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英国奶牛妊娠风险预测模型的开发与评估

Development and evaluation of predictive models for pregnancy risk in UK dairy cows.

作者信息

Barden Matthew, Hyde Robert, Green Martin, Bradley Andrew, Can Edna, Clifton Rachel, Lewis Katharine, Manning Al, O'Grady Luke

机构信息

Department of Livestock and One Health, Institute of Infection, Veterinary and Ecological Sciences, University of Liverpool, Leahurst Campus, Liverpool, CH64 7TE, United Kingdom.

School of Veterinary Medicine and Science, University of Nottingham, Sutton Bonington Campus, Sutton Bonington, Leicestershire, LE12 5RD, United Kingdom.

出版信息

J Dairy Sci. 2024 Dec;107(12):11463-11476. doi: 10.3168/jds.2023-24623. Epub 2024 Aug 31.

Abstract

One suggested approach to improve the reproductive performance of dairy herds is through the targeted management of subgroups of biologically similar animals, such as those with similar probabilities of becoming pregnant, termed pregnancy risk. We aimed to use readily available farm data to develop predictive models of pregnancy risk in dairy cows. Data from a convenience sample of 108 dairy herds in the UK were collated, and each herd was randomly allocated, at a ratio of 80:20, to either training or testing datasets. Following data cleaning, there were a total of 78 herds in the training dataset and 20 herds in the testing dataset. Data were further split by parity into nulliparous, primiparous, and multiparous subsets. An XGBoost model was trained to predict the insemination outcome in each parity subset, with predictors from farm records of breeding, calving, and milk recording. Training data comprised 74,511 inseminations in 45,909 nulliparous animals, 86,420 inseminations in 39,439 primiparous animals, and 158,294 inseminations in 32,520 multiparous animals. The final models were evaluated by predicting with the testing data, comprising 31,740 inseminations in 19,647 nulliparous animals, 38,588 inseminations in 16,215 primiparous animals, and 65,049 inseminations in 12,439 multiparous animals. Model discrimination was assessed by calculating the area under receiver operating characteristic curves (AUC); model calibration was assessed by plotting calibration curves and compared across test herds by calculating the expected calibration error (ECE) in each test herd. The models were unable to discriminate between insemination outcomes with high accuracy, with an AUC of 0.63, 0.59, and 0.62 in the nulliparous, primiparous, and multiparous subsets, respectively. The models were generally well calibrated, meaning the model-predicted pregnancy risks were similar to the observed pregnancy risks. The mean (SD) ECE in the test herds was 0.038 (0.023), 0.028 (0.012), and 0.020 (0.008) in the nulliparous, primiparous, and multiparous subsets respectively. The predictive models reported here could theoretically be used to identify subgroups of animals with similar pregnancy risk to facilitate targeted reproductive management; or provide information about cows' relative pregnancy risk compared with the herd average, which may support on-farm decision making. Further research is needed to evaluate the generalizability of these predictive models and understand the source of variation in ECE between herds; however, this study demonstrates that it is possible to accurately predict pregnancy risk in dairy cows using readily available farm data.

摘要

一种提高奶牛群繁殖性能的建议方法是通过对生物学特征相似的动物亚组进行有针对性的管理,例如那些怀孕概率相似的动物,即怀孕风险。我们旨在利用现有的农场数据来开发奶牛怀孕风险的预测模型。整理了来自英国108个奶牛场的便利样本数据,并按照80:20的比例将每个牛场随机分配到训练数据集或测试数据集。经过数据清理后,训练数据集中共有78个牛场,测试数据集中有20个牛场。数据进一步按胎次分为初产、头胎和经产子集。训练了一个XGBoost模型来预测每个胎次子集中的授精结果,预测变量来自繁殖、产犊和牛奶记录的农场记录。训练数据包括45,909头初产动物的74,511次授精、39,439头头胎动物的86,420次授精以及32,520头经产动物的158,294次授精。通过用测试数据进行预测来评估最终模型,测试数据包括19,647头初产动物的31,740次授精、16,215头头胎动物的38,588次授精以及12,439头经产动物的65,049次授精。通过计算受试者工作特征曲线下面积(AUC)来评估模型的区分能力;通过绘制校准曲线并计算每个测试牛场的预期校准误差(ECE)来评估模型校准,并在各测试牛场之间进行比较。这些模型无法高精度地区分授精结果,初产、头胎和经产子集的AUC分别为0.63、0.59和0.62。模型总体校准良好,这意味着模型预测的怀孕风险与观察到的怀孕风险相似。测试牛场中,初产、头胎和经产子集的平均(标准差)ECE分别为0.038(0.023)、0.028(0.012)和0.020(0.008)。本文报告的预测模型理论上可用于识别怀孕风险相似的动物亚组,以促进有针对性的繁殖管理;或者提供与牛群平均水平相比奶牛相对怀孕风险的信息,这可能有助于农场决策。需要进一步研究来评估这些预测模型的通用性,并了解牛场之间ECE变化的来源;然而,本研究表明,利用现有的农场数据可以准确预测奶牛的怀孕风险。

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