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| Funder | Engineering and Physical Sciences Research Council |
|---|---|
| Recipient Organization | University of York |
| Country | United Kingdom |
| Start Date | Sep 15, 2024 |
| End Date | Mar 15, 2028 |
| Duration | 1,277 days |
| Number of Grantees | 2 |
| Roles | Student; Supervisor |
| Data Source | UKRI Gateway to Research |
| Grant ID | 2928880 |
Background. The number and diversity of organic chemicals produced global is consistently increasing, as are the number of substances that are being detected in freshwater resources. 1 This is a cause of significant concern for water quality, and associated impacts on human health. The current scale of chemical contaminants in drinking water is only partly known and some
parts of the world remain unsurveyed, primarily due to lack of local analytical instrumentation which is required to accurately analyse water samples. The Southern African Development Community (SADC) is one such area, despite the fact that more than 75% of its population are dependent on groundwater for various activities. 2,3
Over the last three years, we have initiated a collaborative project with research groups in Botswana to begin sampling aquatic systems across the region to better understand the prevalence of organic contaminants. 4,5 Project aim. In this project, we will build on our initial work and perform an extended sampling campaign
and in-depth analysis to obtain a broad picture of the nature, prevalence and mobility of organic chemicals across the wider SADC. Key objectives. Sampling campaigns will be undertaken across a selected areas of the SADC (we expect this to be the Okavango delta region) to obtain an extended set of water samples, with respect
to location, and time of sampling (e.g. wet versus dry season). Advanced analytical techniques will be applied to analyse the samples within the Centre of Excellence for Mass Spectrometry at York. Machine Learning (ML) and Artificial Intelligence (AI) tools will be applied to expand information obtained via non-targeted and semi-quantitative analysis. A
database of observations of organic contaminants will be compiled, that will be analysed using AI tools to identify correlations between chemical observations and mobility. Novelty. By conducting suspect and non-targeted screening, this project will make no assumptions as to the molecular components in the SADC water sampled, and will generate a raw data
library that can be data-mined for years to come. Data obtained will deliver the widest possible information on the number and nature of organic chemicals present. New ML approaches will be applied to help elucidate unknown molecules detected. Second-stage measurements will then use targeted analysis (the current gold standard) to quantify
selected key contaminants of high concern (e.g. antibiotics, agricultural chemicals). The current gold standard for analysis of complex mixtures (such as aquatic samples) involves liquid chromatography coupled high resolution mass spectrometry. The data bank acquired will be analysed using routine artificial intelligence methods to obtain correlations in
contaminants versus geography (water courses, population centres, etc). 6-9 References 1 Wang, et al. (2020). Environmental Science and Technology, 54, 2575-2584. https://doi.org/10.1021/acs.est.9b06379. 2 Selwe, K.P. et al., Environmental Toxicology and Chemistry, 41, 382, (2022). 3 https://link.springer.com/article/10.1007/s10661-024-12613-2
4 Selwe, K. P. et al., Environmental Toxicology and Chemistry, 43, 1, (52-61), (2023). 5 Kgato P. Selwe, et al. Emerging Contaminants, 100337, (2024). 6 https://doi.org/10.1016/j.eehl.2022.06.001 7 https://link.springer.com/article/10.1007/s40572-022-00389-x 8 https://www.youtube.com/watch?v=M3AQTs5iN5g
9 https://www.sciencedirect.com/science/article/pii/S014765132301254X
University of York
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