Authors
Grégoire Surrel, Francisco Rincon, Srinivasan Murali, David Atienza
Publication date
2016/7
Conference
VLSI (ISVLSI), 2016 IEEE Computer Society Annual Symposium on
Pages
230-235
Publisher
IEEE
Description
Obstructive Sleep Apnea (OSA) is one of the main sleep disorders, but only 10% of the cases are diagnosed. Moreover, there is a lack of tools for long-term monitoring of OSA, since current systems are too bulky and intrusive to be used continuously. In this context, recent studies have shown that it is possible to detect it automatically based on single-lead ECG recordings. This approach can be used in non-invasive smart wearable sensors which measure and process bio-signals online. This work focuses on the implementation, optimization and integration of an algorithm for OSA detection for preventive health-care. It relies on a frequency-domain analysis while targeting an ultra-low power embedded wearable device. As it must share its resources usage with other computations, it must be as lightweight as possible. Our current results based on publicly available signals show a classification accuracy of up to 83.2 …
Total citations
201820192020202120222023422521
Scholar articles
G Surrel, F Rincón, S Murali, D Atienza - 2016 IEEE Computer Society Annual Symposium on …, 2016