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Illicit and pharmaceutical drug consumption estimated via wastewater analysis. Part B: Placing back-calculations in a formal statistical framework

机译:通过废水分析估算出非法和药物消耗量。 B部分:将反向计算置于正式的统计框架中

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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.
机译:由于开发了灵敏而强大的分析方法,因此可以高精度和高精度地测量污水中违禁药物代谢物的浓度。基于对包括母体药物的排泄曲线,给药途径和使用废水系统的个人数量在内的因素的假设,可以从这种测得的浓度估算药物的消费水平。当呈现这些“反向计算”的结果时,经常讨论不确定性的多种来源,但通常在估计过程中未明确考虑。在本文中,我们通过假设所涉及的每个参数的分布情况,通过使用蒙特卡罗模拟方法对支撑该方法的证据进行回顾,证明了如何将这些计算方法放在一个更正式的统计框架中,从而可以轻松地传播不确定性。每个参数都可以通过反向计算得出,而不是对每日或平均消耗量进行一次估算即可得出分布。例如,这可以通过中位数和可信区间来概括。为了证明这种方法,我们使用测得的两种代谢产物苯甲酰基芽子碱和正苯甲酰基芽子碱的浓度来估算英国大城市人群的可卡因消费量。我们还演示了使用Markov链蒙特卡洛模拟在贝叶斯统计框架内实施的更复杂的分析。我们的模型允许两种代谢物同时提供每日可卡因消费量的估计值,并明确允许各天之间的差异。在考虑了这种可变性之后,得出的平均每日消费可信区间适当地变宽了,这代表了更多的不确定性。我们讨论了对该模型进行扩展的可能性,以及对废水样本进行分析是否有可能有助于非法药物使用流行模型的发展。

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