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三湖休闲海滩点的细菌和病毒粪便指示物预测模型。

Bacterial and viral fecal indicator predictive modeling at three Great Lakes recreational beach sites.

机构信息

U.S. Environmental Protection Agency, Office of Research and Development, Athens, GA, 30605, United States.

U.S. Environmental Protection Agency, Office of Research and Development, Cincinnati, OH 45268, United States.

出版信息

Water Res. 2022 Sep 1;223:118970. doi: 10.1016/j.watres.2022.118970. Epub 2022 Aug 10.

Abstract

Coliphage are viruses that infect Escherichia coli (E. coli) and may indicate the presence of enteric viral pathogens in recreational waters. There is an increasing interest in using these viruses for water quality monitoring and forecasting; however, the ability to use statistical models to predict the concentrations of coliphage, as often done for cultured fecal indicator bacteria (FIB) such as enterococci and E. coli, has not been widely assessed. The same can be said for FIB genetic markers measured using quantitative polymerase chain reaction (qPCR) methods. Here we institute least-angle regression (LARS) modeling of previously published concentrations of cultured FIB (E. coli, enterococci) and coliphage (F+, somatic), along with newly reported genetic concentrations measured via qPCR for E. coli, enterococci, and general Bacteroidales. We develop site-specific models from measures taken at three beach sites on the Great Lakes (Grant Park, South Milwaukee, WI; Edgewater Beach, Cleveland, OH; Washington Park, Michigan City, IN) to investigate the efficacy of a statistical predictive modeling approach. Microbial indicator concentrations were measured in composite water samples collected five days per week over a beach season (∼15 weeks). Model predictive performance (cross-validated standardized root mean squared error of prediction [SRMSEP] and R) were examined for seven microbial indicators (using log concentrations) and water/beach parameters collected concurrently with water samples. Highest predictive performance was seen for qPCR-based enterococci and Bacteroidales models, with F+ coliphage consistently yielding poor performing models. Influential covariates varied by microbial indicator and site. Antecedent rainfall, bird abundance, wave height, and wind speed/direction were most influential across all models. Findings suggest that some fecal indicators may be more suitable for water quality forecasting than others at Great Lakes beaches.

摘要

噬菌体是感染大肠杆菌(E. coli)的病毒,可能表明在娱乐水中存在肠道病毒病原体。人们越来越感兴趣地将这些病毒用于水质监测和预测;然而,像经常对培养的粪便指示细菌(如肠球菌和大肠杆菌)那样使用统计模型来预测噬菌体浓度的能力尚未得到广泛评估。使用定量聚合酶链反应(qPCR)方法测量的粪便指示细菌遗传标志物也是如此。在这里,我们对以前发表的培养粪便指示细菌(大肠杆菌、肠球菌)和噬菌体(F+、体细胞)浓度以及通过 qPCR 新报告的遗传浓度进行了最小角回归(LARS)建模,这些浓度是使用定量聚合酶链反应(qPCR)方法测量的。我们从五大湖三个海滩(格兰特公园、南密尔沃基,威斯康星州;埃奇沃特海滩、克利夫兰,俄亥俄州;华盛顿公园、密歇根城,印第安纳州)采集的测量数据中开发了特定地点的模型,以研究统计预测建模方法的效果。在海滩季节(约 15 周)期间,每周采集五天的综合水样,以测量微生物指示物浓度。使用对数浓度检查了七个微生物指标(使用对数浓度)和与水样同时采集的水/海滩参数的模型预测性能(交叉验证标准化均方根预测误差 [SRMSEP] 和 R)。基于 qPCR 的肠球菌和拟杆菌模型的预测性能最高,而 F+噬菌体模型的预测性能始终较差。有影响的协变量因微生物指标和地点而异。所有模型中最具影响力的是前期降雨量、鸟类丰度、波高和风速/风向。研究结果表明,在五大湖海滩,一些粪便指示物可能比其他指示物更适合水质预测。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/71a4/9724166/11d294c64565/nihms-1841478-f0001.jpg

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