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The influence of sample distribution on growth model output for a highly-exploited marine fish the Gulf Corvina (Cynoscion othonopterus)

机译:样品分布对高度开发的海水鱼类墨西哥湾长颈鱼(Cynoscion othonopterus)生长模型输出的影响

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摘要

Estimating the growth of fishes is critical to understanding their life history and conducting fisheries assessments. It is imperative to sufficiently sample each size and age class of fishes to construct models that accurately reflect biological growth patterns, but this may be a challenging endeavor for highly-exploited species in which older fish are rare. Here, we use the Gulf Corvina (Cynoscion othonopterus), a vulnerable marine fish that has been persistently overfished for two decades, as a model species to compare the performance of several growth models. We fit the von Bertalanffy, Gompertz, logistic, Schnute, and Schnute–Richards growth models to length-at-age data by nonlinear least squares regression and used simple indicators to reveal biased data and ensure our results were biologically feasible. We then explored the consequences of selecting a biased growth model with a per-recruit model that estimated female spawning-stock-biomass-per-recruit and yield-per-recruit. Based on statistics alone, we found that the Schnute–Richards model described our data best. However, it was evident that our data were biased by a bimodal distribution of samples and underrepresentation of large, old individuals, and we found the Schnute–Richards model output to be biologically implausible. By simulating an equal distribution of samples across all age classes, we found that sample distribution distinctly influenced model output for all growth models tested. Consequently, we determined that the growth pattern of the Gulf Corvina was best described by the von Bertalanffy growth model, which was the most robust to biased data, comparable across studies, and statistically comparable to the Schnute–Richards model. Growth model selection had important consequences for assessment, as the per-recruit model employing the Schnute–Richards model fit to raw data predicted the stock to be in a much healthier state than per-recruit models employing other growth models. Our results serve as a reminder of the importance of complete sampling of all size and age classes when possible and transparent identification of biased data when complete sampling is not possible.
机译:估计鱼类的生长对于了解其生活史和进行渔业评估至关重要。必须对每种尺寸和年龄的鱼类进行充分采样,以构建能够准确反映生物生长模式的模型,但这对于稀有年纪较大的鱼类的高度开发物种而言可能是一项艰巨的挑战。在这里,我们将墨西哥湾(Cynoscion othonopterus)(一种易受攻击的鱼类,已经被过度捕捞了二十年)用作模型物种,以比较几种生长模型的性能。我们通过非线性最小二乘回归将von Bertalanffy,Gompertz,logistic,Schnute和Schnute-Richards生长模型拟合到年龄长度数据,并使用简单的指标来揭示有偏倚的数据,并确保我们的结果在生物学上可行。然后,我们探索了选择按偏好的增长模型和按应征者模型估算雌性产卵生物量和应征者产量的后果。仅根据统计数据,我们发现Schnute-Richards模型最能描述我们的数据。但是,很明显,我们的数据因样本的双峰分布和大而老的个体的代表性不足而有偏差,并且我们发现Schnute-Richards模型的输出在生物学上是不可信的。通过模拟所有年龄段样本的均等分布,我们发现样本分布明显影响了所有测试增长模型的模型输出。因此,我们确定了von Bertalanffy增长模型可以最好地描述墨西哥湾Vinvina的增长模式,该模型对于偏差数据最为稳健,在研究中具有可比性,并且在统计上与Schnute-Richards模型具有可比性。增长模型的选择对评估具有重要影响,因为采用Schnute-Richards模型的按员工模型适合原始数据,预测库存处于比采用其他增长模型的按员工模型更健康的状态。我们的结果提醒我们在可能的情况下对所有大小和年龄段的人进行完整抽样的重要性,并在不可能进行完整抽样时透明地识别有偏见的数据的重要性。

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