Gruber Leonhard, Ledinek Maria, Steininger Franz, Fuerst-Waltl Birgit, Zottl Karl, Royer Martin, Krimberger Kurt, Mayerhofer Martin, Egger-Danner Christa
Agricultural Research and Education Centre Raumberg-Gumpenstein, Irdning-Donnersbachtal, 8952, Austria.
These authors contributed equally to this work.
Arch Anim Breed. 2018 Oct 30;61(4):413-424. doi: 10.5194/aab-61-413-2018. eCollection 2018.
The objective of this study was to predict cows' body weight from body size measurements and other animal data in the lactation and dry periods. During the whole year 2014, 6306 cows (on 167 commercial Austrian dairy farms) were weighed at each routine performance recording and body size measurements like heart girth (HG), belly girth (BG), and body condition score (BCS) were recorded. Data on linear traits like hip width (HW), stature, and body depth were collected three times a year. Cows belonged to the genotypes Fleckvieh (and Red Holstein crosses), Holstein, and Brown Swiss. Body measurements were tested as single predictors and in multiple regressions according to their prediction accuracy and their correlations with body weight. For validation, data sets were split randomly into independent subsets for estimation and validation. Within the prediction models with a single body measurement, heart girth influenced relationship with body weight most, with a lowest root mean square error (RMSE) of 39.0 kg, followed by belly girth (39.3 kg) and hip width (49.9 kg). All other body measurements and BCS resulted in a RMSE of higher than 50.0 kg. The model with heart and belly girth (Model ) reduced RMSE to 32.5 kg, and adding HW reduced it further to 30.4 kg (Model ). As RMSE and the coefficient of determination improved, genotype-specific regression coefficients for body measurements were introduced in addition to the pooled ones. The most accurate equations, Model and Model , were validated separately for the lactation and dry periods. Root mean square prediction error (RMSPE) ranged between 36.5 and 37.0 kg (Model , Model , lactation) and 39.9 and 41.3 kg (Model , Model , dry period). Accuracy of the predictions was evaluated by decomposing the mean square prediction error (MSPE) into error due to central tendency, error due to regression, and error due to disturbance. On average, 99.6 % of the variance between estimated and observed values was caused by disturbance, meaning that predictions were valid and without systematic estimation error. On the one hand, this indicates that the chosen traits sufficiently depicted factors influencing body weight. On the other hand, the data set was very heterogeneous and large. To ensure high prediction accuracy, it was necessary to include body girth traits for body weight estimation.
本研究的目的是根据泌乳期和干奶期的体尺测量数据及其他动物数据预测奶牛体重。在2014年全年,对奥地利167个商业奶牛场的6306头奶牛进行了每次常规生产性能记录时的称重,并记录了胸围(HG)、腹围(BG)和体况评分(BCS)等体尺测量数据。每年收集三次关于髋宽(HW)、体高和体深等线性性状的数据。奶牛品种包括弗莱维赫(及红荷斯坦杂交品种)、荷斯坦和瑞士褐牛。根据体尺测量数据的预测准确性及其与体重的相关性,将其作为单一预测指标并进行多元回归分析。为了进行验证,将数据集随机分为独立的子集用于估计和验证。在单一体尺测量的预测模型中,胸围对体重关系的影响最大,均方根误差(RMSE)最低为39.0千克,其次是腹围(39.3千克)和髋宽(49.9千克)。所有其他体尺测量数据和体况评分的均方根误差均高于50.0千克。包含胸围和腹围的模型(模型 )将均方根误差降至32.5千克,加入髋宽后进一步降至30.4千克(模型 )。随着均方根误差和决定系数的改善,除了合并的回归系数外,还引入了体尺测量的基因型特异性回归系数。最准确的方程,即模型 和模型 ,分别在泌乳期和干奶期进行了验证。均方根预测误差(RMSPE)在36.5至37.0千克之间(模型 、模型 ,泌乳期)以及39.9至41.3千克之间(模型 、模型 ,干奶期)。通过将均方预测误差(MSPE)分解为中心趋势误差、回归误差和干扰误差来评估预测的准确性。平均而言,估计值与观测值之间99.6%的方差是由干扰引起的,这意味着预测是有效的且没有系统估计误差。一方面,这表明所选性状充分描述了影响体重的因素。另一方面,数据集非常异质且庞大。为确保高预测准确性,有必要纳入体围性状进行体重估计。