posted on 2020-09-30, 10:08authored byVitor H. da Silva, Fionn Murphy, José M. Amigo, Colin Stedmon, Jakob Strand
Microplastics
are defined as microscopic plastic particles in the
range from few micrometers and up to 5 mm. These small particles are
classified as primary microplastics when they are manufactured in
this size range, whereas secondary microplastics arise from the fragmentation
of larger objects. Microplastics are widespread emerging pollutants,
and investigations are underway to determine potential harmfulness
to biota and human health. However, progress is hindered by the lack
of suitable analytical methods for rapid, routine, and unbiased measurements.
This work aims to develop an automated analytical method for the characterization
of small microplastics (<100 μm) using micro-Fourier transform
infrared (μ-FTIR) hyperspectral imaging and machine learning
tools. Partial least squares discriminant analysis (PLS-DA) and soft
independent modeling of class analogy (SIMCA) models were evaluated,
applying different data preprocessing strategies for classification
of nine of the most common polymers produced worldwide. The hyperspectral
images were also analyzed to quantify particle abundance and size
automatically. PLS-DA presented a better analytical performance in
comparison with SIMCA models with higher sensitivity, sensibility,
and lower misclassification error. PLS-DA was less sensitive to edge
effects on spectra and poorly focused regions of particles. The approach
was tested on a seabed sediment sample (Roskilde Fjord, Denmark) to
demonstrate the method efficiency. The proposed method offers an efficient
automated approach for microplastic polymer characterization, abundance
numeration, and size distribution with substantial benefits for method
standardization.