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Efficacy of monitoring and empirical predictive modeling at improving public health protection at Chicago beaches

机译:监测和经验预测模型在改善芝加哥海滩公共卫生保护方面的功效

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摘要

Efforts to improve public health protection in recreational swimming waters have focused on obtaining real-time estimates of water quality. Current monitoring techniques rely on the time-intensive culturing of fecal indicator bacteria (FIB) from water samples, but rapidly changing FIB concentrations result in management errors that lead to the public being exposed to high FIB concentrations (type II error) or beaches being closed despite acceptable water quality (type I error). Empirical predictive models may provide a rapid solution, but their effectiveness at improving health protection has not been adequately assessed. We sought to determine if emerging monitoring approaches could effectively reduce risk of illness exposure by minimizing management errors. We examined four monitoring approaches (inactive, current protocol, a single predictive model for all beaches, and individual models for each beach) with increasing refinement at 14 Chicago beaches using historical monitoring and hydrometeorological data and compared management outcomes using different standards for decision-making. Predictability (R2) of FIB concentration improved with model refinement at all beaches but one. Predictive models did not always reduce the number of management errors and therefore the overall illness burden. Use of a Chicago-specific single-sample standard-rather than the default 235 E. coli CFU/100 ml widely used-together with predictive modeling resulted in the greatest number of open beach days without any increase in public health risk. These results emphasize that emerging monitoring approaches such as empirical models are not equally applicable at all beaches, and combining monitoring approaches may expand beach access.
机译:改善休闲游泳水域公共卫生保护的工作集中在获取水质的实时估计上。当前的监测技术依赖于从水样品中大量培养粪便指示菌(FIB)的时间,但是快速变化的FIB浓度会导致管理错误,导致公众暴露于高FIB浓度(II型错误)或海滩被关闭尽管水质可以接受(I型错误)。经验预测模型可能提供快速解决方案,但尚未充分评估其在改善健康保护方面的有效性。我们试图确定新兴的监测方法是否可以通过最大程度地减少管理错误来有效降低疾病风险。我们使用历史监测和水文气象数据研究了四种监测方法(无效,当前协议,针对所有海滩的单个预测模型以及针对每个海滩的单个模型),以及在14个芝加哥海滩上不断完善的方法,并使用不同的决策标准比较了管理成果。 FIB浓度的可预测性(R2)随模型改进而改善,除一个海滩外。预测模型并不总是减少管理错误的次数,因此也不会减少总体疾病负担。使用芝加哥特定的单一样品标准品(而不是广泛使用的默认235大肠杆菌CFU / 100 ml)与预测模型一起使用,可以在不增加公共卫生风险的情况下,使海滩开放日最多。这些结果强调,新兴的监测方法(例如经验模型)并非同样适用于所有海滩,并且结合监测方法可能会扩大海滩的使用范围。

著录项

  • 来源
    《Water Research 》 |2011年第4期| p.1659-1668| 共10页
  • 作者单位

    U.S. Geological Survey, Great Lakes Science Center, Lafee Michigan Ecological Research Station, 1100 N. Mineral Springs Road, Porter, IN 46304, USA;

    U.S. Geological Survey, Great Lakes Science Center, Lafee Michigan Ecological Research Station, 1100 N. Mineral Springs Road, Porter, IN 46304, USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    e. coli; fecal indicator bacteria; recreational water quality; lake michigan; swimming; risk;

    机译:e。大肠杆菌粪便指示菌休闲水质;密歇根湖;游泳的;风险;

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