» Articles » PMID: 28651217

Modeling In-sewer Transformations at Catchment Scale - Implications on Drug Consumption Estimates in Wastewater-based Epidemiology

Overview
Journal Water Res
Date 2017 Jun 27
PMID 28651217
Citations 12
Authors
Affiliations
Soon will be listed here.
Abstract

To which extent illicit drugs are transformed during in-sewer transport, depends on a number of factors: i) substance-specific transformation rates, ii) environmental conditions, iii) point of discharge (location of drug user) and iv) sewer network properties, primarily hydraulic residence time (HRT) and the ratio of biofilm contact area to wastewater volume (A/V). Assessing associated uncertainties typically requires numerous simulations. Therefore, we propose a new two-step modeling framework: 1) Quantify hydrodynamic conditions. This computationally demanding step was performed once in SWMM to derive HRT and A/V for each potential point of discharge (node) in three catchments of different size. 2) Estimate biomarker loss. In this step, Monte Carlo simulations were performed for defined scenarios. Depending on assumptions about drug user distribution and prevalence, a number of nodes was sampled. For each node an empirical first-order transformation model was applied with flow-path-corresponding HRT and A/V from step 1. Biotic and abiotic transformation rates were sampled from distributions combining variability of different biofilms. In our modeling study, median losses were >30% for amphetamine, 6-monoacetylmorphine and 6-acetylcodeine in all three catchments with high uncertainty (5%-100% loss), which would imply a systematic underestimation of consumption when neglecting in-sewer processes. Median losses for 21 other investigated biomarkers were <10% with different uncertainty ranges - "no substantial transformation" was confirmed for nine substances in a real sewer segment with a 2-h residence time. Transferability of these results must be tested for other catchments. To further reduce uncertainty, mainly additional knowledge on transformation rates, particularly in biofilm, and their distribution across a sewer network is needed to update model input objectively. Our approach allows efficient testing and, furthermore, can be expanded for many other human biomarkers. Accounting for biomarker stability during in-sewer transport will avoid biased estimates and further improve wastewater-based epidemiology.

Citing Articles

When case reporting becomes untenable: Can sewer networks tell us where COVID-19 transmission occurs?.

Wang Y, Liu P, VanTassell J, Hilton S, Guo L, Sablon O Water Res. 2023; 229:119516.

PMID: 37379453 PMC: 9763902. DOI: 10.1016/j.watres.2022.119516.


Biomarker selection strategies based on compound stability in wastewater-based epidemiology.

Gao Z, Li P, Lin H, Lin W, Ren Y Environ Sci Pollut Res Int. 2022; 30(3):5516-5529.

PMID: 36418835 PMC: 9684832. DOI: 10.1007/s11356-022-24268-y.


The role of the sewer system in estimating urban emissions of chemicals of emerging concern.

Zillien C, Posthuma L, Roex E, Ragas A Rev Environ Sci Biotechnol. 2022; 21(4):957-991.

PMID: 36311376 PMC: 9589831. DOI: 10.1007/s11157-022-09638-9.


Correlation between SARS-CoV-2 RNA concentration in wastewater and COVID-19 cases in community: A systematic review and meta-analysis.

Li X, Zhang S, Sherchan S, Orive G, Lertxundi U, Haramoto E J Hazard Mater. 2022; 441:129848.

PMID: 36067562 PMC: 9420035. DOI: 10.1016/j.jhazmat.2022.129848.


Lead time of early warning by wastewater surveillance for COVID-19: Geographical variations and impacting factors.

Kumar M, Jiang G, Kumar Thakur A, Chatterjee S, Bhattacharya T, Mohapatra S Chem Eng J. 2022; 441:135936.

PMID: 35345777 PMC: 8942437. DOI: 10.1016/j.cej.2022.135936.