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Innovations

Electrical characterization of conductive textile materials and its evaluation as electrodes for venous occlusion plethysmography

, , , &
Pages 359-367 | Received 06 May 2013, Accepted 04 Jun 2013, Published online: 03 Jul 2013
 

Abstract

The ambulatory monitoring of biosignals involves the use of sensors, electrodes, actuators, processing tools and wireless communication modules. When a garment includes these elements with the purpose of recording vital signs and responding to specific situations it is call a ‘Smart Wearable System’. Over the last years several authors have suggested that conductive textile material (e-textiles) could perform as electrode for these systems. This work aims at implementing an electrical characterization of e-textiles and an evaluation of their ability to act as textile electrodes for lower extremity venous occlusion plethysmography (LEVOP). The e-textile electrical characterization is carried out using two experimental set-ups (in vitro evaluation). Besides, LEVOP records are obtained from healthy volunteers (in vivo evaluation). Standard Ag/AgCl electrodes are used for comparison in all tests. Results shown that the proposed e-textiles are suitable for LEVOP recording and a good agreement between evaluations (in vivo and in vitro) is found.

Acknowledgements

The authors would like to thank Dr Nicolás Nieva for his help with image capture and posterior processing.

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