Generalised Additive Model Improves Estimates of Vibrio Species Abundance in Penaeus vannamei Boone, 1931 Biofloc Production System

Q3 Environmental Science
Angel Queenee Daytic Dequito, V. Corre, Elfred John Abacan
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引用次数: 0

Abstract

Environmental factors influence the abundance of Vibrio species in shrimp culture systems. Prediction of the abundance of presumptive Vibrio species can help prevent the occurrence of bacterial diseases as this will provide insights about when and which environmental factors to manage. In this study, the parametric linear regression model (LRM) and negative binomial model (NBM), and semiparametric generalised additive model (GAM) were used to identify correlations and predict changes of Vibrio abundance with physicochemical and biological water parameters. Water parameters were recorded from three 300 m2 biofloc ponds stocked with Penaeus vannamei Boone, 1931, at 500 individuals.m-3 over four culture run periods. Each culture run lasted for 16 weeks. Imputed data were initially subjected to univariate analysis and Pearson’s correlation analysis. The abundance of presumptive Vibrio species was found to be highly correlated with alkalinity, pH, and phytoplankton density. GAM performed best among the three models based on Akaike’s information criterion (AIC), having the smallest value of 5,743.222 compared to 6,572.014 and 5,857.997 values for ordinary LRM and NBM, respectively. It also had the largest deviance explained statistic with 41.2 % of the deviance reduced by including the predictors compared with ordinary LRM and NBM with only 16.04 % and 14.5 % deviance reduced, respectively. GAM introduced flexibility that predicts the dependent variable better in terms of statistical significance than LRM and NBM. It is important to consider using a semiparametric modelling approach as a tool for aquaculture management.
广义加性模型改进了南美对虾(Penaeus vannamei Boone, 1931)生物群落生产系统弧菌丰度的估计
环境因素影响对虾养殖系统中弧菌物种的丰度。预测推定弧菌物种的丰度有助于预防细菌性疾病的发生,因为这将为何时以及管理哪些环境因素提供见解。本研究采用参数线性回归模型(LRM)、负二项模型(NBM)和半参数广义加性模型(GAM)来识别弧菌丰度与物理化学和生物水参数的相关性并预测其变化。在四个培养期内,从三个300平方米的生物池中记录了水参数,池中储存了1931年的南美白对虾(Penaeus vannamei Boone),每立方米500个个体。每次培养持续16周。最初对输入的数据进行单变量分析和Pearson相关分析。推定弧菌物种的丰度与碱度、pH值和浮游植物密度高度相关。根据Akaike的信息准则(AIC),GAM在三个模型中表现最好,最小值为5743.222,而普通LRM和NBM的值分别为6572.014和5857.997。它也有最大的偏差解释统计数据,与普通LRM和NBM相比,通过包括预测因子,偏差减少了41.2%,偏差分别只减少了16.04%和14.5%。GAM引入了灵活性,在统计显著性方面比LRM和NBM更好地预测因变量。重要的是要考虑使用半参数建模方法作为水产养殖管理的工具。
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来源期刊
Asian Fisheries Science
Asian Fisheries Science Agricultural and Biological Sciences-Food Science
CiteScore
2.20
自引率
0.00%
发文量
23
期刊介绍: The Asian Fisheries Science (AFS) was first published in 1987. It is an open access SCOPUS indexed publication of the Asian Fisheries Society. Four regular issues are published annually in March, June, September and December. In addition, special issues are published on specific topics. Full texts of the articles are available for free download and there is no publication fee. The journal promotes fisheries science which has an international appeal with special focus on Asian interests.
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