Microneedle-Based Integrated Three-Electrode System for Pesticide Detection Using Machine Learning
Abstract
Pesticides contribute to enhanced agricultural productivity, yet excessive residues pose significant health risks to humans as they persist even after washing, making their detection in crops critically important. In this study, we employed 3D-printed microneedle arrays (MNs) integrated with differential pulse voltammetry (DPV) and deep learning (DL) algorithm to capture the electrochemical characteristic signals of pesticide molecules. To enhance sensing performance, the working electrode composed of Au film was further modified with carbon nanotubes, achieving a increase in surface area and significantly improved current response. Successful classification and identification were demonstrated on predefined unknown pesticide samples through electrochemical fingerprint analysis. The experimental results revealed that all algorithms achieved average accuracy exceeding 90% in interpreting DPV fingerprints, with the convolutional neural network (CNN) attaining 100% classification accuracy, thereby confirming the method's efficacy in pesticide discrimination. In addition, the performance on the extended dataset is also satisfactory. This innovative integration of DPV and DL technologies paves a novel pathway for pesticide classification and recognition, offering substantial potential to advance agricultural safety protocols and safeguard public health regulation.
- This article is part of the themed collection: Analyst HOT Articles 2025