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Development of genetic programming-based model for predicting oyster norovirus outbreak risks

机译:基于基因编程的牡蛎诺如病毒暴发风险预测模型的开发

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Oyster norovirus outbreaks pose increasing risks to human health and seafood industry worldwide but exact causes of the outbreaks are rarely identified, making it highly unlikely to reduce the risks. This paper presents a genetic programming (GP) based approach to identifying the primary cause of oyster norovirus outbreaks and predicting oyster norovirus outbreaks in order to reduce the risks. In terms of the primary cause, it was found that oyster norovirus outbreaks were controlled by cumulative effects of antecedent environmental conditions characterized by low solar radiation, low water temperature, low gage height (the height of water above a gage datum), low salinity, heavy rainfall, and strong offshore wind. The six environmental variables were determined by using Random Forest (RF) and Binary Logistic Regression (BLR) methods within the framework of the GP approach. In terms of predicting norovirus outbreaks, a risk-based GP model was developed using the six environmental variables and various combinations of the variables with different time lags. The results of local and global sensitivity analyses showed that gage height, temperature, and solar radiation were by far the three most important environmental predictors for oyster norovirus outbreaks, though other variables were also important. Specifically, very low temperature and gage height significantly increased the risk of norovirus outbreaks while high solar radiation markedly reduced the risk, suggesting that low temperature and gage height were associated with the norovirus source while solar radiation was the primary sink of norovirus. The GP model was utilized to hindcast daily risks of oyster norovirus outbreaks along the Northern Gulf of Mexico coast. The daily hindcasting results indicated that the GP model was capable of hindcasting all historical oyster norovirus outbreaks from January 2002 to June 2014 in the Gulf of Mexico with only two false positive outbreaks for the 12.5-year period. The performance of the GP model was characterized with the area under the Receiver Operating Characteristic curve of 0.86, the true positive rate (sensitivity) of 78.53% and the true negative rate (specificity) of 88.82%, respectively, demonstrating the efficacy of the GP model. The findings and results offered new insights into the oyster norovirus outbreaks in terms of source, sink, cause, and predictors. The GP model provided an efficient and effective tool for predicting potential oyster norovirus outbreaks and implementing management interventions to prevent or at least reduce norovirus risks to both the human health and the seafood industry. (C) 2017 Elsevier Ltd. All rights reserved.
机译:牡蛎诺如病毒暴发对全球人类健康和海鲜产业构成了越来越大的风险,但很少确定暴发的确切原因,因此极不可能降低这种风险。本文提出了一种基于遗传程序设计(GP)的方法,用于确定牡蛎诺如病毒暴发的主要原因并预测牡蛎诺如病毒暴发,以降低风险。就首要原因而言,发现牡蛎诺如病毒暴发是由先前环境条件的累积影响控制的,这些环境条件的特​​征是太阳辐射低,水温低,表压高度(表计基准面以上的水高度),盐度低,大雨,海上风很强。通过使用GP方法框架内的随机森林(RF)和二元对数回归(BLR)方法确定了六个环境变量。在预测诺如病毒暴发方面,使用六个环境变量以及变量具有不同时滞的各种组合,开发了基于风险的GP模型。局部和全局敏感性分析的结果表明,标尺高度,温度和太阳辐射是迄今为止牡蛎诺如病毒爆发的三个最重要的环境预测指标,尽管其他变量也很重要。具体而言,非常低的温度和标高可以显着增加诺如病毒暴发的风险,而高的太阳辐射则可以显着降低这种风险,这表明低温和标高与诺如病毒的来源有关,而太阳辐射则是诺如病毒的主要来源。 GP模型用于预测墨西哥北部湾沿岸牡蛎诺如病毒暴发的每日风险。每日的后预报结果表明,GP模型能够后预报墨西哥湾从2002年1月至2014年6月发生的所有历史性牡蛎诺如病毒暴发,在12.5年期间只有两次假阳性暴发。 GP模型的性能通过接收器工作特征曲线下的面积为0.86,真实阳性率(敏感性)为78.53%和真实阴性率(特异性)为88.82%来表征,证明了GP的有效性模型。这些发现和结果从来源,汇聚,成因和预测因素方面为牡蛎诺如病毒的爆发提供了新的见解。 GP模型为预测潜在的牡蛎诺如病毒暴发和实施管理干预措施提供了一种有效且有效的工具,以预防或至少减少诺如病毒对人类健康和海鲜行业的风险。 (C)2017 Elsevier Ltd.保留所有权利。

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