Joint Use of Vital Signs and Cough Sounds for Pandemic Detection
Author | Abdel-Ghani, Ayah |
Author | Abughazzah, Zaineh |
Author | Akhund, Mahnoor |
Author | Abdalla, Amira |
Author | Abualsaud, Khalid |
Author | Yaacoub, Elias |
Available date | 2024-10-08T06:24:02Z |
Publication Date | 2024-07 |
Publication Name | 2024 International Telecommunications Conference, ITC-Egypt 2024 |
Identifier | http://dx.doi.org/10.1109/ITC-Egypt61547.2024.10620464 |
Citation | Abdel-Ghani, A., Abughazzah, Z., Akhund, M., Abdalla, A., Abualsaud, K., & Yaacoub, E. (2024, July). Joint Use of Vital Signs and Cough Sounds for Pandemic Detection. In 2024 International Telecommunications Conference (ITC-Egypt) (pp. 20-25). IEEE. |
ISBN | 979-835035140-8 |
Abstract | In response to the challenges once posed by the COVID-19 pandemic, this paper presents a comprehensive solution that integrates advanced techniques to enhance the detection of infections remotely, using sensors on a wearable bracelet. Building on our previous work, we introduce a Machine Learning model that can classify COVID-19 and Healthy patients from their cough sounds and vital signs. Health data like Body Temperature, Heart Rate, and SpO2 levels are collected by a sensor in the wristband and are sent to the mobile application for diagnosis. The system is connected to a local backend server that performs the classification process. The results from the Cough Classification and Vital Signs classification contribute to a robust assessment of infection probability. Our results show a significant improvement in detection accuracy, indicating the potential of this solution to serve as an adaptable tool in future pandemics with respiratory symptoms. |
Sponsor | This publication was supported by Qatar University grant no. QUCD-IRCC-CENG-24-349. |
Language | en |
Publisher | Institute of Electrical and Electronics Engineers Inc. (IEEE) |
Subject | COVID-19 Machine Learning mHealth Pandemic Infection Detection SpO2 Sensor Wearable Devices |
Type | Article |
Pagination | 20-25 |
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Computer Science & Engineering [2402 items ]
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COVID-19 Research [835 items ]