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Permittivity‐Based Microparticle Classification by the Integration of Impedance Cytometry and Microwave Resonators

Advanced Materials 2023 25 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 55 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Uzay Tefek, Burak Sarı, Hashim Alhmoud, M. Selim Hanay

Summary

Researchers developed a new microfluidic sensing platform that can classify individual microparticles based on their permittivity, a measure of how a material responds to electric fields. By combining impedance cytometry with microwave resonant sensing, the system can distinguish between particles of different materials regardless of size variations. The technology offers a promising approach for identifying and sorting microplastics and other tiny particles in environmental samples.

Polymers

Permittivity of microscopic particles can be used as a classification parameter for applications in materials and environmental sciences. However, directly measuring the permittivity of individual microparticles has proven to be challenging due to the convoluting effect of particle size on capacitive signals. To overcome this challenge, a sensing platform is built to independently obtain both the geometric and electric size of a particle, by combining impedance cytometry and microwave resonant sensing in a microfluidic chip. This way the microwave signal, which contains both permittivity and size effects, can be normalized by the size information provided by impedance cytometry to yield an intensive parameter that depends only on permittivity. The technique allows to differentiate between polystyrene and soda lime glass microparticles-below 22 µm in diameter-with more than 94% accuracy, despite their similar sizes and electrical characteristics. Furthermore, it is shown that the same technique can be used to differentiate between normal healthy cells and fixed cells of the same geometric size. The technique offers a potential route for targeted applications such as environmental monitoring of microplastic pollution or quality control in pharmaceutical industry.

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