Prospects for predictive modeling of transition cow diseases.

IF 4.3 2区 农林科学 Q1 VETERINARY SCIENCES Animal Health Research Reviews Pub Date : 2019-06-01 Epub Date: 2019-09-16 DOI:10.1017/S1466252319000112
Lauren Wisnieski, Bo Norby, Steven J Pierce, Tyler Becker, Lorraine M Sordillo
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引用次数: 7

Abstract

Transition cow diseases can negatively impact animal welfare and reduce dairy herd profitability. Transition cow disease incidence has remained relatively stable over time despite monitoring and management efforts aimed to reduce the risk of developing diseases. Dairy cattle disease risk is monitored by assessing multiple factors, including certain biomarker test results, health records, feed intake, body condition score, and milk production. However, these factors, which are used to make herd management decisions, are often reviewed separately without considering the correlation between them. In addition, the biomarkers that are currently used for monitoring may not be representative of the complex physiological changes that occur during the transition period. Predictive modeling, which uses data to predict future or current outcomes, is a method that can be used to combine the most predictive variables and their interactions efficiently. The use of an effective predictive model with relevant predictors for transition cow diseases will result in better targeted interventions, and therefore lower disease incidence. This review will discuss predictive modeling methods and candidate variables in the context of transition cow diseases. The next step is to investigate novel biomarkers and statistical methods that are best suited for the prediction of transition cow diseases.

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过渡牛疾病预测模型的发展前景。
过渡性奶牛疾病会对动物福利产生负面影响,降低奶牛群的盈利能力。尽管监测和管理工作旨在降低患病风险,但过渡牛的发病率一直保持相对稳定。通过评估多种因素来监测奶牛疾病风险,包括某些生物标志物测试结果、健康记录、采食量、身体状况评分和产奶量。然而,这些用于制定畜群管理决策的因素往往被单独审查,而不考虑它们之间的相关性。此外,目前用于监测的生物标志物可能不能代表在过渡时期发生的复杂生理变化。预测建模是一种利用数据预测未来或当前结果的方法,它可以有效地将最具预测性的变量及其相互作用结合起来。使用具有相关预测因子的有效预测模型,可以更好地进行有针对性的干预,从而降低疾病发病率。本文将讨论过渡牛疾病的预测建模方法和候选变量。下一步是研究最适合预测过渡性奶牛疾病的新型生物标志物和统计方法。
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来源期刊
Animal Health Research Reviews
Animal Health Research Reviews VETERINARY SCIENCES-
CiteScore
6.70
自引率
0.00%
发文量
8
期刊介绍: Animal Health Research Reviews provides an international forum for the publication of reviews and commentaries on all aspects of animal health. Papers include in-depth analyses and broader overviews of all facets of health and science in both domestic and wild animals. Major subject areas include physiology and pharmacology, parasitology, bacteriology, food and environmental safety, epidemiology and virology. The journal is of interest to researchers involved in animal health, parasitologists, food safety experts and academics interested in all aspects of animal production and welfare.
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