论文标题
奶牛中表型递归关系对残留饲料摄入的替代解释
An alternative Interpretation of residual feed intake by phenotypic recursive relationships in dairy cattle
论文作者
论文摘要
作为奶牛净饲料效率的量度,对残留饲料摄入量(RFI)的兴趣越来越大。 RFI表型作为来自线性回归的残留物,包括相关因素(即能量下沉),以说明身体组织动员。但是,由于表型会遇到测量误差,因此批评了标准线性回归中的回归变量作为回归变量。已经提出了多特征模型,该模型通过后续部分回归得出RFI。通过重新安排单特性线性回归,我们显示了RFI线性回归的基础RFI解释。它假设能量下沉对干物质摄入的能量分配的递归影响,但假定反馈或同时效应不存在。提出了贝叶斯递归结构方程模型,用于直接预测RFI和能量下沉并同时估算相关的遗传参数。描述了实现贝叶斯递归模型的简化Markov链蒙特卡洛算法。递归模型在RFI上渐近等同于一步线性回归,但将分析能力扩展到多特征分析。它等效于基于表型(CO)方差矩阵的cholesky分解来重新聚集的贝叶斯实施,多特征模型,以评估RFI,但在能量下沉之间的关系的假设上有所不同。
There has been an increasing interest in residual feed intake (RFI) as a measure of net feed efficiency in dairy cattle. RFI phenotypes are obtained as residuals from linear regression encompassing relevant factors (i.e., energy sinks) to account for body tissue mobilization. However, fitting energy sink phenotypes as regression variables in standard linear regression was criticized because phenotypes are subject to measurement errors. Multiple-trait models have been proposed which derive RFI by follow-up partial regression. By re-arranging the single-trait linear regression, we showed a causal RFI interpretation underlying the linear regression for RFI. It postulates recursive effects in energy allocation from energy sinks on dry matter intake, but the feedback or simultaneous effects are assumed to be nonexistent. A Bayesian recursive structural equation model was proposed for directly predicting RFI and energy sinks and estimating relevant genetic parameters simultaneously. A simplified Markov chain Monte Carlo algorithm that implemented the Bayesian recursive model was described. The recursive model is asymptotically equivalent to one-step linear regression for RFI, yet extends the analytical capacity to multiple-trait analysis. It is equivalent to Bayesian-implemented, multiple-trait model reparameterized based on Cholesky decomposition of phenotypic (co)variance matrix for evaluating RFI, but varied in assumptions about relationships between energy sinks.