超越(几何)均值:随机模型破坏下注套期保值进化的确定性预测。

IF 2.7 2区 环境科学与生态学 Q2 ECOLOGY
American Naturalist Pub Date : 2025-06-01 Epub Date: 2025-05-01 DOI:10.1086/735690
Maya Weissman, Zheng Yin, Yevgeniy Raynes, Daniel Weinreich
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引用次数: 0

摘要

摘要赌注对冲是一种在不可预测的环境中降低风险的普遍策略,在这种环境中,谱系以降低其算术平均适应度为代价降低其在不同环境中的适应度方差。传统上,利用几何平均适应度(GMF)来量化下注套期保值的收益;当且仅当其GMF高于野生型时,押注套期保值预计将得到发展。我们在以往关于在表型分布、环境和繁殖中纳入随机性影响的研究的基础上,调查了这些随机性来源对现实世界下注-对冲性状进化的影响程度。我们证明,与确定性预测相比,建模随机性可以改变下注对冲的选择符号。在较小的种群规模下,套期保值可能是有害的,而在较大的种群规模下则是有益的。这种现象发生在保守型和多元化对冲者的参数空间中。我们将我们的模型应用到已发表的数据中,以表明纳入随机性是解释现实世界下注对冲性状进化的必要条件,包括Papaver dubium可变萌发物候,鼠伤寒沙门氏菌抗生素持久性和克克兰的种子库。我们的研究结果表明,GMF不足以预测投注套期保值在广泛的情况下是否具有适应性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Beyond the (Geometric) Mean: Stochastic Models Undermine Deterministic Predictions of Bet Hedger Evolution.

AbstractBet hedging is a ubiquitous strategy for risk reduction in environments that change unpredictably, where a lineage lowers its variance in fitness across environments at the expense of also lowering its arithmetic mean fitness. Classically, the benefit of bet hedging has been quantified using geometric mean fitness (GMF); bet hedging is expected to evolve if and only if it has a higher GMF than the wild type. We build on previous research on the effect of incorporating stochasticity in phenotypic distribution, environment, and reproduction to investigate the extent to which these sources of stochasticity impact the evolution of real-world bet-hedging traits. We demonstrate that modeling stochasticity can alter the sign of selection for bet hedging compared with deterministic predictions. Bet hedging can be deleterious at small population sizes and beneficial at larger population sizes. This phenomenon occurs across parameter space for conservative and diversified bet hedgers. We apply our model to published data to show that incorporating stochasticity is necessary to explain the evolution of real-world bet-hedging traits, including Papaver dubium variable germination phenology, Salmonella typhimurium antibiotic persistence, and seed banking in Clarkia xantiana. Our results suggest that GMF is not enough to predict when bet hedging is adaptive in a wide range of scenarios.

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来源期刊
American Naturalist
American Naturalist 环境科学-进化生物学
CiteScore
5.40
自引率
3.40%
发文量
194
审稿时长
3 months
期刊介绍: Since its inception in 1867, The American Naturalist has maintained its position as one of the world''s premier peer-reviewed publications in ecology, evolution, and behavior research. Its goals are to publish articles that are of broad interest to the readership, pose new and significant problems, introduce novel subjects, develop conceptual unification, and change the way people think. AmNat emphasizes sophisticated methodologies and innovative theoretical syntheses—all in an effort to advance the knowledge of organic evolution and other broad biological principles.
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