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PSIII-24 Establishment of multilevel linear model and analysis of factors affecting piglet litter performance at birth in central China.

机译:PSIII-24华中地区出生仔猪多胎线性模型建立及影响仔猪生产性能的因素分析。

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摘要

This study aimed to establish a multilevel linear model and analyze the factors affecting piglet litter performance at birth. A total of 17,906 litter performance at birth from 16 commercial pig farms were collected from January 2010 to December 2012 in central China. The general linear regression model (PROC GLM), multilevel Poisson regression model (PROC GLMMIX and PROC NLMIXED), and multilevel linear model (PROC MIXED) were established in SAS software to compare the goodness of fit among the three models. Results showed the ICC of total born piglet (TBP), piglet born alive (PBA), low birth weight piglet (LBW), and average birth weight (ABW) were 27.89%, 23.88%, 24.66%, and 22.27%, respectively (P < 0.05). The AIC, AICC, BIC, and -2LL in the multilevel linear models of TBP, PBA, LBW, and ABW were all lower than those in the general linear regression models. Moreover, the Pearson residuals of TBP, PBA, and LBW increased to nearly 1 after introducing discrete scale factor into models. The P values were all similar between the multilevel Poisson regression models and multilevel linear models for TBP, PBA, and LBW. Furthermore, multilevel analysis revealed the litter performance at birth was significantly influenced by management at farm level, and breed, parity, gestation diet, year, and season at litter level (P < 0.05). In conclusion, the multilevel linear model is better fit for the data of litter performance at birth than the general linear regression model. To simplify the analysis of discrete data, the multilevel Poisson regression model can be replaced by the multilevel linear model. Importantly, factors affecting litter performance at birth from the multilevel linear model provides valuable information on sow production management.
机译:本研究旨在建立一个多级线性模型,并分析影响仔猪出生时产仔性能的因素。 2010年1月至2012年12月,在中国中部地区,从16个商业养猪场收集了总共17906头产仔性能。在SAS软件中建立了通用线性回归模型(PROC GLM),多层Poisson回归模型(PROC GLMMIX和PROC NLMIXED)和多层线性模型(PROC MIXED),以比较这三个模型之间的拟合优度。结果显示,总出生仔猪(TBP),活产仔猪(PBA),低出生体重仔猪(LBW)和平均出生体重(ABW)的ICC分别为27.89%,23.88%,24.66%和22.27%( P <0.05)。 TBP,PBA,LBW和ABW的多级线性模型中的AIC,AICC,BIC和-2LL均低于一般线性回归模型中的AIC,AICC,BIC和-2LL。此外,在将离散比例因子引入模型后,TBP,PBA和LBW的Pearson残差增加到接近1。在TBP,PBA和LBW的多层Poisson回归模型和多层线性模型之间,P值都相似。此外,多层次分析显示,出生时的产仔性能受到农场水平管理的显着影响,而产仔水平,品种,胎次,妊娠饮食,年份和季节也有显着影响(P <0.05)。总之,与一般线性回归模型相比,多层线性模型更适合出生时的垫料性能数据。为了简化离散数据的分析,可以用多层线性模型代替多层Poisson回归模型。重要的是,多层次线性模型影响出生时产仔性能的因素为母猪生产管理提供了有价值的信息。

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