A sustainable analytical workflow for microplastic detection and typification via NIR-HSI: Validation through sea salt analysis
Identificadores
URI: https://hdl.handle.net/10481/110951Metadatos
Mostrar el registro completo del ítemAutor
Medina García, Miriam; Amigo, Jose Manuel; Gorla, Giulia; Cruz Muñoz, Enmanuel; Ballabio, Davide; Martínez Domingo, Miguel Ángel; Valero Benito, Eva María; Jiménez Carvelo, Ana MaríaEditorial
ELSEVIER
Fecha
2026Referencia bibliográfica
Green Analytical Chemistry 16 (2026) 100327
Resumen
This work presents a sustainable analytical workflow for the detection and typification of microplastics (MPs) in
environmental matrices using Near Infrared Hyperspectral Imaging (NIR-HSI) combined with chemometrics. The
proposed methodology enables rapid, non-destructive, and solvent-free analysis, aligning with green analytical
principles. A hierarchical classification strategy based on Partial Least Squares Discriminant Analysis (PLS-DA)
was developed to discriminate between salt and MP spectra and subsequently to typify the polymeric nature of
the detected MPs.
Four of the most prevalent polymers in the Mediterranean Sea (polyethylene (PE), polyethylene terephthalate
(PET), polystyrene (PS), and polyvinyl chloride (PVC)) were selected as reference standards. The workflow was
first optimised and validated using reference and simulated salts and then applied to real sea salt samples
collected from Mediterranean coastal saltworks and commercial grocery salts. The results demonstrated excellent
classification performance, with 100 % sensitivity, specificity, and precision in both validation stages. Among the
analysed samples, MP contamination was confirmed in 3 coastal and 2 commercial salts, with PET and PE being
the dominant polymers. These findings highlight sea salt as a valuable proxy for marine MP contamination and as
a potential route of human exposure. Overall, this study introduces a green, efficient, and reproducible analytical
approach for MPs detection and typification, providing a foundation for future large-scale environmental
monitoring and risk assessment initiatives.





