Bacterial bioreporter detection of arsenic associated with iron oxides.

Details

Serval ID
serval:BIB_E6394958E0C3
Type
Article: article from journal or magazin.
Collection
Publications
Institution
Title
Bacterial bioreporter detection of arsenic associated with iron oxides.
Journal
Environmental Science. Processes & Impacts
Author(s)
van Genuchten C.M., Finger A., van der Meer J.R., Peña J.
ISSN
2050-7895 (Electronic)
ISSN-L
2050-7887
Publication state
Published
Issued date
2018
Peer-reviewed
Oui
Volume
20
Number
6
Pages
913-922
Language
english
Abstract
Bacterial bioreporters are engineered microorganisms that have found recent application as a low-cost method of detecting arsenic (As) in environmental systems. However, no assessment exists of bioreporter detection of particle-bound As. We applied an Escherichia coli-based bioreporter to assess the bioavailability of As(v) adsorbed by goethite (α-FeOOH), 2-line ferrihydrite and As(v) co-precipitated with Fe(iii). We found that As(v) bound to the surface of crystalline goethite was not detected by the bioreporters, which contrasted sharply the 50% detection of As(v) adsorbed by ferrihydrite. In addition, the presence of Ca2+ caused a systematic decrease in the bioreporter-detected As(v) fraction in the ferrihydrite samples. For co-precipitated As(v)-Fe(iii) samples, we found a similar bioreporter-detected As(v) fraction (<0.2) regardless of crystallite size (0.7-2.5 nm) or As Fe-1 surface loading (10-60 mol%). Our results reveal that the bioreporter response depends largely on aggregated particle size, which is expected to physically isolate As(v) from bioreporters by encapsulating surface-bound As(v) in coagulated flocs. Our results show that while bioreporters do not perform optimally in water that contains Fe particles, this method could be developed for sludge testing and for monitoring As levels in the product water of decentralized Fe-based As treatment systems.
Pubmed
Web of science
Create date
15/06/2018 18:32
Last modification date
20/08/2019 17:09
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