4.7 Article

Integration of statistical inferences and machine learning algorithms for prediction of metritis cure in dairy cows

期刊

JOURNAL OF DAIRY SCIENCE
卷 104, 期 12, 页码 12887-12899

出版社

ELSEVIER SCIENCE INC
DOI: 10.3168/jds.2021-20262

关键词

metritis cure; ceftiofur; dairy cow; machine learning

资金

  1. USDA-National Institute of Food and Agriculture (NIFA)-Agriculture and Food Research Initiative (AFRI) program (Washington, DC) [1008863]
  2. 2019-2020 VMTH Resident Research Grant at the School of Veterinary Medicine, University of California, Davis

向作者/读者索取更多资源

The study aimed to predict metritis cure by identifying cow-level and environmental factors associated with metritis cure using traditional statistics and machine learning algorithms. Results showed that cows developing metritis at a later stage, with increased milk production, and with a rectal temperature below 39.4 degrees Celsius had a higher likelihood of cure.
The study's objectives were to identify cow-level and environmental factors associated with metritis cure to predict metritis cure using traditional statistics and machine learning algorithms. The data set used was from a previous study comparing the efficacy of different therapies and self-cure for metritis. Metritis was defined as fetid, watery, reddish-brownish discharge, with or without fever. Cure was defined as an absence of metritis signs 12 d after diagnosis. Cows were randomly allocated to receive a subcutaneous injection of 6.6 mg/kg of ceftiofur crystalline-free acid (Excede, Zoetis) at the day of diagnosis and 3 d later (n = 275); and no treatment at the time of metritis diagnosis (n = 275). The variables days in milk (DIM) at metritis diagnosis, treatment, season of the metritis diagnosis, month of metritis diagnostic, number of lactation, parity, calving score, dystocia, retained fetal membranes, body condition score at d 5 postpartum, vulvovaginal laceration score, the rectal temperature at the metritis diagnosis, fever at diagnosis, milk production from the day before to metritis diagnosis, and milk production slope up to 5, 7, and 9 DIM were offered to univariate logistic regression. Variables included in the multivariable logistic regression model were selected from the univariate analysis according to P-value. Variables were offered to the model to assess the association between these factors and metritis cure. Additionally, the univariate logistic regression variables were offered to a recursive feature elimination to find the optimal subset of features for a machine learning algorithms analysis. Cows without vulvovaginal laceration had 1.91 higher odds of curing of metritis than cows with vulvovaginal laceration. Cows that developed metritis at >7 DIM had 2.09 higher odds of being cured than cows that developed metritis at <7 DIM. For rectal temperature, each degree Celsius above 39.4 degrees C led to lower odds to be cured than cows with rectal temperature <39.4 degrees C. Furthermore, milk production slope and milk production difference from the day before to the metritis diagnosis were essential variables to predict metritis cure. Cows that had reduced milk production from the day before to the metritis diagnosis had lower odds to be cured than cows with moderate milk production increase. The results from the multivariable logistic regression and receiver operating characteristic analysis indicated that cows developing metritis at >7 DIM, with increase in milk production, and with a rectal temperature <39.40 degrees C had increased likelihood of cure of metritis with an accuracy of 75%. The machine learning analysis showed that in addition to these variables, calving-related disorders, season, and month of metritis event were needed to predict whether the cow will cure or not from metritis with an accuracy >= 70% and F1 score (harmonic mean between precision and recall) >= 0.78. Although machine learning algorithms are acknowledged as powerful tools for predictive classification, the current study was unable to replicate its potential benefits. More research is needed to optimize predictive models of metritis cure.

作者

我是这篇论文的作者
点击您的名字以认领此论文并将其添加到您的个人资料中。

评论

主要评分

4.7
评分不足

次要评分

新颖性
-
重要性
-
科学严谨性
-
评价这篇论文

推荐

暂无数据
暂无数据