首页> 外文期刊>Journal of dairy science >Rear shape in 3 dimensions summarized by principal component analysis is a good predictor of body condition score in Holstein dairy cows
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Rear shape in 3 dimensions summarized by principal component analysis is a good predictor of body condition score in Holstein dairy cows

机译:通过主成分分析总结的3维后部形状是荷斯坦奶牛身体状况评分的良好预测指标

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Body condition is an indirect estimation of the level of body reserves, and its variation reflects cumulative variation in energy balance. It interacts with reproductive and health performance, which are important to consider in dairy production but not easy to monitor. The commonly used body condition score (BCS) is time consuming, subjective, and not very sensitive. The aim was therefore to develop and validate a method assessing BCS with 3-dimensional (3D) surfaces of the cow's rear. A camera captured 3D shapes 2 m from the floor in a weigh station at the milking parlor exit. The BCS was scored by 3 experts on the same day as 3D imaging. Four anatomical landmarks had to be identified manually on each 3D surface to define a space centered on the cow's rear. A set of 57 3D surfaces from 56 Holstein dairy cows was selected to cover a large BCS range (from 0.5 to 4.75 on a 0 to 5 scale) to calibrate 3D surfaces on BCS. After performing a principal component analysis on this data set, multiple linear regression was fitted on the coordinates of these surfaces in the principal components' space to assess BCS. The validation was performed on 2 external data sets: one with cows used for calibration, but at a different lactation stage, and one with cows not used for calibration. Additionally, 6 cows were scanned once and their surfaces processed 8 times each for repeatability and then these cows were scanned 8 times each the same day for reproducibility. The selected model showed perfect calibration and a good but weaker validation (root mean square error = 0.31 for the data set with cows used for calibration; 0.32 for the data set with cows not used for calibration). Assessing BCS with 3D surfaces was 3 times more repeatable (standard error = 0.075 versus 0.210 for BCS) and 2.8 times more reproducible than manually scored BCS (standard error = 0.103 versus 0.280 for BCS). The prediction error was similar for both validation data sets, indicating that the method is not less efficient for cows not used for calibration. The major part of reproducibility error incorporates repeatability error. An automation of the anatomical landmarks identification is required, first to allow broadband measures of body condition and second to improve repeatability and consequently reproducibility. Assessing BCS using 3D imaging coupled with principal component analysis appears to be a very promising means of improving precision and feasibility of this trait measurement.
机译:身体状况是对身体储备水平的间接估计,其变化反映出能量平衡的累积变化。它与生殖和健康表现相互作用,这在乳制品生产中需要考虑但不容易监控。常用的身体状况评分(BCS)耗时,主观且不太敏感。因此,目的是开发和验证一种评估牛后部3维(3D)表面的BCS的方法。摄像机在挤奶厅出口处的称量站中,从地面2 m处捕获3D形状。在3D成像的同一天,由3位专家对BCS进行了评分。必须在每个3D表面上手动标识四个解剖界标,以定义以母牛后部为中心的空间。选择了一组来自56个荷斯坦奶牛的57个3D表面,以覆盖较大的BCS范围(0到5比例从0.5到4.75)以校准BCS上的3D表面。在对该数据集执行主成分分析之后,将多元线性回归拟合到主成分空间中这些表面的坐标上以评估BCS。验证是通过2个外部数据集进行的:一组使用奶牛进行校准,但泌乳阶段不同,另一组使用奶牛不进行校准。此外,对6头奶牛进行了一次扫描,每只奶牛的表面处理了8次以确保可重复性,然后同一天分别对这些奶牛进行了8次扫描以确保可重复性。所选模型显示出完美的校准和良好但较弱的验证(对于用于校准的奶牛的数据集,均方根误差= 0.31;对于不用于校准的奶牛的数据集,均方根误差= 0.32)。评估具有3D表面的BCS的可重复性是3倍(标准误差= 0.075,而BCS为0.210),可重现性是手动评分BCS的2.8倍(标准误差= 0.103,而BCS为0.280)。两种验证数据集的预测误差相似,这表明该方法对未用于校准的母牛的效率并不低。可再现性误差的主要部分包含可重复性误差。要求解剖标志的自动识别,首先是允许对身体状况进行宽带测量,其次是提高可重复性,从而提高可重复性。使用3D成像和主成分分析来评估BCS似乎是提高此性状测量的准确性和可行性的非常有前途的方法。

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