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Deep Learning-Enabled Swallowing Monitoring and Postoperative Recovery Biosensing System
Journal
IEEE Sensors Journal
Start Page
1-1
ISSN
1530-437X
1558-1748
2379-9153
Date Issued
2024
Author(s)
Chih-Ning Tsai
Pei-Wen Yang
Tzu-Yen Huang
Jung-Chih Chen
Hsin-Yi Tseng
Che-Wei Wu
Amrit Sarmah
Pulikkutty Subramaniyan
DOI
10.1109/JSEN.2024.3487992
Abstract
This study introduces an innovative 3D-printed dry electrode tailored for biosensing in postoperative recovery scenarios. Fabricated through a drop-coating process, the electrode incorporates a novel 2D material, MXene, and PEDOT:PSS on a polylactide (PLA) substrate. The PEDOT:PSS layer functions as an effective oxidation barrier for MXene, thereby enhancing the electrode's conductivity, biocompatibility, stability, and reusability. The design of the electrode is inspired by the paraboloidal dome-shaped suction cups found on tentacles of the octopus, a feature that substantially increases the surface area. These electrodes have been successfully integrated into a surface electromyography (sEMG) system, designed to monitor postoperative conditions in patients diagnosed with neck cancer or dysphagia. The system leverages a deep learning model to aid physicians in the quantitative assessment of post-surgical conditions of patients. Additionally, the study outlines a novel manufacturing approach for biosensing systems, demonstrating considerable promise in improving the utility in clinical environments.
Subjects
Dry Electrode
Dysphagia
MXene
PEDOT:PSS
Postoperative Recovery
Surface Electromyography
Swallowing Monitoring
Wearable Device
Publisher
Institute of Electrical and Electronics Engineers (IEEE)
Type
journal article