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预测美国东南部牧场家禽农场与气象因素相关的沙门氏菌流行情况。

Predicting Salmonella prevalence associated with meteorological factors in pastured poultry farms in southeastern United States.

机构信息

Department of Food Science and Technology, University of Georgia, Athens, GA, USA.

Egg Safety and Quality Research Unit, U.S. National Poultry Research Center, Agricultural Research Service, United States Department of Agriculture, Athens, GA, USA.

出版信息

Sci Total Environ. 2020 Apr 15;713:136359. doi: 10.1016/j.scitotenv.2019.136359. Epub 2020 Jan 8.

Abstract

Consumer demand has increased for pastured poultry products as the drive for sustainable farming practices and ethical treatments of livestock have become popular in the press. It is necessary to identify the important meteorological factors associated with the prevalence of Salmonella in the pastured poultry settings since the presence of Salmonella in the environment could lead to contamination of the final product. The objective of this study was to develop a model to describe the relationship between meteorological factors and the presence of Salmonella on the pastured poultry farms. The random forest method was used to develop a model where 83 meteorological factors were included as the predicting variables. The soil model identified humidity as the most important variable associated with Salmonella prevalence, while high wind gust speed and average temperature were identified as important meteorological variables in the feces model. The developed models were robust in predicting the prevalence of Salmonella in pastured poultry farms with the area under receiver operating characteristic (ROC) curve values of 0.884 and 0.872 for the soil model and feces model, respectively. The predictive models developed in this study can provide users with practical and effective tools to make informed decisions with scientific evidence regarding the meteorological parameters that are important to monitor for increased on-farm Salmonella prevalence.

摘要

随着可持续农业实践和牲畜道德待遇在媒体上的流行,消费者对放牧家禽产品的需求增加了。有必要确定与放牧家禽环境中沙门氏菌流行相关的重要气象因素,因为环境中存在沙门氏菌可能导致最终产品受到污染。本研究的目的是开发一个模型来描述气象因素与放牧家禽农场中沙门氏菌存在之间的关系。随机森林方法用于开发一个模型,其中 83 个气象因素作为预测变量。土壤模型确定湿度是与沙门氏菌流行相关的最重要变量,而大风阵风速度和平均温度被确定为粪便模型中的重要气象变量。所开发的模型在预测放牧家禽农场中沙门氏菌的流行方面具有稳健性,土壤模型和粪便模型的接收者操作特征(ROC)曲线下面积分别为 0.884 和 0.872。本研究中开发的预测模型可以为用户提供实用有效的工具,以便根据有关监测对农场沙门氏菌流行增加重要的气象参数的科学证据做出明智的决策。

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