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2008 - 2018年中国沿海地区食源性诺如病毒暴发的预测

Prediction of Foodborne Norovirus Outbreaks in Coastal Areas in China in 2008-2018.

作者信息

Wang Jiao, Ran Lu, Zhai Mengying, Jiang Chao, Xu Chao

机构信息

China CDC Key Laboratory of Environment and Population Health, National Institute of Environmental Health, Chinese Center for Disease Control and Prevention, Beijing, China.

School of Public Health, Anhui Medical University, Hefei, China.

出版信息

Foodborne Pathog Dis. 2024 Mar;21(3):203-209. doi: 10.1089/fpd.2023.0037. Epub 2023 Dec 27.

Abstract

Foodborne norovirus outbreak usually poses high risks in coastal areas in China. Owing to the influence of multiple climatic factors, it demonstrates typical seasonality and the hotspots gradually expanded northwards from 2008 to 2018. However, the complex mechanism of the onset of outbreaks makes accurate prediction difficult. Thus, it is in necessity to construct a predictive model for foodborne norovirus outbreaks in coastal areas based on environmental and geographical variables. A novel predictive nonlinear autoregressive model with exogenous inputs model was developed using 11 years of environmental and foodborne norovirus outbreak data collected from coastal areas in China. Five input variables (temperature, precipitation, elevation, latitude, and longitude) were screened through stepwise regression analysis. The predicted model developed in this study was able to reproduce 88.53% of outbreaks reported to the National Public Health Emergency Event Surveillance System (PHEESS) in the model development and 100% of outbreaks reported in the independent cross-validation since the system was first launched in China. In particular, foodborne norovirus outbreaks might occur when the probability is >0.6. The findings of this study suggest that foodborne norovirus outbreaks could be accurately predicted in coastal areas in China using the developed predictive model on a daily basis. The model output is most sensitive to temperature, followed by precipitation, and locations. The application of this predictive model is promising to improve local hygiene management levels, prevent foodborne norovirus outbreaks, and reduce the disease and economic costs in coastal areas in China.

摘要

食源性诺如病毒暴发在中国沿海地区通常构成高风险。由于多种气候因素的影响,其呈现出典型的季节性,且从2008年到2018年,热点地区逐渐向北扩展。然而,暴发发生的复杂机制使得准确预测变得困难。因此,有必要基于环境和地理变量构建中国沿海地区食源性诺如病毒暴发的预测模型。利用从中国沿海地区收集的11年环境和食源性诺如病毒暴发数据,开发了一种新型的带有外部输入的预测非线性自回归模型。通过逐步回归分析筛选出五个输入变量(温度、降水、海拔、纬度和经度)。本研究开发的预测模型在模型开发中能够重现向国家突发公共卫生事件监测系统(PHEESS)报告的88.53%的暴发情况,在中国首次启动该系统以来的独立交叉验证中能够重现100%的报告暴发情况。特别是,当概率>0.6时,可能会发生食源性诺如病毒暴发。本研究结果表明,利用所开发的预测模型可以在中国沿海地区每天准确预测食源性诺如病毒暴发。模型输出对温度最为敏感,其次是降水和位置。该预测模型的应用有望提高当地卫生管理水平,预防食源性诺如病毒暴发,并降低中国沿海地区的疾病和经济成本。

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