延缓对农药和抗生素的定量抗性

IF 3.5 2区 生物学 Q1 EVOLUTIONARY BIOLOGY Evolutionary Applications Pub Date : 2022-10-25 DOI:10.1111/eva.13497
Nate B. Hardy
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引用次数: 1

摘要

我们如何才能最好地改变农药和抗生素的应用,以延缓耐药性的演变?以前对部署策略的理论比较主要集中在定性抗性性状上,并且大多假设抗性等位基因已经存在于种群中。但许多真正的抗性性状是定量的,田间抗性基因型的进化可能依赖于从头突变和重组。在这里,我使用一个基于个体的,向前时间的,数量遗传模拟模型来研究数量抗性的进化。我评估了延迟抗性进化的四种应用策略的性能,即(1)顺序策略,(2)镶嵌策略,(3)周期策略和(4)组合策略。我发现哪种策略最好取决于最初的效果。当一开始,外源药物完全阻止了治疗后的囊体的繁殖时,最好采用联合策略。另一方面,当种群具有部分抗性时,组合策略优于镶嵌策略和周期策略,特别是当抗性等位基因具有拮抗多效性时。因此,控制数量抗性上升的最佳应用策略取决于多效性和种群中是否已经存在部分抗性。这一结果似乎与害虫的繁殖模式和迁移率、抗性表型的直接适应成本以及庇护栖息地的范围的变化有关。
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Delaying quantitative resistance to pesticides and antibiotics

How can we best vary the application of pesticides and antibiotics to delay resistance evolution? Previous theoretical comparisons of deployment strategies have focused on qualitative resistance traits and have mostly assumed that resistance alleles are already present in a population. But many real resistance traits are quantitative, and the evolution of resistant genotypes in the field may depend on de novo mutation and recombination. Here, I use an individual-based, forward-time, quantitative-genetic simulation model to investigate the evolution of quantitative resistance. I evaluate the performance of four application strategies for delaying resistance evolution, to wit, the (1) sequential, (2) mosaic, (3) periodic, and (4) combined strategies. I find that which strategy is best depends on initial efficacy. When at the onset, xenobiotics completely prevent reproduction in treated demes, a combined strategy is best. On the other hand, when populations are partially resistant, the combined strategy is inferior to mosaic and periodic strategies, especially when resistance alleles are antagonistically pleiotropic. Thus, the optimal application strategy for managing against the rise of quantitative resistance depends on pleiotropy and whether or not partial resistance is already present in a population. This result appears robust to variation in pest reproductive mode and migration rate, direct fitness costs for resistant phenotypes, and the extent of refugial habitats.

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来源期刊
Evolutionary Applications
Evolutionary Applications 生物-进化生物学
CiteScore
8.50
自引率
7.30%
发文量
175
审稿时长
6 months
期刊介绍: Evolutionary Applications is a fully peer reviewed open access journal. It publishes papers that utilize concepts from evolutionary biology to address biological questions of health, social and economic relevance. Papers are expected to employ evolutionary concepts or methods to make contributions to areas such as (but not limited to): medicine, agriculture, forestry, exploitation and management (fisheries and wildlife), aquaculture, conservation biology, environmental sciences (including climate change and invasion biology), microbiology, and toxicology. All taxonomic groups are covered from microbes, fungi, plants and animals. In order to better serve the community, we also now strongly encourage submissions of papers making use of modern molecular and genetic methods (population and functional genomics, transcriptomics, proteomics, epigenetics, quantitative genetics, association and linkage mapping) to address important questions in any of these disciplines and in an applied evolutionary framework. Theoretical, empirical, synthesis or perspective papers are welcome.
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