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应用粪便指示物数据对挪威 Glomma 河表面水中诺如病毒浓度进行定量微生物风险评估建模的理论方法。

A theoretical approach to using faecal indicator data to model norovirus concentration in surface water for QMRA: Glomma River, Norway.

机构信息

Water & Health Pty Ltd, P.O. 648, Salamander Bay, 2317, Australia; Department of Mathematical Sciences and Technology, Norwegian University of Life Sciences, Campus Ås, P.O. Box 5003, N-1432 ÅS, Norway.

SARChI Chair, IWWT, Durban University of Technology, PO Box 1334, Durban, 4000, South Africa.

出版信息

Water Res. 2016 Mar 15;91:31-7. doi: 10.1016/j.watres.2015.12.037. Epub 2015 Dec 24.

Abstract

Monitoring of faecal indicator organisms, such as Escherichia coli, in environmental and drinking waters is inadequate for the protection public health, primarily due to the poor relationship between E. coli and the occurrence of human pathogens, especially viruses, in environmental samples. Nevertheless, measurements of faecal indicator organisms within the risk based approach, can provide valuable information related to the magnitude and variability of faecal contamination, and hence provide insight into the expected level of potential pathogen contamination. In this study, a modelling approach is presented that estimates the concentration of norovirus in surface water relying on indicator monitoring data, combined with specific assumptions regarding the source of faecal contamination. The model is applied to a case study on drinking water treatment intake from the Glomma River in Norway. Norovirus concentrations were estimated in two sewage sources discharging into the river upstream of the drinking water offtake, and at the source water intake itself. The characteristics of the assumed source of faecal contamination, including the norovirus prevalence in the community, the size of the contributing population and the relative treatment efficacy for indicators and pathogens in the sewage treatment plant, influenced the magnitude and variability in the estimated norovirus concentration in surface waters. The modelling exercise presented is not intended to replace pathogen enumeration from environmental samples, but rather is proposed as a complement to better understand the sources and drivers of viruses in surface waters. The approach has the potential to inform sampling regimes by identifying when the best time would be to collect environmental samples; fill in the gaps between sparse datasets; and potentially extrapolate existing datasets in order to model rarer events such as an outbreak in the contributing population. In addition, and perhaps most universally, in the absence of pathogen data, this approach can be used as a first step to predict the source water pathogen concentration under different contamination scenarios for the purpose of quantifying microbial risks.

摘要

对环境和饮用水中的粪便指示生物(如大肠杆菌)进行监测,不足以保护公众健康,主要是因为大肠杆菌与环境样本中人类病原体(尤其是病毒)的发生之间关系较差。然而,基于风险的方法中对粪便指示生物的测量可以提供与粪便污染程度和变异性相关的有价值信息,从而了解潜在病原体污染的预期水平。在这项研究中,提出了一种建模方法,该方法依赖于指示物监测数据来估计地表水中小肠结肠炎耶尔森氏菌的浓度,并结合有关粪便污染来源的具体假设。该模型应用于挪威 Glomma 河饮用水处理厂进水的案例研究。在排入饮用水取水口上游河流的两个污水源以及水源进水处,估算了诺如病毒的浓度。粪便污染来源的特征,包括社区中诺如病毒的流行率、参与人群的规模以及污水处理厂中指示物和病原体的相对处理效果,影响了地表水中小肠结肠炎耶尔森氏菌浓度的大小和变异性。提出的建模练习并非旨在替代环境样本中的病原体计数,而是作为一种补充,以更好地了解地表水病毒的来源和驱动因素。该方法具有通过确定何时是收集环境样本的最佳时间来告知采样方案的潜力;填补稀疏数据集之间的空白;并有可能推断现有数据集,以模拟更罕见的事件,如参与人群中的暴发。此外,也许最普遍的是,在没有病原体数据的情况下,该方法可以用作预测不同污染情景下水源病原体浓度的第一步,以便量化微生物风险。

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