Civil and Environmental Engineering Department, Louisiana State University, Baton Rouge, LA, USA.
Mar Environ Res. 2012 Sep;80:62-9. doi: 10.1016/j.marenvres.2012.06.011. Epub 2012 Jul 20.
Norovirus is a highly infectious pathogen that is commonly found in oysters growing in fecally contaminated waters. Norovirus outbreaks can cause the closure of oyster harvesting waters and acute gastroenteritis in humans associated with consumption of contaminated raw oysters. Extensive efforts and progresses have been made in detection and forecasting of oyster norovirus outbreaks over the past decades. The main objective of this paper is to provide a literature review of methods and techniques for detecting and forecasting oyster norovirus outbreaks and thereby to identify the future directions for improving the detection and forecasting of norovirus outbreaks. It is found that (1) norovirus outbreaks display strong seasonality with the outbreak peak occurring commonly in December-March in the U.S. and April-May in the Europe; (2) norovirus outbreaks are affected by multiple environmental factors, including but not limited to precipitation, temperature, solar radiation, wind, and salinity; (3) various modeling approaches may be employed to forecast norovirus outbreaks, including Bayesian models, regression models, Artificial Neural Networks, and process-based models; and (4) diverse techniques are available for near real-time detection of norovirus outbreaks, including multiplex PCR, seminested PCR, real-time PCR, quantitative PCR, and satellite remote sensing. The findings are important to the management of oyster growing waters and to future investigations into norovirus outbreaks. It is recommended that a combined approach of sensor-assisted real time monitoring and modeling-based forecasting should be utilized for an efficient and effective detection and forecasting of norovirus outbreaks caused by consumption of contaminated oysters.
诺如病毒是一种高度传染性病原体,通常存在于受粪便污染的水中生长的牡蛎中。诺如病毒暴发会导致牡蛎捕捞水域关闭,并在人类中引起与食用受污染的生牡蛎有关的急性肠胃炎。在过去几十年中,人们在牡蛎诺如病毒暴发的检测和预测方面做出了广泛的努力并取得了进展。本文的主要目的是提供一份关于检测和预测牡蛎诺如病毒暴发的方法和技术的文献综述,从而确定改善诺如病毒暴发检测和预测的未来方向。研究发现:(1) 诺如病毒暴发具有很强的季节性,美国的暴发高峰通常出现在 12 月至 3 月,欧洲的暴发高峰通常出现在 4 月至 5 月;(2) 诺如病毒暴发受到多种环境因素的影响,包括但不限于降水、温度、太阳辐射、风和盐度;(3) 可以采用各种建模方法来预测诺如病毒暴发,包括贝叶斯模型、回归模型、人工神经网络和基于过程的模型;(4) 有多种技术可用于实时检测诺如病毒暴发,包括多重 PCR、半嵌套 PCR、实时 PCR、定量 PCR 和卫星遥感。这些发现对牡蛎养殖水域的管理和未来对诺如病毒暴发的研究具有重要意义。建议采用传感器辅助实时监测和基于模型的预测相结合的方法,以有效检测和预测因食用受污染牡蛎而引起的诺如病毒暴发。