Vosough, Maryam; Schmidt, Torsten Claus; Renner, Gerrit:
Non-target screening in water analysis: recent trends of data evaluation, quality assurance, and their future perspectives
In: Analytical and Bioanalytical Chemistry (2024), in press
2024article/chapter in journalOA Hybrid
ChemistryScientific institutes » Centre for Water and Environmental Research (ZWU)Faculty of Chemistry » Analytische Chemie
Related: 1 publication(s)
Title in English:
Non-target screening in water analysis: recent trends of data evaluation, quality assurance, and their future perspectives
Author:
Vosough, Maryam
;
Schmidt, Torsten ClausUDE
GND
1074278453
LSF ID
14592
ORCID
0000-0003-1107-4403ORCID iD
Other
connected with university
;
Renner, GerritUDE
LSF ID
61787
ORCID
0000-0003-3808-5890ORCID iD
Other
connected with university
Year of publication:
2024
Open Access?:
OA Hybrid
Scopus ID
Note:
in press
Language of text:
English
Keyword, Topic:
Aquatic contaminants ; Chemometrics/machine learning ; Data standardization ; High-resolution mass spectrometry ; Non-target screening ; QA/QC in water analysis ; Quantitative non-target screening
Type of resource:
Text

Abstract in English:

This trend article provides an overview of recent advancements in Non-Target Screening (NTS) for water quality assessment, focusing on new methods in data evaluation, qualification, quantification, and quality assurance (QA/QC). It highlights the evolution in NTS data processing, where open-source platforms address challenges in result comparability and data complexity. Advanced chemometrics and machine learning (ML) are pivotal for trend identification and correlation analysis, with a growing emphasis on automated workflows and robust classification models. The article also discusses the rigorous QA/QC measures essential in NTS, such as internal standards, batch effect monitoring, and matrix effect assessment. It examines the progress in quantitative NTS (qNTS), noting advancements in ionization efficiency-based quantification and predictive modeling despite challenges in sample variability and analytical standards. Selected studies illustrate NTS’s role in water analysis, combining high-resolution mass spectrometry with chromatographic techniques for enhanced chemical exposure assessment. The article addresses chemical identification and prioritization challenges, highlighting the integration of database searches and computational tools for efficiency. Finally, the article outlines the future research needs in NTS, including establishing comprehensive guidelines, improving QA/QC measures, and reporting results. It underscores the potential to integrate multivariate chemometrics, AI/ML tools, and multi-way methods into NTS workflows and combine various data sources to understand ecosystem health and protection comprehensively.