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墨西哥湾沿岸牡蛎诺如病毒爆发的建模与预测

Modeling and Prediction of Oyster Norovirus Outbreaks along Gulf of Mexico Coast.

作者信息

Wang Jiao, Deng Zhiqiang

机构信息

Department of Civil & Environmental Engineering, Louisiana State University, Baton Rouge, Louisiana, USA.

出版信息

Environ Health Perspect. 2016 May;124(5):627-33. doi: 10.1289/ehp.1509764. Epub 2015 Nov 3.

Abstract

BACKGROUND

Oyster norovirus outbreaks often pose high risks to human health. However, little is known about environmental factors controlling the outbreaks, and little can be done to prevent the outbreaks because they are generally considered to be unpredictable.

OBJECTIVE

We sought to develop a mathematical model for predicting risks of oyster norovirus outbreaks using environmental predictors.

METHODS

We developed a novel probability-based Artificial Neural Network model, called NORF model, using 21 years of environmental and norovirus outbreak data collected from Louisiana oyster harvesting areas along the Gulf of Mexico coast, USA. The NORF model involves six input variables that were selected through stepwise regression analysis and sensitivity analysis.

RESULTS

We found that the model-based probability of norovirus outbreaks was most sensitive to gage height (the depth of water in an oyster bed) and water temperature, followed by wind, rainfall, and salinity, respectively. The NORF model predicted all historical oyster norovirus outbreaks from 1994 through 2014. Specifically, norovirus outbreaks occurred when the NORF model probability estimate was > 0.6, whereas no outbreaks occurred when the estimated probability was < 0.5. Outbreaks may also occur when the estimated probability is 0.5-0.6.

CONCLUSIONS

Our findings require further confirmation, but they suggest that oyster norovirus outbreaks may be predictable using the NORF model. The ability to predict oyster norovirus outbreaks at their onset may make it possible to prevent or at least reduce the risk of norovirus outbreaks by closing potentially affected oyster beds.

CITATION

Wang J, Deng Z. 2016. Modeling and prediction of oyster norovirus outbreaks along Gulf of Mexico coast. Environ Health Perspect 124:627-633; http://dx.doi.org/10.1289/ehp.1509764.

摘要

背景

牡蛎诺如病毒暴发常常对人类健康构成高风险。然而,对于控制这些暴发的环境因素知之甚少,并且由于普遍认为它们不可预测,所以几乎无法采取措施预防这些暴发。

目的

我们试图开发一种利用环境预测因子预测牡蛎诺如病毒暴发风险的数学模型。

方法

我们利用从美国墨西哥湾沿岸路易斯安那州牡蛎捕捞区收集的21年环境和诺如病毒暴发数据,开发了一种新型的基于概率的人工神经网络模型,称为NORF模型。NORF模型涉及通过逐步回归分析和敏感性分析选择的六个输入变量。

结果

我们发现基于模型的诺如病毒暴发概率对水位高度(牡蛎床中的水深)和水温最为敏感,其次分别是风、降雨和盐度。NORF模型预测了1994年至2014年所有历史性的牡蛎诺如病毒暴发。具体而言,当NORF模型概率估计值>0.6时会发生诺如病毒暴发,而当估计概率<0.5时则未发生暴发。当估计概率为0.5 - 0.6时也可能发生暴发。

结论

我们的研究结果需要进一步证实,但它们表明使用NORF模型或许可以预测牡蛎诺如病毒暴发。在牡蛎诺如病毒暴发开始时进行预测的能力可能使得通过关闭可能受影响的牡蛎床来预防或至少降低诺如病毒暴发风险成为可能。

引用

Wang J, Deng Z. 2016. Modeling and prediction of oyster norovirus outbreaks along Gulf of Mexico coast. Environ Health Perspect 124:627 - 633; http://dx.doi.org/10.1289/ehp.1509764.

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/081a/4858391/88116254658a/ehp.1509764.g001.jpg

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