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Vibrio parahaemolyticus in the Chesapeake Bay: Operational In Situ Prediction and Forecast Models Can Benefit from Inclusion of Lagged Water Quality Measurements

机译:切萨皮克湾副溶血性弧菌:运维原位预测和预报模型可得益于滞后水质测量

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Vibrio parahaemolyticus is a leading cause of seafood-borne gastroenteritis. Given its natural presence in brackish waters, there is a need to develop operational forecast models that can sufficiently predict the bacterium’s spatial and temporal variation. This work attempted to develop V. parahaemolyticus prediction models using frequently measured time-indexed and -lagged water quality measures. Models were built using a large data set (n?=?1,043) of surface water samples from 2007 to 2010 previously analyzed for V. parahaemolyticus in the Chesapeake Bay. Water quality variables were classified as time indexed, 1-month lag, and 2-month lag. Tobit regression models were used to account for V. parahaemolyticus measures below the limit of quantification and to simultaneously estimate the presence and abundance of the bacterium. Models were evaluated using cross-validation and metrics that quantify prediction bias and uncertainty. Presence classification models containing only one type of water quality parameter (e.g., temperature) performed poorly, while models with additional water quality parameters (i.e., salinity, clarity, and dissolved oxygen) performed well. Lagged variable models performed similarly to time-indexed models, and lagged variables occasionally contained a predictive power that was independent of or superior to that of time-indexed variables. Abundance estimation models were less effective, primarily due to a restricted number of samples with abundances above the limit of quantification. These findings indicate that an operational in situ prediction model is attainable but will require a variety of water quality measurements and that lagged measurements will be particularly useful for forecasting. Future work will expand variable selection for prediction models and extend the spatial-temporal extent of predictions by using geostatistical interpolation techniques.IMPORTANCEVibrio parahaemolyticus is one of the leading causes of seafood-borne illness in the United States and across the globe. Exposure often occurs from the consumption of raw shellfish. Despite public health concerns, there have been only sporadic efforts to develop environmental prediction and forecast models for the bacterium preharvest. This analysis used commonly sampled water quality measurements of temperature, salinity, dissolved oxygen, and clarity to develop models for V. parahaemolyticus in surface water. Predictors also included measurements taken months before water was tested for the bacterium. Results revealed that the use of multiple water quality measurements is necessary for satisfactory prediction performance, challenging current efforts to manage the risk of infection based upon water temperature alone. The results also highlight the potential advantage of including historical water quality measurements. This analysis shows promise and lays the groundwork for future operational prediction and forecast models.
机译:副溶血性弧菌是海鲜传播的胃肠炎的主要原因。鉴于其在微咸水中的天然存在,需要开发可充分预测细菌的时空变化的运行预测模型。这项工作尝试使用经常测量的时间索引和滞后水质测量方法来开发副溶血弧菌预测模型。使用之前在切萨皮克湾分析过的副溶血性弧菌的2007年至2010年的大量水(n = 1043)数据集建立了模型。水质变量分为时间索引,滞后1个月和滞后2个月。使用Tobit回归模型来解释低于定量极限的副溶血性弧菌的测量,并同时估算细菌的存在和丰度。使用交叉验证和量化预测偏差和不确定性的指标对模型进行评估。仅包含一种类型水质参数(例如温度)的状态分类模型的效果不佳,而具有其他水质参数(例如盐度,透明度和溶解氧)的模型表现良好。滞后变量模型的执行与时间索引模型类似,并且滞后变量有时包含的预测能力独立于或优于时间索引变量。丰度估计模型的效果较差,这主要是因为样本数量有限,且丰度超过了定量限制。这些发现表明,可以得到一个可操作的现场预测模型,但将需要进行各种水质测量,而滞后测量对于预测将特别有用。未来的工作将使用地统计插值技术扩展预测模型的变量选择范围,并扩展预测的时空范围。重要信息副溶血性弧菌是美国和全球海产品传播疾病的主要原因之一。食用贝类经常会导致接触。尽管有公共卫生问题,但只有零星的努力来为细菌收获前开发环境预测和预测模型。该分析使用温度,盐度,溶解氧和净度的常用采样水质测量值来开发地表水中副溶血弧菌的模型。预测指标还包括在对细菌进行水测试前几个月进行的测量。结果显示,要想获得令人满意的预测性能,必须使用多种水质测量方法,这对仅根据水温来控制感染风险的当前工作提出了挑战。结果还突出显示了包括历史水质测量结果的潜在优势。该分析显示了希望,并为将来的运营预测和预测模型奠定了基础。

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