利用四代数据建立亚洲鲈鱼的预测生长模型

Q1 Agricultural and Biological Sciences Aquaculture and Fisheries Pub Date : 2023-10-01 DOI:10.1016/j.aaf.2023.08.010
Joey Wong, Yi Xuan Tay, Genhua Yue
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引用次数: 0

摘要

生长是水产养殖育种和生产中的重要性状。具有成本效益和精确的生长性状测量为生长监测、饲料管理、饲养密度、大小分级和健康管理提供了有价值的信息。然而,在水产养殖物种中,生长性状的精确测量是具有挑战性的。基于大型数据集的预测增长模型有可能应对这一挑战。在这里,我们开发了预测生长模型,用于分析亚洲海鲈的生长参数,使用的数据来自四个不同世代(F1-F4),在20年的选择性育种计划中,孵化后90至768天(dph)。为了分析鱼的长重关系,我们使用方程W=aLb来估计参数a和b。我们的结果表明,每一代鱼的体长和体重之间都有高度的正相关。此外,为了探讨体重与年龄之间的关系,我们对每代鱼分别拟合了von Bertalanffy生长函数(VBGF)和Gompertz模型来分析年龄-体重关系(AWR)。其中,VBGF表现出更高的拟合优度。这些已开发的预测生长模型与数字成像相结合,将减少亚洲海鲈育种计划中测量生长性状的成本和时间,并有效地管理商业生产。
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Developing predictive growth models for Asian seabass using four generations of data
Growth is an important trait in aquaculture breeding programs and production. Cost-effective and precise measurement of growth traits provides valuable information for growth monitoring, feed management, stocking density, size grading, and health management. However, in aquaculture species, precise measurement of growth traits is challenging. Predictive growth models based on large data sets have the potential to tackle this challenge. Here, we developed predictive growth models for the analysis of growth parameters for the Asian seabass using the dataset from four separate generations (F1-F4), aged between 90- and 768-days post-hatch (dph) in a 20-year selective breeding program. To analyze the length-weight relationship of the fish, the equation W=aLb was used to estimate the parameters a and b. Our results showed that there were high positive correlations between body length and weight in each generation. In addition, to explore the relationships between body weight and ages, for each generation of fish, we fitted two different models: the von Bertalanffy Growth Function (VBGF) and the Gompertz model to analyze the Age-Weight Relationship (AWR). Out of the two, the VBGF, showed a higher goodness of fit. These developed predictive growth models, in combination with digital imaging, will reduce the cost and time for measuring growth traits for breeding programs of Asian seabass, and the effective management of commercial production.
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来源期刊
Aquaculture and Fisheries
Aquaculture and Fisheries Agricultural and Biological Sciences-Aquatic Science
CiteScore
7.50
自引率
0.00%
发文量
54
审稿时长
48 days
期刊最新文献
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