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Modelling cumulative egg production in laying hens and parent stocks of broiler chickens using classical growth functions

机译:使用经典增长功能建模繁殖鸡蛋生产中的母鸡和母鸡母鸡的母鸡

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摘要

1. The objective of the present study is to introduce fresh insight into modelling of egg production by applying classical growth functions to egg production records reported by Aviagen Management Guide to laying hens and the parent stock of broiler chickens. 2. The functions (monomolecular, logistic, Gompertz, Richards and Morgan) were fitted using nonlinear regression procedures of SAS software, and their performance was assessed using goodness-of-fit statistics (coefficient of determination, residual mean squares, Akaike information criterion and Bayesian information criterion). 3. Overall, except for the logistic and Gompertz, the growth functions evaluated gave an acceptable fit to the cumulative egg production curves, with the Morgan equation ranking first followed by the Richards equation. The Morgan and Richards equations provided satisfactory predictions of weekly egg yield at different egg production stages, from early to late production, whereas the least accurate estimates were obtained with the logistic equation. 4. In conclusion, classical growth functions proved feasible alternatives to fit cumulative egg production curves of laying hens and parent stock of broiler chickens, resulting in suitable statistical performance and accurate estimates of production.
机译:1.本研究的目的是通过将古典增长功能应用于铺设母鸡和母鸡母鸡母鸡的父母库存,对鸡蛋生产记录应用于鸡蛋生产记录来引入新的洞察力。 2.使用SAS软件的非线性回归程序拟合了函数(单分子,逻辑,Gompertz,Richards和Morgan),并使用拟合良好统计(确定系数,残余均方,Akaike信息标准和Akaike信息标准和Akaike信息标准和贝叶斯信息标准)。总体而言,除了物流和Gompertz之外,评估的增长函数对累积蛋生产曲线进行了可接受的拟合,摩根方程排名第一,然后是理查兹方程。摩根和理查兹方程式为不同卵产阶段的每周卵产量提供了令人满意的预测,从早期到后期生产,而最小的准确估计是用物流方程获得的。 4.总之,经典增长职能证明了适合母鸡和母鸡母鸡和父母种群的适应累积蛋产曲线的可行替代品,从而得到合适的统计性能和准确的生产估算。

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