Risk-based prioritization of suspects detected in riverine water using complementary chromatographic techniques

Journal Article (2021)
Author(s)

Frederic Been (KWR Water Research Institute)

Anneli Kruve (Stockholm University)

Dennis Vughs (KWR Water Research Institute)

Nienke Meekel (KWR Water Research Institute)

Astrid Reus (KWR Water Research Institute)

Anne Zwartsen (KWR Water Research Institute)

Arnoud Wessel (Evides Waterbedrijf)

Astrid Fischer (TU Delft - Civil Engineering & Geosciences, Evides Waterbedrijf)

Thomas ter Laak (KWR Water Research Institute)

Andrea M. Brunner (KWR Water Research Institute)

Research Group
Sanitary Engineering
DOI related publication
https://doi.org/10.1016/j.watres.2021.117612 Final published version
More Info
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Publication Year
2021
Language
English
Research Group
Sanitary Engineering
Journal title
Water Research
Volume number
204
Article number
117612
Downloads counter
212

Abstract

Surface waters are widely used as drinking water sources and hence their quality needs to be continuously monitored. However, current routine monitoring programs are not comprehensive as they generally cover only a limited number of known pollutants and emerging contaminants. This study presents a risk-based approach combining suspect and non-target screening (NTS) to help extend the coverage of current monitoring schemes. In particular, the coverage of NTS was widened by combining three complementary separations modes: Reverse phase (RP), Hydrophilic interaction liquid chromatography (HILIC) and Mixed-mode chromatography (MMC). Suspect lists used were compiled from databases of relevant substances of very high concern (e.g., SVHCs) and the concentration of detected suspects was evaluated based on ionization efficiency prediction. Results show that suspect candidates can be prioritized based on their potential risk (i.e., hazard and exposure) by combining ionization efficiency-based concentration estimation, in vitro toxicity data or, if not available, structural alerts and QSAR.based toxicity predictions. The acquired information shows that NTS analyses have the potential to complement target analyses, allowing to update and adapt current monitoring programs, ultimately leading to improved monitoring of drinking water sources.