0
Article ? AI-assigned paper type based on the abstract. Classification may not be perfect — flag errors using the feedback button. Tier 2 ? Original research — experimental, observational, or case-control study. Direct primary evidence. Detection Methods Human Health Effects Sign in to save

MicroplasticMass Estimation Using Two-DimensionalChemical Images from Quantum-Cascade Laser-Based Infrared Spectrometers

Figshare 2025 Score: 38 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Borja Ferreiro (22513733), José M. Andrade (22513736), Adrián López-Rosales (22513739), Soledad Muniategui-Lorenzo (2405884)

Summary

Researchers developed a method to estimate microplastic particle mass using two-dimensional chemical images from quantum cascade laser-based infrared microscopy, addressing the inability of standard spectroscopic imaging to provide particle mass data critical for toxicological assessment.

Modern spectroscopic chemical imaging techniques perform nondestructive, relatively fast sample analysis to count and chemically characterize individual particles. However, they do not offer information on particle mass, a relevant parameter for several disciplines, like toxicology. This work strives to estimate the mass of plastic particles using a tiered sequence of steps and models that employ bidimensional parameters (height, width, perimeter, area) reported by state-of-the-art tunable quantum-cascade laser-based infrared imaging spectroscopy. A hybrid model that does not need calibration steps for its routine application is proposed for the first time. The shape of each particle is assessed individually, rather than setting them initially. Fibers are modeled as cylinders using an equivalent cylinder concept, while fragments are approximated to either parallelepipeds or spheroids, based on their 2D circularity. Previously published models were tested, modified, and hybridized to assess the mass of known sets of plastic particles whose size ranged from 20 to 1500 μm and whose total weight ranged from 190 to 9400 μg. The hybrid approach estimated the mass of exemplary samples with relative errors lower than 20% (a satisfactory level for these estimations) and worked well in size and weight ranges barely tested before. An Excel-based spreadsheet (NOMME, Number Of Microplastics and their Mass Estimation) was developed to streamline the application of the hybrid model.

Sign in to start a discussion.

More Papers Like This

Article Tier 2

Microplastic Mass Estimation Using Two-Dimensional Chemical Images from Quantum-Cascade Laser-Based Infrared Spectrometers

Researchers developed a method to estimate microplastic particle mass using two-dimensional chemical images from quantum cascade laser-based infrared microscopy, filling a gap in spectroscopic techniques that can characterize particles but not provide mass information relevant for toxicology.

Article Tier 2

Rapid Identification and Quantification of Microplastics in the Environment by Quantum Cascade Laser-Based Hyperspectral Infrared Chemical Imaging

Quantum cascade laser infrared microscopy was evaluated as a rapid method for identifying and quantifying microplastics in environmental samples. The technique showed potential for faster polymer identification compared to conventional FTIR mapping, offering advantages for high-throughput microplastic monitoring.

Article Tier 2

Reviewing the fundamentals and best practices to characterize microplastics using state–of–the-art quantum-cascade laser reflectance-absorbance spectroscopy

Researchers reviewed best practices for using quantum cascade laser infrared imaging (a high-speed scanning technology) to reliably identify microplastic particles, addressing technical pitfalls like particle-size effects on spectral readings. Standardizing this method is important for generating consistent, comparable data as governments push for official microplastic monitoring programs.

Article Tier 2

Improved method for rapid characterization of microplastics in environmental samples with QCL-IR based microscopy and micro spectroscopy (Conference Presentation)

Researchers presented a quantum cascade laser infrared (QCL-IR) microscopy method for rapidly characterizing microplastics in environmental samples. The approach combines spatial imaging with chemical identification to classify particles by size, shape, and polymer type faster than conventional FTIR microscopy. Improved throughput in microplastic characterization helps researchers process the large sample volumes needed for environmental monitoring studies.

Article Tier 2

Microplastic Mass Quantification Using Focal Plane Array-Based Micro-Fourier-Transform Infrared Imaging

Researchers developed a method using focal plane array Fourier-transform infrared imaging to quantify microplastic mass by estimating particle volume from Beer's law absorption at each pixel, enabling three-dimensional geometry characterization. The approach provides more accurate mass-based quantification than counting or area methods alone.

Share this paper