Feiner Zachary S, Doll Jason C, Dickinson Ben D, Christie Mark R
Office of Applied Science, Wisconsin Department of Natural Resources Science Operations Center Madison Wisconsin USA.
Center for Limnology University of Wisconsin-Madison Madison Wisconsin USA.
Evol Appl. 2025 Mar 4;18(3):e70075. doi: 10.1111/eva.70075. eCollection 2025 Mar.
As anthropogenic disturbances rapidly change natural environments, species must respond to new selective pressures shaping rates of reproduction, growth, and mortality. One example is intense fisheries harvest, which can drive the evolution of heavily fished populations toward maturation at smaller sizes and younger ages. Changes in maturation have often been measured using probabilistic maturation reaction norms (PMRNs), which were originally designed to control for phenotypic plasticity while allowing for the detection of the evolution of maturation. However, multiple studies have highlighted issues with PMRN estimation, particularly with respect to their accuracy when parameterized with sparse data or when applied to populations experiencing myriad environmental stressors. We used a three-decade time series of Laurentian Great Lakes yellow perch ( Mitchill) data to develop a novel, hierarchical Bayesian PMRN estimation method that can explicitly account for these conceptual issues. Our results indicate that commercial fishing was a primary driver of maturation change in this population, and that the relaxation of harvest pressure via the closure of the commercial fishery in the late 1990s resulted in adaptation toward older ages and larger sizes at maturation within 2-3 generations. Future pairing of hierarchical Bayesian PMRN methods with genome-wide data will help reveal the genetic underpinnings of maturation, and could lead to new avenues for integrating PMRNs into fisheries management and policy.
随着人为干扰迅速改变自然环境,物种必须应对塑造繁殖、生长和死亡率的新选择压力。一个例子是高强度的渔业捕捞,它可促使被过度捕捞的种群朝着更小尺寸和更年轻年龄成熟的方向进化。成熟度的变化通常使用概率成熟反应规范(PMRNs)来衡量,该规范最初旨在控制表型可塑性,同时允许检测成熟度的进化。然而,多项研究突出了PMRN估计存在的问题,特别是在用稀疏数据进行参数化或应用于经历众多环境压力源的种群时,其准确性方面的问题。我们利用劳伦森五大湖黄鲈(Mitchill)长达三十年的时间序列数据,开发了一种新颖的分层贝叶斯PMRN估计方法,该方法可以明确考虑这些概念性问题。我们的结果表明,商业捕捞是该种群成熟度变化的主要驱动因素,并且20世纪90年代末商业渔业关闭导致捕捞压力减轻,从而使该种群在2至3代内朝着成熟时年龄更大、尺寸更大的方向适应。未来将分层贝叶斯PMRN方法与全基因组数据相结合,将有助于揭示成熟的遗传基础,并可能为将PMRN纳入渔业管理和政策开辟新途径。