4.7 Article

Mapping of Spatiotemporal Auricular Electrophysiological Signals Reveals Human Biometric Clusters

Journal

ADVANCED HEALTHCARE MATERIALS
Volume 11, Issue 23, Pages -

Publisher

WILEY
DOI: 10.1002/adhm.202201404

Keywords

full-auricle electrophysiological monitoring; graphene-based 3D electrodes; human biometric clusters; machine learning; personalized healthcare sensors

Funding

  1. Hong Kong Research Grants Council's Joint Laboratory Funding Scheme [JLFS/E-104/18]
  2. Hong Kong Research Grants Council's General Research Fund [11204918]
  3. University of Hong Kong Seed Fund for Translational and Applied Research [201711160034]
  4. Hong Kong Centre for Cerebro-cardiovascular Health Engineering (COCHE) [201711160034]
  5. Shanghai Municipal Science and Technology Major Project [2018SHZDZX01]
  6. Shanghai Center for Brain Science and Brain-Inspired Technology
  7. Hong Kong Centre for Cerebro-cardiovascular Health Engineering (COCHE), Lingang Laboratory [LG-QS-202202-02]

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This article introduces a 3D graphene-based ear-conformable sensing device with embedded and distributed 3D electrodes for full-auricle physiological monitoring. By studying more than 30 ears, specific AESR changes in the auricular region after cycling exercise were observed and clustered into four groups through machine learning-based data analysis. Furthermore, correlations between AESR and heart rate and blood pressure were studied.
Underneath the ear skin there are rich vascular network and sensory nerve branches. Hence, the 3D mapping of auricular electrophysiological signals can provide new biomedical perspectives. However, it is still extremely challenging for current sensing techniques to cover the entire ultra-curved auricle. Here, a 3D graphene-based ear-conformable sensing device with embedded and distributed 3D electrodes for full-auricle physiological monitoring is reported. As a proof-of-concept, spatiotemporal auricular electrical skin resistance (AESR) mapping is demonstrated for the first time, and human subject-specific AESR distributions are observed. From the data of more than 30 ears (both right and left ears), the auricular region-specific AESR changes after cycling exercise are observed in 98% of the tests and are clustered into four groups via machine learning-based data analyses. Correlations of AESR with heart rate and blood pressure are also studied. This 3D electronic platform and AESR-based biometrical findings show promising biomedical applications.

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