Document of bibliographic reference 396380

BibliographicReference record

Type
Bibliographic resource
Type of document
Journal article
BibLvlCode
AS
Title
From microplastics to pixels: testing the robustness of two machine learning approaches for automated, Nile red-based marine microplastic identification
Abstract
Despite the urgent need for accurate and robust observations of microplastics in the marine environment to assess current and future environmental risks, existing procedures remain labour-intensive, especially for smaller-sized microplastics. In addition to this, microplastic analysis faces challenges due to environmental weathering, impacting the reliability of research relying on pristine plastics. This study addresses these knowledge gaps by testing the robustness of two automated analysis techniques which combine machine learning algorithms with fluorescent colouration of Nile red (NR)-stained particles. Heterogeneously shaped uncoloured microplastics of various polymers—polyethylene (PE), polyethylene terephthalate (PET), polypropylene (PP), polystyrene (PS), and polyvinyl chloride (PVC)—ranging from 100 to 1000 µm in size and weathered under semi-controlled surface and deep-sea conditions, were stained with NR and imaged using fluorescence stereomicroscopy. This study assessed and compared the accuracy of decision tree (DT) and random forest (RF) models in detecting and identifying these weathered plastics. Additionally, their analysis time and model complexity were evaluated, as well as the lower size limit (2–4 µm) and the interoperability of the approach. Decision tree and RF models were comparably accurate in detecting and identifying pristine plastic polymers (both > 90%). For the detection of weathered microplastics, both yielded sufficiently high accuracies (> 77%), although only RF models were reliable for polymer identification (> 70%), except for PET particles. The RF models showed an accuracy > 90% for particle predictions based on 12–30 pixels, which translated to microplastics sized < 10 µm. Although the RF classifier did not produce consistent results across different labs, the inherent flexibility of the method allows for its swift adaptation and optimisation, ensuring the possibility to fine-tune the method to specific research goals through customised datasets, thereby strengthening its robustness. The developed method is particularly relevant due to its ability to accurately analyse microplastics weathered under various marine conditions, as well as ecotoxicologically relevant microplastic sizes, making it highly applicable to real-world environmental samples.
Bibliographic citation
Meyers, N.; De Witte, B.; Schmidt, N.; Herzke, D.; Fuda, J.-L.; Vanavermaete, D.; Janssen, C.R.; Everaert, G. (2024). From microplastics to pixels: testing the robustness of two machine learning approaches for automated, Nile red-based marine microplastic identification. Environm. Sc. & Poll. Res. 31: 61860–61875. https://dx.doi.org/10.1007/s11356-024-35289-0
Topic
Marine
Is peer reviewed
true

Authors

author
Name
Nelle Meyers
Identifier
https://orcid.org/0000-0001-9205-6260
Affiliation
Vlaams Instituut voor de Zee
author
Name
Bavo De Witte
Identifier
https://orcid.org/0000-0002-4982-6351
Affiliation
Instituut voor Landbouw-, Visserij- en Voedingsonderzoek
author
Name
Natascha Schmidt
author
author
Name
Jean-Luc Fuda
author
Name
David Vanavermaete
Identifier
https://orcid.org/0000-0002-2087-9062
Affiliation
Instituut voor Landbouw-, Visserij- en Voedingsonderzoek
author
Name
Colin Janssen
Identifier
https://orcid.org/0000-0002-7781-6679
Affiliation
Universiteit Gent; Faculteit Bio-ingenieurswetenschappen; Vakgroep Dierwetenschappen en Aquatische Ecologie; Laboratorium voor Milieutoxicologie
author
Name
Gert Everaert
Identifier
https://orcid.org/0000-0003-4305-0617
Affiliation
Vlaams Instituut voor de Zee

Links

referenced creativework
type
DOI
accessURL
https://dx.doi.org/10.1007/s11356-024-35289-0

thesaurus terms

term
Automation (term code: 684 - defined in term set: ASFA Thesaurus List)
Fluorescence (term code: 74594 - defined in term set: CSA Technology Research Database Master Thesaurus)
Machine learning (term code: 74315 - defined in term set: CSA Technology Research Database Master Thesaurus)
Marine pollution (term code: 5015 - defined in term set: ASFA Thesaurus List)
Monitoring (term code: 5312 - defined in term set: ASFA Thesaurus List)

Document metadata

date created
2024-10-23
date modified
2024-11-18