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Exploring the value of routinely collected herd data for estimating dairy cattle welfare

机译:探索常规收集的牛群数据对估算奶牛福利的价值

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摘要

Routine on-farm assessment of dairy cattle welfare is time consuming and, therefore, expensive. A promising strategy to assess dairy cattle welfare more efficiently is to estimate the level of animal welfare based on herd data available in national databases. Our aim was to explore the value of routine herd data (RHD) for estimating dairy cattle welfare at the herd level. From November 2009 through March 2010, 7 trained observers collected data for 41 welfare indicators in a selected sample of 183 loose-housed and 13 tethered Dutch dairy herds (herd size: 10 to 211 cows) using the Welfare Quality protocol for cattle. For the same herds, RHD relating to identification and registration, management, milk production and composition, and fertility were extracted from several national databases. The RHD were used as potential predictors for each welfare indicator in logistic regression at the herd level. Nineteen welfare indicators were excluded from the predictions, because they showed a prevalence below 5% (15 indicators), or were already listed as RHD (4 indicators). Predictions were less accurate for 7 welfare indicators, moderately accurate for 14 indicators, and highly accurate for 1 indicator. By forcing to detect almost all herds with a welfare problem (sensitivity of at least 97.5%), specificity ranged from 0 to 81%. By forcing almost no herds to be incorrectly classified as having a welfare problem (specificity of at least 97.5%), sensitivity ranged from 0 to 67%. Overall, the best-performing prediction models were those for the indicators access to at least 2 drinkers (resource based), percentage of very lean cows, cows lying outside the supposed lying area, and cows with vulvar discharge (animal based). The most frequently included predictors in final models were percentages of on-farm mortality in different lactation stages. It was concluded that, for most welfare indicators, RHD have value for estimating dairy cattle welfare. The RHD can serve as a prescreening tool for detecting herds with a welfare problem, but this should be followed by a verification of the level of welfare in an on-farm assessment to identify false-positive herds. Consequently, the number of farm visits needed for routine welfare assessments can be reduced. The RHD also hold value for continuous monitoring of dairy cattle welfare. Prediction models developed in this study, however, should first be validated in additional field studies.
机译:在农场对乳牛福利进行常规评估很费时间,因此很昂贵。一种更有效地评估奶牛福利的有前途的策略是,根据国家数据库中可用的畜群数据估算动物福利水平。我们的目标是探索常规畜群数据(RHD)在畜群水平上估算奶牛福利的价值。从2009年11月到2010年3月,使用牛的福利质量协议,由7名训练有素的观察员收集了183个散养和13个拴系的荷兰奶牛种群(畜群大小:10至211头母牛)的选定样本中的41种福利指标数据。对于相同的牛群,从几个国家数据库中提取了与识别和注册,管理,牛奶生产和组成以及生育力有关的RHD。在群体水平的逻辑回归中,RHD被用作每个福利指标的潜在预测指标。预测中排除了19个福利指标,因为它们的患病率低于5%(15个指标),或者已被列为RHD(4个指标)。对于7个福利指标,预测的准确性较差;对于14个指标,预测的准确性较差;对于1个指标,预测的准确性较高。通过强迫检测几乎所有有福利问题的畜群(敏感性至少为97.5%),特异性范围为0至81%。通过强迫几乎没有群被错误地归类为存在福利问题(特异性至少为97.5%),敏感性范围为0至67%。总体而言,效果最好的预测模型是以下指标的模型:至少有2个饮水器的使用量(基于资源),非常瘦的母牛所占的百分比,位于假定躺卧区域之外的母牛和具有外阴分泌物的母牛(基于动物)。最终模型中最常包含的预测因子是不同泌乳阶段的农场死亡率的百分比。结论是,对于大多数福利指标而言,RHD对于估算奶牛福利具有价值。 RHD可以用作筛查有福利问题的畜群的预筛工具,但是应该在农场评估中对福利水平进行验证,以识别假阳性畜群。因此,可以减少日常福利评估所需的农场探访次数。 RHD还具有持续监测奶牛福利的价值。但是,本研究中开发的预测模型应首先在其他现场研究中进行验证。

著录项

  • 来源
    《Journal of dairy science》 |2014年第2期|715-730|共16页
  • 作者单位

    Animal Production Systems Group, Wageningen University, 6700 AH Wageningen, the Netherlands;

    Animal Production Systems Group, Wageningen University, 6700 AH Wageningen, the Netherlands;

    GD Animal Health Service, 7400 AA Deventer, the Netherlands;

    Biometris, Wageningen University, 6700 AC Wageningen, the Netherlands;

    GD Animal Health Service, 7400 AA Deventer, the Netherlands;

    Animal Production Systems Group, Wageningen University, 6700 AH Wageningen, the Netherlands;

  • 收录信息 美国《科学引文索引》(SCI);美国《生物学医学文摘》(MEDLINE);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    animal welfare; herd data; monitoring; Welfare Quality;

    机译:动物福利;牧群数据监控;福利质量;

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