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应用常规和替代粪便指示菌的经验预测模型在北卡罗来纳州东部水域的应用。

Application of empirical predictive modeling using conventional and alternative fecal indicator bacteria in eastern North Carolina waters.

机构信息

Department of Environmental Sciences and Engineering, University of North Carolina at Chapel Hill, 3431 Arendell Street, Morehead City, NC 28557, USA.

出版信息

Water Res. 2012 Nov 15;46(18):5871-82. doi: 10.1016/j.watres.2012.07.050. Epub 2012 Aug 30.

Abstract

Coastal and estuarine waters are the site of intense anthropogenic influence with concomitant use for recreation and seafood harvesting. Therefore, coastal and estuarine water quality has a direct impact on human health. In eastern North Carolina (NC) there are over 240 recreational and 1025 shellfish harvesting water quality monitoring sites that are regularly assessed. Because of the large number of sites, sampling frequency is often only on a weekly basis. This frequency, along with an 18-24 h incubation time for fecal indicator bacteria (FIB) enumeration via culture-based methods, reduces the efficiency of the public notification process. In states like NC where beach monitoring resources are limited but historical data are plentiful, predictive models may offer an improvement for monitoring and notification by providing real-time FIB estimates. In this study, water samples were collected during 12 dry (n = 88) and 13 wet (n = 66) weather events at up to 10 sites. Statistical predictive models for Escherichiacoli (EC), enterococci (ENT), and members of the Bacteroidales group were created and subsequently validated. Our results showed that models for EC and ENT (adjusted R(2) were 0.61 and 0.64, respectively) incorporated a range of antecedent rainfall, climate, and environmental variables. The most important variables for EC and ENT models were 5-day antecedent rainfall, dissolved oxygen, and salinity. These models successfully predicted FIB levels over a wide range of conditions with a 3% (EC model) and 9% (ENT model) overall error rate for recreational threshold values and a 0% (EC model) overall error rate for shellfish threshold values. Though modeling of members of the Bacteroidales group had less predictive ability (adjusted R(2) were 0.56 and 0.53 for fecal Bacteroides spp. and human Bacteroides spp., respectively), the modeling approach and testing provided information on Bacteroidales ecology. This is the first example of a set of successful statistical predictive models appropriate for assessment of both recreational and shellfish harvesting water quality in estuarine waters.

摘要

沿海和河口水域是人类活动影响强烈的地方,同时也是娱乐和海鲜捕捞的场所。因此,沿海和河口水质直接影响人类健康。在北卡罗来纳州东部,有超过 240 个娱乐用水质量监测站点和 1025 个贝类捕捞用水质量监测站点,这些站点定期进行评估。由于站点数量众多,采样频率通常每周仅一次。这种频率,加上基于培养的方法对粪便指示菌(FIB)计数的 18-24 小时孵育时间,降低了公共通知过程的效率。在北卡罗来纳州等海滩监测资源有限但历史数据丰富的州,预测模型通过提供实时 FIB 估计值,可能为监测和通知提供改进。在这项研究中,在多达 10 个站点采集了 12 个干燥天气(n=88)和 13 个湿润天气(n=66)的水样。创建并随后验证了用于大肠埃希氏菌(EC)、肠球菌(ENT)和拟杆菌门成员的统计预测模型。我们的结果表明,EC 和 ENT 模型(调整后的 R(2)分别为 0.61 和 0.64)纳入了一系列前期降雨、气候和环境变量。EC 和 ENT 模型最重要的变量是 5 天前期降雨量、溶解氧和盐度。这些模型在广泛的条件下成功预测了 FIB 水平,对娱乐阈值的总体错误率为 3%(EC 模型)和 9%(ENT 模型),对贝类阈值的总体错误率为 0%(EC 模型)。尽管拟杆菌门成员的建模能力较低(粪便拟杆菌和人拟杆菌的调整后的 R(2)分别为 0.56 和 0.53),但建模方法和测试提供了有关拟杆菌门生态学的信息。这是一组成功的统计预测模型的第一个示例,适用于评估河口水域的娱乐和贝类捕捞用水质量。

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