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Goat Milk Nutritional Quality Software-Automatized Individual Curve Model Fitting, Shape Parameters Calculation and Bayesian Flexibility Criteria Comparison

机译:山羊牛奶营养质量软件自动化的单独曲线模型配件,形状参数计算和贝叶斯灵活性标准比较

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摘要

SPSS syntax was described to evaluate the individual performance of 49 linear and non-linear models to fit the milk component evolution curve of 159 Murciano-Granadina does selected for genotyping analyses. Peak and persistence for protein, fat, dry matter, lactose, and somatic cell counts were evaluated using 3107 controls (3.91 ± 2.01 average lactations/goat). Best-fit (adjusted R2) values (0.548, 0.374, 0.429, and 0.624 for protein, fat, dry matter, and lactose content, respectively) were reached by the five-parameter logarithmic model of Ali and Schaeffer (ALISCH), and for the three-parameter model of parabolic yield-density (PARYLDENS) for somatic cell counts (0.481). Cross-validation was performed using the Minimum Mean-Square Error (MMSE). Model comparison was performed using Residual Sum of Squares (RSS), Mean-Squared Prediction Error (MSPE), adjusted R2 and its standard deviation (SD), Akaike (AIC), corrected Akaike (AICc), and Bayesian information criteria (BIC). The adjusted R2 SD across individuals was around 0.2 for all models. Thirty-nine models successfully fitted the individual lactation curve for all components. Parametric and computational complexity promote variability-capturing properties, while model flexibility does not significantly (p > 0.05) improve the predictive and explanatory potential. Conclusively, ALISCH and PARYLDENS can be used to study goat milk composition genetic variability as trustable evaluation models to face future challenges of the goat dairy industry.
机译:SPSS语法被描述来评价的49线性和非线性模型的各个性能,以适应159 Murciano饰-Granadina的并选择用于基因分型分析的乳组分演化曲线。使用3107个对照(3.91±2.01平均泌乳/山羊),用于蛋白质,脂肪,干物质,乳糖,和体细胞数的峰值和持续性进行评价。最佳拟合(调整R2)的值(0.548,0.374,0.429,和0.624为蛋白质,脂肪,干物质和乳糖含量,分别)通过阿里和谢弗(ALISCH)的五参数对数模型达到,以及用于抛物线的产量密度(PARYLDENS)的体细胞计数三参数模型(0.481)。使用最小均方误差(MMSE)进行交叉验证。使用残差平方和(RSS),均方预测误差(MSPE),调整R2和其标准偏差(SD),赤池(AIC),校正赤池(AICC)进行模型的比较,和贝叶斯信息准则(BIC) 。不同个体的调整后的R2 SD约为0.2所有车型。三十九个模型成功安装所有组件的个人泌乳曲线。参数和计算复杂度促进变性捕获性能,而模型的灵活性不显著(P> 0.05)提高了预测和解释性的潜力。确凿,ALISCH和PARYLDENS可以用来研究羊奶成分的遗传变异为可信的评估模式,以羊奶行业面对未来的挑战。

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