NSERC Industrial Chair on Drinking Water, Department of Civil, Geological, and Mining Engineering, Polytechnique Montreal, Montreal, Quebec, H3C 3A7, Canada.
Canada Research Chair in Source Water Protection, Department of Civil, Geological, and Mining Engineering, Polytechnique Montreal, Montreal, Quebec, H3C 3A7, Canada.
Risk Anal. 2021 Aug;41(8):1413-1426. doi: 10.1111/risa.13612. Epub 2020 Oct 26.
Temporal variations in concentrations of pathogenic microorganisms in surface waters are well known to be influenced by hydrometeorological events. Reasonable methods for accounting for microbial peaks in the quantification of drinking water treatment requirements need to be addressed. Here, we applied a novel method for data collection and model validation to explicitly account for weather events (rainfall, snowmelt) when concentrations of pathogens are estimated in source water. Online in situ β-d-glucuronidase activity measurements were used to trigger sequential grab sampling of source water to quantify Cryptosporidium and Giardia concentrations during rainfall and snowmelt events at an urban and an agricultural drinking water treatment plant in Quebec, Canada. We then evaluate if mixed Poisson distributions fitted to monthly sampling data ( = 30 samples) could accurately predict daily mean concentrations during these events. We found that using the gamma distribution underestimated high Cryptosporidium and Giardia concentrations measured with routine or event-based monitoring. However, the log-normal distribution accurately predicted these high concentrations. The selection of a log-normal distribution in preference to a gamma distribution increased the annual mean concentration by less than 0.1-log but increased the upper bound of the 95% credibility interval on the annual mean by about 0.5-log. Therefore, considering parametric uncertainty in an exposure assessment is essential to account for microbial peaks in risk assessment.
众所周知,地表水中致病微生物的浓度变化受到水文气象事件的影响。需要合理的方法来解释饮用水处理要求量化中的微生物峰值。在这里,我们应用了一种新的数据收集和模型验证方法,在估计水源中病原体浓度时明确考虑天气事件(降雨、融雪)。在线原位β-d-葡萄糖醛酸酶活性测量用于触发序列抓取采样,以量化加拿大魁北克市一个城市和一个农业饮用水处理厂在降雨和融雪事件期间的隐孢子虫和贾第鞭毛虫浓度。然后,我们评估每月采样数据(n = 30 个样本)拟合的混合泊松分布是否可以准确预测这些事件期间的每日平均浓度。我们发现,使用伽马分布低估了常规或基于事件监测测量的高浓度隐孢子虫和贾第鞭毛虫。然而,对数正态分布准确地预测了这些高浓度。与伽马分布相比,选择对数正态分布将年平均浓度增加不到 0.1-log,但将年平均 95%置信区间的上限增加了约 0.5-log。因此,在风险评估中考虑暴露评估中的参数不确定性对于解释微生物峰值至关重要。