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建立并评估一个模型,以模拟季节性产犊的牧场型奶牛小母牛受孕的概率。

The creation and evaluation of a model to simulate the probability of conception in seasonal-calving pasture-based dairy heifers.

作者信息

Fenlon Caroline, O'Grady Luke, Butler Stephen, Doherty Michael L, Dunnion John

机构信息

UCD School of Computer Science, University College Dublin, Belfield, Dublin 4, Ireland.

UCD School of Veterinary Medicine, University College Dublin, Belfield, Dublin 4, Ireland.

出版信息

Ir Vet J. 2017 Nov 22;70:32. doi: 10.1186/s13620-017-0110-0. eCollection 2017.

Abstract

BACKGROUND

Herd fertility in pasture-based dairy farms is a key driver of farm economics. Models for predicting nulliparous reproductive outcomes are rare, but age, genetics, weight, and BCS have been identified as factors influencing heifer conception. The aim of this study was to create a simulation model of heifer conception to service with thorough evaluation.

METHODS

Artificial Insemination service records from two research herds and ten commercial herds were provided to build and evaluate the models. All were managed as spring-calving pasture-based systems. The factors studied were related to age, genetics, and time of service. The data were split into training and testing sets and bootstrapping was used to train the models. Logistic regression (with and without random effects) and generalised additive modelling were selected as the model-building techniques. Two types of evaluation were used to test the predictive ability of the models: discrimination and calibration. Discrimination, which includes sensitivity, specificity, accuracy and ROC analysis, measures a model's ability to distinguish between positive and negative outcomes. Calibration measures the accuracy of the predicted probabilities with the Hosmer-Lemeshow goodness-of-fit, calibration plot and calibration error.

RESULTS

After data cleaning and the removal of services with missing values, 1396 services remained to train the models and 597 were left for testing. Age, breed, genetic predicted transmitting ability for calving interval, month and year were significant in the multivariate models. The regression models also included an interaction between age and month. Year within herd was a random effect in the mixed regression model. Overall prediction accuracy was between 77.1% and 78.9%. All three models had very high sensitivity, but low specificity. The two regression models were very well-calibrated. The mean absolute calibration errors were all below 4%.

CONCLUSION

Because the models were not adept at identifying unsuccessful services, they are not suggested for use in predicting the outcome of individual heifer services. Instead, they are useful for the comparison of services with different covariate values or as sub-models in whole-farm simulations. The mixed regression model was identified as the best model for prediction, as the random effects can be ignored and the other variables can be easily obtained or simulated.

摘要

背景

以牧场为基础的奶牛场的群体繁殖力是农场经济效益的关键驱动因素。预测初产牛繁殖结果的模型很少见,但年龄、遗传、体重和体况评分已被确定为影响小母牛受孕的因素。本研究的目的是创建一个小母牛受孕配种的模拟模型,并进行全面评估。

方法

提供了来自两个研究牛群和十个商业牛群的人工授精服务记录,用于构建和评估模型。所有牛群均作为春季产犊的以牧场为基础的系统进行管理。所研究的因素与年龄、遗传和配种时间有关。数据被分为训练集和测试集,并使用自助法训练模型。选择逻辑回归(有无随机效应)和广义相加模型作为模型构建技术。使用两种类型的评估来测试模型的预测能力:区分度和校准度。区分度包括敏感性、特异性、准确性和ROC分析,衡量模型区分阳性和阴性结果的能力。校准度通过Hosmer-Lemeshow拟合优度、校准图和校准误差来衡量预测概率的准确性。

结果

在数据清理并去除有缺失值的服务记录后,剩余1396条服务记录用于训练模型,597条用于测试。年龄、品种、产犊间隔的遗传预测传递能力、月份和年份在多变量模型中具有显著性。回归模型还包括年龄和月份之间的相互作用。牛群内的年份在混合回归模型中是一个随机效应。总体预测准确率在77.1%至78.9%之间。所有三个模型的敏感性都非常高,但特异性较低。两个回归模型的校准度非常好。平均绝对校准误差均低于4%。

结论

由于这些模型不擅长识别未成功的配种服务,因此不建议用于预测个体小母牛配种的结果。相反,它们对于比较具有不同协变量值的配种服务或作为全农场模拟中的子模型很有用。混合回归模型被确定为最佳预测模型,因为随机效应可以忽略,其他变量可以很容易地获得或模拟。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b719/5700694/2f7e048d232e/13620_2017_110_Fig1_HTML.jpg

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