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Research Article | Open Access

Machine learning-enhanced multimodal electrochemical bioassay using multifunctional high-entropy alloy for complex mixtures

Haibei Liang1,2,3,§ Wenhui Shi4,§ Tianshu Chu1,2,3 Yonggang Yao4 ( )Bowei Zhang1,2,3 ( )Fu-Zhen Xuan1,2,3 ( )
Shanghai Key Laboratory of Intelligent Sensing and Detection Technology, East China University of Science and Technology, Shanghai 200237, China
School of Mechanical and Power Engineering, East China University of Science and Technology, Shanghai 200237, China
Key Laboratory of Pressure Systems and Safety of Ministry of Education, East China University of Science and Technology, Shanghai 200237, China
State Key Laboratory of Materials Processing and Die & Mould Technology, School of Materials Science and Engineering, Huazhong University of Science and Technology, Wuhan 430074, China

§ Haibei Liang and Wenhui Shi contributed equally to this work.

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Abstract

The detection of multiple trace analytes using single sensors is often impeded by the limited sensitivity of material and the interference form overlapping signals in complex mixtures. Here, we introduce an efficient and durable heterostructured high-entropy alloy (HEA) material, where non-noble HEA nanoparticles are used to disperse and stabilize Pt clusters (denoted as HEA@Pt). The HEA@Pt exhibits high sensitivity to three trace analytes (dopamine, uric acid, and paracetamol) during the electrochemical detection process, leveraging its multifunctional catalytic sensing capabilities for diverse mixtures. Additionally, to address the challenge of signal overlap, we integrate a recurrent neural network into multimodal sensing, combined with machine learning (ML) algorithms to accurately identify multiple analytes in mixtures. After five-fold cross-validation, the prediction accuracy deviations for dopamine, uric acid, and paracetamol were 3.20, 9.18 and 3.84, respectively, with goodness-of-fit values of 0.984, 0.992 and 0.990. The model achieved a prediction accuracy of 96.67% for unknown mixture samples, demonstrating robust generalization performance. This approach of multifunctional HEA combined with ML algorithms effectively overcomes detection errors caused by the complex detection of multiple chemical substances and the overlap of multiple response signals, thereby enabling accurate and reliable identification of multi-target analytes.

Graphical Abstract

A multi-mode electrochemical sensing system for detecting trace substances in the human body was constructed based on high-entropy alloy (HEA) and electrochemical technology. Fast response and accurate recognition of various signals have been achieved through neural network algorithms.

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Nano Research
Article number: 94907802

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Cite this article:
Liang H, Shi W, Chu T, et al. Machine learning-enhanced multimodal electrochemical bioassay using multifunctional high-entropy alloy for complex mixtures. Nano Research, 2025, 18(11): 94907802. https://doi.org/10.26599/NR.2025.94907802
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Received: 09 March 2025
Revised: 13 June 2025
Accepted: 15 July 2025
Published: 24 October 2025
© The Author(s) 2025. Published by Tsinghua University Press.

This is an open access article under the terms of the Creative Commons Attribution 4.0 International License (CC BY 4.0, https://creativecommons.org/licenses/by/4.0/).