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Thermo-Responsive and Phase-Separated Hydrogels for Cardiac Arrhythmia Diagnosis with Deep Learning Algorithms

Hui Chen, Jian Zhou*, Huan Cao, Dongfang Liang, Lei Chen, Yuanfan Yang, Wang Lu, Jianfei Xie*, Huigao Duan*, Yongqing Fu

*Corresponding author for this work

    Research output: Contribution to journalArticlepeer-review

    17 Citations (Scopus)

    Abstract

    Adhesive epidermal hydrogel electrodes are essential for achieving robust signal transduction and cardiac arrhythmia diagnosis, but detachment of conventional adhesive dressings easily causes secondary damage to delicate wound tissues due to lack of programmable capability of changed adhesion. Herein, we developed hydrogel-based skin-interfacing electrodes capable of on-demand programmable adhesion and detachment to capture electrocardiogram signals for diagnosing cardiac arrhythmia. This was achieved by integrating dynamic multiscale contact and coordinated regulation through temperature-mediated switchable hydrogen bond interactions in phase-separated smart hydrogels. Through micro-scale regulation of adhesive molecules and meso-scale modulation of the modulus, the hydrogel electrodes can be rapidly transited between a slippery state (adhesion ~1.3 N/m) and a sticky one (adhesion ~110 N/m) during its peeling from skin. This achieves an 84.5-fold increase of on/off adhesive energy (or reducing the adhesion at the skin interface by 98%) at low temperatures compared to normal skin temperature. A real-time cloud platform was developed by integrating hydrogel electrodes, enabling remote electrocardiogram (ECG) monitoring. For clinical applications, such developed skin sensing platform effectively captured cardiac activities in patients with eight common arrhythmias, achieving by the recorded high-fidelity and analyzable electrical signals. With the assistance of deep learning algorithms, we demonstrated a wearable cardiac arrhythmia intelligent diagnosis system which enables real-time conversion of the collected ECG data into diagnostic evaluations with a recognition accuracy of 98.5%.
    Original languageEnglish
    Article number117262
    Pages (from-to)1-11
    Number of pages11
    JournalBiosensors and Bioelectronics
    Volume276
    Early online date14 Feb 2025
    DOIs
    Publication statusPublished - 15 May 2025

    Keywords

    • Hydrogel
    • switchable adhesion
    • ECG
    • cardiac arrhythmia diagnosis
    • AI
    • Cardiac arrhythmia diagnosis
    • Switchable adhesion

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