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Microplastic detection and identification by Nile red staining: Towards a semi-automated, cost- and time-effective technique

The Science of The Total Environment 2022 176 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 50 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Meyers, Nelle, Meyers, Nelle, Meyers, Nelle, Gert Everaert, Meyers, Nelle, Meyers, Nelle, Lisa Devriese, M. Vandegehuchte Meyers, Nelle, Gert Everaert, Lisa Devriese, Gert Everaert, Gert Everaert, Bavo De Witte, Lisa Devriese, Lisa Devriese, Lisa Devriese, Gert Everaert, Gert Everaert, Gert Everaert, Gert Everaert, Ana I. Catarino, Ana I. Catarino, Ana I. Catarino, Bavo De Witte, Ana I. Catarino, Ana I. Catarino, Bavo De Witte, Ana I. Catarino, Ana I. Catarino, Lisa Devriese, Lisa Devriese, Lisa Devriese, Lisa Devriese, Bavo De Witte, Ana I. Catarino, Ana I. Catarino, Ana I. Catarino, Ana I. Catarino, Ana I. Catarino, Ana I. Catarino, Ana I. Catarino, Ana I. Catarino, Bavo De Witte, Colin Janssen, Meyers, Nelle, Gert Everaert, Lisa Devriese, Lisa Devriese, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, M. Vandegehuchte M. Vandegehuchte Bavo De Witte, Bavo De Witte, Bavo De Witte, Bavo De Witte, Bavo De Witte, Ana I. Catarino, Ana I. Catarino, Ana I. Catarino, Ana I. Catarino, Ana I. Catarino, Ana I. Catarino, Ana I. Catarino, Ana I. Catarino, Ana I. Catarino, Ana I. Catarino, Bavo De Witte, Ana I. Catarino, Ana I. Catarino, Bavo De Witte, Bavo De Witte, Bavo De Witte, Lisa Devriese, Gert Everaert, Lisa Devriese, Lisa Devriese, Colin Janssen, Ana I. Catarino, Colin Janssen, Lisa Devriese, M. Vandegehuchte M. Vandegehuchte M. Vandegehuchte M. Vandegehuchte M. Vandegehuchte M. Vandegehuchte Annelies Declercq, Ana I. Catarino, Ana I. Catarino, Lisa Devriese, Colin Janssen, Colin Janssen, Ana I. Catarino, Annelies Declercq, Colin Janssen, Gert Everaert, Colin Janssen, Ana I. Catarino, Ana I. Catarino, Ana I. Catarino, Lisa Devriese, Colin Janssen, Annelies Declercq, Lisa Devriese, Colin Janssen, Gert Everaert, Annelies Declercq, Gert Everaert, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Ana I. Catarino, Aisling Brenan, Colin Janssen, Aisling Brenan, Bavo De Witte, Colin Janssen, Gert Everaert, Lisa Devriese, Gert Everaert, Gert Everaert, Bavo De Witte, Gert Everaert, Ana I. Catarino, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Lisa Devriese, Bavo De Witte, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Lisa Devriese, Colin Janssen, Colin Janssen, Colin Janssen, Lisa Devriese, Colin Janssen, Gert Everaert, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Gert Everaert, Gert Everaert, Gert Everaert, Gert Everaert, Gert Everaert, Lisa Devriese, Meyers, Nelle, Meyers, Nelle, Meyers, Nelle, M. Vandegehuchte Gert Everaert, Gert Everaert, Gert Everaert, Gert Everaert, Colin Janssen, Gert Everaert, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, M. Vandegehuchte Colin Janssen, M. Vandegehuchte Gert Everaert, Gert Everaert, M. Vandegehuchte M. Vandegehuchte Colin Janssen, Colin Janssen, Colin Janssen, Ana I. Catarino, Bavo De Witte, Meyers, Nelle, Gert Everaert, Bavo De Witte, Bavo De Witte, Ana I. Catarino, Ana I. Catarino, Colin Janssen, Colin Janssen, Meyers, Nelle, Colin Janssen, Gert Everaert, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Colin Janssen, Gert Everaert, Gert Everaert, Gert Everaert, Gert Everaert, Gert Everaert, Lisa Devriese, Ana I. Catarino, Bavo De Witte, Colin Janssen, Gert Everaert, Colin Janssen, Gert Everaert, Gert Everaert, Gert Everaert, Gert Everaert, Gert Everaert, Ana I. Catarino, Ana I. Catarino, Colin Janssen, M. Vandegehuchte Gert Everaert, Gert Everaert, Gert Everaert, Gert Everaert, Bavo De Witte, Ana I. Catarino, Gert Everaert, Gert Everaert, M. Vandegehuchte M. Vandegehuchte Annelies Declercq, M. Vandegehuchte M. Vandegehuchte Bavo De Witte, Lisa Devriese, Lisa Devriese, Bavo De Witte, Gert Everaert, Lisa Devriese, Colin Janssen, Lisa Devriese, M. Vandegehuchte Bavo De Witte, Bavo De Witte, Bavo De Witte, Bavo De Witte, Bavo De Witte, Ana I. Catarino, Gert Everaert, Gert Everaert, M. Vandegehuchte

Summary

Researchers developed a semi-automated, cost-effective method for microplastic detection using Nile red fluorescent staining, showing it can significantly reduce the time and expense of identifying microplastics compared to traditional spectroscopic approaches.

Microplastic pollution is an issue of concern due to the accumulation rates in the marine environment combined with the limited knowledge about their abundance, distribution and associated environmental impacts. However, surveying and monitoring microplastics in the environment can be time consuming and costly. The development of cost- and time-effective methods is imperative to overcome some of the current critical bottlenecks in microplastic detection and identification, and to advance microplastics research. Here, an innovative approach for microplastic analysis is presented that combines the advantages of high-throughput screening with those of automation. The proposed approach used Red Green Blue (RGB) data extracted from photos of Nile red-fluorescently stained microplastics (50-1200 μm) to train and validate a 'Plastic Detection Model' (PDM) and a 'Polymer Identification Model' (PIM). These two supervised machine learning models predicted with high accuracy the plastic or natural origin of particles (95.8%), and the polymer types of the microplastics (88.1%). The applicability of the PDM and the PIM was demonstrated by successfully using the models to detect (92.7%) and identify (80%) plastic particles in spiked environmental samples that underwent laboratorial processing. The classification models represent a semi-automated, high-throughput and reproducible method to characterize microplastics in a straightforward, cost- and time-effective yet reliable way.

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