基于长度年龄、标记-再捕获和长度-频率数据的高山大河中欧洲灰鲑生长模型。

IF 1.7 3区 农林科学 Q2 FISHERIES
Jan Droll, Christoffer Nagel, Joachim Pander, Sophie Ebert, Juergen Geist
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引用次数: 0

摘要

动物生长是种群动态的基本组成部分,与死亡率、繁殖力和成熟性密切相关。因此,估计增长常常作为人口评估的基础。在鱼类中,分析生长通常需要将生长模型与从钙化结构中计算生长环得出的年龄数据相匹配。此外,可以使用长度-频率数据或从标记-再捕获事件中获得的长度变化数据来估计鱼类的生长。在我们对德国高寒地区欧洲灰鲑(Thymallus Thymallus L.)的研究中,我们使用了所有三种类型的数据集来建立初始生长模型。对于来自尺度的年龄长度数据,我们使用贝叶斯和频率方法应用传统的von Bertalanffy生长函数。此外,我们采用了标记-再捕获数据和Fabens模型来重新参数化von Bertalanffy增长模型。采用电子长度-频率分析(ELEFAN)对2013年至2022年多次采样事件的grayling长度-频率数据进行了分析。我们的研究结果表明,标记-再捕获数据与法本斯模型相结合,为两种统计方法提供了最合理的值。当使用von Bertalanffy生长函数时,频率论方法产生了不合理的高值,而贝叶斯版本在应用适当的先验时产生了有意义的结果,这表明与衰老相关的年龄长度数据存在潜在问题。ELEFAN方法产生了最小但合理的生长参数,与其他关于欧洲灰鲑的研究相矛盾。较低的值可能是由于在大多数采样事件中缺乏较大的鱼,导致相对较低的渐近长度和缓慢的生长速率。正如对River Inn的灰鲑的案例研究所表明的那样,生长特征的使用可能是目前被低估但非常有用的目标物种评估指标,可以很好地补充其他种群健康指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Growth modeling of the European grayling (Thymallus thymallus L.) in a large alpine river based on age-at-length, mark-recapture, and length-frequency data.

Animal growth is a fundamental component of population dynamics, which is closely tied to mortality, fecundity, and maturation. As a result, estimating growth often serves as the basis of population assessments. In fish, analysing growth typically involves fitting a growth model to age-at-length data derived from counting growth rings in calcified structures. Additionally, fish growth can be estimated using length-frequency data or data on changes in length derived from mark-recapture events. In our study of the European grayling (Thymallus thymallus L.) in the alpine region of Germany, we utilized all three types of datasets to develop the initial growth model. For the age-at-length data from scales, we applied the traditional von Bertalanffy growth function using both a Bayesian and a frequentist approach. Furthermore, we adopted the mark-recapture data along with the Fabens model for reparametrizing the von Bertalanffy growth model. The electronic length-frequency analysis (ELEFAN) was employed to examine the length-frequency data of the grayling, encompassing multiple sampling events from 2013 to 2022. Our findings indicated that the mark-recapture data, in conjunction with the Fabens model, yielded the most plausible values for both statistical approaches. When the von Bertalanffy growth function was used, the frequentist approach generated unreasonably high values, whereas the Bayesian version produced meaningful results when appropriate priors were applied, suggesting potential issues with the age-at-length data related to ageing. The ELEFAN approach produced the smallest yet reasonable growth parameters, contradicting other studies on the European grayling. The lower values may be attributed to the lack of larger fish in most of the sampling events, resulting in a relatively low asymptotic length and slow growth rate. As demonstrated in this case study on grayling from the River Inn, the use of growth characteristics may be a currently underestimated yet very useful indicator of target species assessment that can nicely complement other population health indicators.

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来源期刊
Journal of fish biology
Journal of fish biology 生物-海洋与淡水生物学
CiteScore
4.00
自引率
10.00%
发文量
292
审稿时长
3 months
期刊介绍: The Journal of Fish Biology is a leading international journal for scientists engaged in all aspects of fishes and fisheries research, both fresh water and marine. The journal publishes high-quality papers relevant to the central theme of fish biology and aims to bring together under one cover an overall picture of the research in progress and to provide international communication among researchers in many disciplines with a common interest in the biology of fish.
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