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Drinking water QMRA and decision-making: Sensitivity of risk to common independence assumptions about model inputs.

Authors :
de Brito Cruz, Dafne
Schmidt, Philip J.
Emelko, Monica B.
Source :
Water Research. Aug2024, Vol. 259, pN.PAG-N.PAG. 1p.
Publication Year :
2024

Abstract

• In microbial risk analysis, model inputs are typically assumed to be independent. • Incorrect independence assumptions can lead to under- or over-estimation of risk. • Input (in)dependence assumptions can affect decision-making. • Evaluation of effects of input independence on risk requires case-specific analysis. • Independence assumptions on drinking water QMRA can be assessed with new framework. When assessing risk posed by waterborne pathogens in drinking water, it is common to use Monte Carlo simulations in Quantitative Microbial Risk Assessment (QMRA). This method accounts for the variables that affect risk and their different values in a given system. A common underlying assumption in such analyses is that all random variables are independent (i.e., one is not associated in any way with another). Although the independence assumption simplifies the analysis, it is not always correct. For example, treatment efficiency can depend on microbial concentrations if changes in microbial concentrations either affect treatment themselves or are associated with water quality changes that affect treatment (e.g., during/after climate shocks like extreme precipitation events or wildfires). Notably, the effects of erroneous assumptions of independence in QMRA have not been widely discussed. Due to the implications of drinking water safety decisions on public health protection, it is critical that risk models accurately reflect the context being studied to meaningfully support decision-making. This work illustrates how dependence between pathogen concentration and either treatment efficiency or water consumption can impact risk estimates using hypothetical scenarios of relevance to drinking water QMRA. It is shown that the mean and variance of risk estimates can change substantially with different degrees of correlation. Data from a water supply system in Calgary, Canada are also used to illustrate the effect of dependence on risk. Recognizing the difficulty of obtaining data to empirically assess dependence, a framework to guide evaluation of the effect of dependence is presented to enhance support for decision making. This work emphasizes the importance of acknowledging and discussing assumptions implicit to models. [Display omitted] [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00431354
Volume :
259
Database :
Academic Search Index
Journal :
Water Research
Publication Type :
Academic Journal
Accession number :
178021891
Full Text :
https://doi.org/10.1016/j.watres.2024.121877