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. Environmental Sources Marine & Wildlife Remediation Sign in to save

Discrimination of Microplastics and Phytoplankton Using Impedance Cytometry

ACS Sensors 2024 10 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count.
Jonathan Butement, Xiang Wang, Fabrizio Siracusa, Emily R. Miller, Katsiaryna Pabortsava, Matthew C. Mowlem, Daniel Spencer, Hywel Morgan

Summary

Researchers demonstrated that impedance cytometry can discriminate between microplastics and phytoplankton in ocean water samples. The study suggests this technique could enable high-throughput, deployable monitoring of both plankton communities and microplastic pollution levels, addressing a key gap in current marine monitoring capabilities.

Study Type Environmental

Both microplastics and phytoplankton are found together in the ocean as suspended microparticles. There is a need for deployable technologies that can identify, size, and count these particles at high throughput to monitor plankton community structure and microplastic pollution levels. In situ analysis is particularly desirable as it avoids the problems associated with sample storage, processing, and degradation. Current technologies for phytoplankton and microplastic analysis are limited in their capability by specificity, throughput, or lack of deployability. Little attention has been paid to the smallest size fraction of microplastics and phytoplankton below 10 μm in diameter, which are in high abundance. Impedance cytometry is a technique that uses microfluidic chips with integrated microelectrodes to measure the electrical impedance of individual particles. Here, we present an impedance cytometer that can discriminate and count microplastics sampled directly from a mixture of phytoplankton in a seawater-like medium in the 1.5-10 μm size range. A simple machine learning algorithm was used to classify microplastic particles based on dual-frequency impedance measurements of particle size (at 1 MHz) and cell internal electrical composition (at 500 MHz). The technique shows promise for marine deployment, as the chip is sensitive, rugged, and mass producible.

Share this paper