开发模拟基因拯救的Demo-Genetic模型指南

IF 3.5 2区 生物学 Q1 EVOLUTIONARY BIOLOGY
Julian E. Beaman, Katie Gates, Frédérik Saltré, Carolyn J. Hogg, Katherine Belov, Kita Ashman, Karen Burke da Silva, Luciano B. Beheregaray, Corey J. A. Bradshaw
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引用次数: 0

摘要

遗传救援是一种保护管理策略,减少遗传漂变和近交对小种群和孤立种群的负面影响。然而,这些人口可能已经容易受到增长率随机波动的影响(人口随机性)。因此,遗传救援的成功不仅取决于源种群和目标种群的遗传组成,还取决于人口统计过程和其他随机事件相互作用的紧急结果。因此,有必要开发考虑人口和遗传过程之间反馈的预测模型(“人口-遗传反馈”),以指导遗传救援的实施,从而最大限度地减少受威胁种群灭绝的风险。在这里,我们解释了遗传漂变、近亲繁殖和人口统计学随机性的相互强化如何增加小种群的灭绝风险。然后,我们描述了这些过程如何通过参数化潜在机制来建模,包括具有部分优势的有害突变和随着丰度下降而增加的变异人口比率。我们将模型参数化的建议与五个开源程序的相关能力和灵活性的比较结合起来,这些程序旨在构建遗传显式的、基于个体的模拟。利用其中一个程序,我们提供了一个启发式模型来证明模拟遗传救援可以延迟小虚拟种群的灭绝,否则这些种群将由于demo-遗传反馈而面临更大的灭绝风险。然后,我们以受威胁的澳大利亚有袋动物为例进行了研究,以证明已发表的遗传数据可以用于模型开发和应用的一个或所有阶段,包括参数化、校准和验证。我们强调,基因救援可以通过虚拟或经验序列变异(或混合方法)进行模拟,并建议基于模型的决策应该通过对不同基因救援场景中预测的灭绝概率/时间对模型参数(如易位大小、频率、源种群)变化的敏感性进行排序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Guide for Developing Demo-Genetic Models to Simulate Genetic Rescue

Genetic rescue is a conservation management strategy that reduces the negative effects of genetic drift and inbreeding in small and isolated populations. However, such populations might already be vulnerable to random fluctuations in growth rates (demographic stochasticity). Therefore, the success of genetic rescue depends not only on the genetic composition of the source and target populations but also on the emergent outcome of interacting demographic processes and other stochastic events. Developing predictive models that account for feedback between demographic and genetic processes (‘demo-genetic feedback’) is therefore necessary to guide the implementation of genetic rescue to minimize the risk of extinction of threatened populations. Here, we explain how the mutual reinforcement of genetic drift, inbreeding, and demographic stochasticity increases extinction risk in small populations. We then describe how these processes can be modelled by parameterizing underlying mechanisms, including deleterious mutations with partial dominance and demographic rates with variances that increase as abundance declines. We combine our suggestions of model parameterization with a comparison of the relevant capability and flexibility of five open-source programs designed for building genetically explicit, individual-based simulations. Using one of the programs, we provide a heuristic model to demonstrate that simulated genetic rescue can delay extinction of small virtual populations that would otherwise be exposed to greater extinction risk due to demo-genetic feedback. We then use a case study of threatened Australian marsupials to demonstrate that published genetic data can be used in one or all stages of model development and application, including parameterization, calibration, and validation. We highlight that genetic rescue can be simulated with either virtual or empirical sequence variation (or a hybrid approach) and suggest that model-based decision-making should be informed by ranking the sensitivity of predicted probability/time to extinction to variation in model parameters (e.g., translocation size, frequency, source populations) among different genetic-rescue scenarios.

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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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