness). It highlights major research findings and discusses challenges for future modeling efforts.

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来源期刊
Annual review of phytopathology
Annual review of phytopathology 生物-植物科学
CiteScore
16.60
自引率
1.00%
发文量
19
期刊介绍: The Annual Review of Phytopathology, established in 1963, covers major advancements in plant pathology, including plant disease diagnosis, pathogens, host-pathogen Interactions, epidemiology and ecology, breeding for resistance and plant disease management, and includes a special section on the development of concepts. The journal is now open access through Annual Reviews' Subscribe to Open program, with articles published under a CC BY license.
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