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首页> 外文期刊>Genetics, selection, evolution >Identifying environmental variables explaining genotype-by-environment interaction for body weight of rainbow trout (Onchorynchus mykiss): reaction norm and factor analytic models
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Identifying environmental variables explaining genotype-by-environment interaction for body weight of rainbow trout (Onchorynchus mykiss): reaction norm and factor analytic models

机译:识别环境变量解释彩虹鳟鱼体重的基因型 - 环境变量(Onchorynchus mykiss):反应规范和因子分析模型

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Background Identifying the relevant environmental variables that cause GxE interaction is often difficult when they cannot be experimentally manipulated. Two statistical approaches can be applied to address this question. When data on candidate environmental variables are available, GxE interaction can be quantified as a function of specific environmental variables using a reaction norm model. Alternatively, a factor analytic model can be used to identify the latent common factor that explains GxE interaction. This factor can be correlated with known environmental variables to identify those that are relevant. Previously, we reported a significant GxE interaction for body weight at harvest in rainbow trout reared on three continents. Here we explore their possible causes. Methods Reaction norm and factor analytic models were used to identify which environmental variables (age at harvest, water temperature, oxygen, and photoperiod) may have caused the observed GxE interaction. Data on body weight at harvest was recorded on 8976 offspring reared in various locations: (1) a breeding environment in the USA (nucleus), (2) a recirculating aquaculture system in the Freshwater Institute in West Virginia, USA, (3) a high-altitude farm in Peru, and (4) a low-water temperature farm in Germany. Akaike and Bayesian information criteria were used to compare models. Results The combination of days to harvest multiplied with daily temperature (Day*Degree) and photoperiod were identified by the reaction norm model as the environmental variables responsible for the GxE interaction. The latent common factor that was identified by the factor analytic model showed the highest correlation with Day*Degree. Day*Degree and photoperiod were the environmental variables that differed most between Peru and other environments. Akaike and Bayesian information criteria indicated that the factor analytical model was more parsimonious than the reaction norm model. Conclusions Day*Degree and photoperiod were identified as environmental variables responsible for the strong GxE interaction for body weight at harvest in rainbow trout across four environments. Both the reaction norm and the factor analytic models can help identify the environmental variables responsible for GxE interaction. A factor analytic model is preferred over a reaction norm model when limited information on differences in environmental variables between farms is available.
机译:背景技术在无法通过实验操纵时识别导致GXE交互的相关环境变量通常很困难。可以应用两个统计方法来解决这个问题。当有关候选环境变量的数据时,可以使用反应规范模型作为特定环境变量的函数量化GXE交互。或者,可以使用因子分析模型来识别解释GXE相互作用的潜在共同因子。该因子可以与已知的环境变量相关联,以识别相关的环境变量。以前,我们报告了在三大洲举行的彩虹鳟鱼中收获的体重的重要GXE相互作用。在这里,我们探讨了他们可能的原因。方法使用反应规范和因子分析模型用于鉴定哪些环境变量(收获,水温,氧气和光周期)可能导致观察到的GXE相互作用。在各个地方饲养的8976个后代进行了收获体重的数据:(1)美国(核)的育种环境,(2)在美国西弗吉尼亚州西弗吉尼亚州淡水学院的再循环水产养殖系统,(3)a秘鲁的高海拔农场,(4)德国的低水温度农场。 Akaike和Bayesian信息标准用于比较模型。结果反应规范模型作为负责GXE相互作用的环境变量,通过反应规范模型鉴定了每日温度(日*度)和光周期的日期乘以每日温度(日*度)和光周期。因子分析模型鉴定的潜在共同因素显示与日期*度的最高相关性。日*学位和光周期是秘鲁和其他环境之间最差的环境变量。 Akaike和Bayesian信息标准表明,因子分析模型比反应规范模型更加解释。结论日期*学位和光周期被确定为环境变量,负责四种环境中虹鳟鱼的体重强的GXE相互作用。反应规范和因子分析模型都可以帮助识别负责GXE相互作用的环境变量。当有关于农场之间的环境变量的差异有限的信息时,在反应规范模型中优选一个因子分析模型。

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