Issue 15, 2024

Polymer bead size revealed via neural network analysis of single-entity electrochemical data

Abstract

Single-entity electrochemistry methods for detecting polymer microbeads offer a promising approach to analyzing microplastics. However, conventional methods for determining microparticle size face challenges due to non-uniform current distribution across the surface of a sensing disk microelectrode. In this study, we demonstrate the utility of neural network (NN) analysis for extracting the size information from single-entity electrochemical data (current steps). We developed fully connected regression NN models capable of predicting microparticle radii based on experimental parameters and current–time data. Once trained, the models provide near-real-time predictions with good accuracy for microparticles of the same size, as well as the average size of two different-sized microparticles in solution. Potential future applications include analyzing various bioparticles, such as viruses and bacteria of different sizes and shapes.

Graphical abstract: Polymer bead size revealed via neural network analysis of single-entity electrochemical data

Supplementary files

Article information

Article type
Paper
Submitted
10 May 2024
Accepted
01 Jul 2024
First published
08 Jul 2024
This article is Open Access
Creative Commons BY-NC license

Analyst, 2024,149, 4054-4059

Polymer bead size revealed via neural network analysis of single-entity electrochemical data

G. Gemadzie, B. Zhang and A. Boika, Analyst, 2024, 149, 4054 DOI: 10.1039/D4AN00670D

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