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Lameness detection challenges in automated milking systems addressed with partial least squares discriminant analysis

机译:局部最小二乘判别分析解决了自动挤奶系统中的me行检测难题

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摘要

Lameness causes decreased animal welfare and leads to higher production costs. This study explored data from an automatic milking system (AMS) to model on-farm gait scoring from a commercial farm. A total of 88 cows were gait scored once per week, for 2 5-wk periods. Eighty variables retrieved from AMS were summarized week-wise and used to predict 2 defined classes: nonlame and clinically lame cows. Variables were represented with 2 transformations of the week summarized variables, using 2-wk data blocks before gait scoring, totaling 320 variables (2 × 2 × 80). The reference gait scoring error was estimated in the first week of the study and was, on average, 15%. Two partial least squares discriminant analysis models were fitted to parity 1 and parity 2 groups, respectively, to assign the lameness class according to the predicted probability of being lame (score 3 or 4/4) or not lame (score 1/4). Both models achieved sensitivity and specificity values around 80%, both in calibration and cross-validation. At the optimum values in the receiver operating characteristic curve, the false-positive rate was 28% in the parity 1 model, whereas in the parity 2 model it was about half (16%), which makes it more suitable for practical application; the model error rates were, 23 and 19%, respectively. Based on data registered automatically from one AMS farm, we were able to discriminate nonlame and lame cows, where partial least squares discriminant analysis achieved similar performance to the reference method.
机译:me行会导致动物福利下降,并导致生产成本上升。这项研究探索了自动挤奶系统(AMS)的数据,以对商业农场的步态得分进行建模。每周对88头母牛进行步态评分,为期2个5周。从AMS检索到的80个变量每周进行汇总,并用于预测2个定义的类别:非non足和临床la足牛。使用步态评分前的2周数据块,通过每周汇总变量的2次变换来表示变量,总计320个变量(2×2×80)。在研究的第一周估计了参​​考步态评分误差,平均为15%。将两个偏最小二乘判别分析模型分别拟合到奇偶校验1组和奇偶校验2组,以根据预测为(脚(得分3或4/4)或不la脚(得分1/4)的概率分配the行等级。两种模型在校准和交叉验证中均达到了约80%的灵敏度和特异性值。在接收器工作特性曲线的最佳值处,奇偶校验1模型的假阳性率为28%,而在奇偶校验2模型中,假阳性率为大约一半(16%),这使其更适合于实际应用。模型错误率分别为23%和19%。基于从一个AMS农场自动注册的数据,我们能够区分非lam足和la足母牛,其中偏最小二乘判别分析获得的性能与参考方法相似。

著录项

  • 来源
    《Journal of dairy science》 |2014年第12期|7476-7486|共11页
  • 作者单位

    Centre for Herd-oriented Education, Research and Development (HERD), Department of Large Animal Sciences, Gronnegaardsvej 2, DK-1870, Department of Food Science, Spectroscopy and Chemometrics, Rolighedsvej 30, DK-1958, University of Copenhagen, Frederiksberg C, Denmark;

    Centre for Herd-oriented Education, Research and Development (HERD), Department of Large Animal Sciences, Gronnegaardsvej 2, DK-1870;

    Department of Food Science, Spectroscopy and Chemometrics, Rolighedsvej 30, DK-1958, University of Copenhagen, Frederiksberg C, Denmark;

    Department of Food Science, Spectroscopy and Chemometrics, Rolighedsvej 30, DK-1958, University of Copenhagen, Frederiksberg C, Denmark;

    Centre for Herd-oriented Education, Research and Development (HERD), Department of Large Animal Sciences, Gronnegaardsvej 2, DK-1870;

  • 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

    lameness detection in automatic milking system; animal welfare; pattern recognition; partial least squares discriminant analysis;

    机译:自动挤奶系统中的行检测;动物福利;模式识别;偏最小二乘判别分析;
  • 入库时间 2022-08-17 23:23:59

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