| Literature DB >> 27837909 |
Frère L1, Paul-Pont I2, Moreau J3, Soudant P2, Lambert C2, Huvet A4, Rinnert E5.
Abstract
Every step of microplastic analysis (collection, extraction and characterization) is time-consuming, representing an obstacle to the implementation of large scale monitoring. This study proposes a semi-automated Raman micro-spectroscopy method coupled to static image analysis that allows the screening of a large quantity of microplastic in a time-effective way with minimal machine operator intervention. The method was validated using 103 particles collected at the sea surface spiked with 7 standard plastics: morphological and chemical characterization of particles was performed in <3h. The method was then applied to a larger environmental sample (n=962 particles). The identification rate was 75% and significantly decreased as a function of particle size. Microplastics represented 71% of the identified particles and significant size differences were observed: polystyrene was mainly found in the 2-5mm range (59%), polyethylene in the 1-2mm range (40%) and polypropylene in the 0.335-1mm range (42%).Entities:
Keywords: Automating; Environmental monitoring; Microplastics; Morphology; Raman micro-spectroscopy; Surface seawater
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Year: 2016 PMID: 27837909 DOI: 10.1016/j.marpolbul.2016.10.051
Source DB: PubMed Journal: Mar Pollut Bull ISSN: 0025-326X Impact factor: 5.553