Importance of Distributional Forms for the Assessment of Protozoan Pathogens Concentrations in Drinking-Water Sources

Journal Article (2020)
Author(s)

Émile Sylvestre (Polytechnique Montreal)

Michèle Prévost (Polytechnique Montreal)

Patrick Smeets (KWR Water Research Institute)

Gertjan Medema (TU Delft - Sanitary Engineering, KWR Water Research Institute)

Jean Baptiste Burnet (Polytechnique Montreal)

Philippe Cantin (Polytechnique Montreal)

Manuela Villion (Ministry of Sustainable Development, Environment, and Fight Against Climate Change)

Caroline Robert (Ministry of Sustainable Development, Environment, and Fight Against Climate Change)

Sarah Dorner (Polytechnique Montreal)

DOI related publication
https://doi.org/10.1111/risa.13613 Final published version
More Info
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Publication Year
2020
Language
English
Issue number
8
Volume number
41
Pages (from-to)
1396-1412
Downloads counter
199

Abstract

The identification of appropriately conservative statistical distributions is needed to predict microbial peak events in drinking water sources explicitly. In this study, Poisson and mixed Poisson distributions with different upper tail behaviors were used for modeling source water Cryptosporidium and Giardia data from 30 drinking water treatment plants. Small differences (<0.5-log) were found between the “best” estimates of the mean Cryptosporidium and Giardia concentrations with the Poisson–gamma and Poisson–log-normal models. However, the upper bound of the 95% credibility interval on the mean Cryptosporidium concentrations of the Poisson–log-normal model was considerably higher (>0.5-log) than that of the Poisson–gamma model at four sites. The improper choice of a model may, therefore, mislead the assessment of treatment requirements and health risks associated with the water supply. Discrimination between models using the marginal deviance information criterion (mDIC) was unachievable because differences in upper tail behaviors were not well characterized with available data sets ((Formula presented.)). Therefore, the gamma and the log-normal distributions fit the data equally well but may predict different risk estimates when they are used as an input distribution in an exposure assessment. The collection of event-based monitoring data and the modeling of larger routine monitoring data sets are recommended to identify appropriately conservative distributions to predict microbial peak events.