Abstract
Concentrations of metabolites of illicit drugs in sewage water can be measured with great accuracy and precision, thanks to the development of sensitive and robust analytical methods. Based on assumptions about factors including the excretion profile of the parent drug, routes of administration and the number of individuals using the wastewater system, the level of consumption of a drug can be estimated from such measured concentrations. When presenting results from these ‘back-calculations’, the multiple sources of uncertainty are often discussed, but are not usually explicitly taken into account in the estimation process. In this paper we demonstrate how these calculations can be placed in a more formal statistical framework by assuming a distribution for each parameter involved, based on a review of the evidence underpinning it. Using a Monte Carlo simulations approach, it is then straightforward to propagate uncertainty in each parameter through the back-calculations, producing a distribution for instead of a single estimate of daily or average consumption. This can be summarised for example by a median and credible interval. To demonstrate this approach, we estimate cocaine consumption in a large urban UK population, using measured concentrations of two of its metabolites, benzoylecgonine and norbenzoylecgonine. We also demonstrate a more sophisticated analysis, implemented within a Bayesian statistical framework using Markov chain Monte Carlo simulation. Our model allows the two metabolites to simultaneously inform estimates of daily cocaine consumption and explicitly allows for variability between days. After accounting for this variability, the resulting credible interval for average daily consumption is appropriately wider, representing additional uncertainty. We discuss possibilities for extensions to the model, and whether analysis of wastewater samples has potential to contribute to a prevalence model for illicit drug use.
Highlights
The analysis of communal sewage water entering wastewater treatment plants (WWTPs) offers potential for enhancing our knowledge of illicit drug consumption (Daughton, 2001; Frost et al, 2008; van Nuijs et al, 2011a; Zuccato et al, 2008)
State-of-the-art sensitive and robust analytical methods mean that concentrations of drug target residues (DTRs), such as metabolites of an illicit drug, in wastewater can be measured with great accuracy and precision (Baker and Kasprzyk-Hordern, 2011b; Castiglioni et al, 2013)
This has the advantage of combining simulation with statistical estimation of parameters from multiple data sources. This approach – sometimes called ‘comprehensive decision analysis’ – has been popular in decision sciences for over 30 years (Parmigiani, 2002; Samsa et al, 1999; Spiegelhalter et al, 1999). It opens up possibilities for many more sophisticated statistical analyses, such as modelling variability over time or allowing consumption of a drug to be simultaneously informed by concentrations of multiple DTRs
Summary
The analysis of communal sewage water entering wastewater treatment plants (WWTPs) offers potential for enhancing our knowledge of. As in Baker et al (2014–in this issue), only the analytical uncertainty in the measurement of DTR concentrations in a wastewater sample has been explicitly taken into account Since this uncertainty is generally very small, back-calculated drug consumption estimates often incorrectly appear to be very precise. This approach – sometimes called ‘comprehensive decision analysis’ – has been popular in decision sciences for over 30 years (Parmigiani, 2002; Samsa et al, 1999; Spiegelhalter et al, 1999) For wastewater analysis, it opens up possibilities for many more sophisticated statistical analyses, such as modelling variability over time or allowing consumption of a drug to be simultaneously informed by concentrations of multiple DTRs
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