Apps to analyse COVID-19 sounds
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Apps to analyse COVID-19 sounds are mobile software applications designed to collect respiratory sounds and aid diagnosis in response to the COVID-19 pandemic. Numerous applications are in development, with different institutions and companies taking various approaches to privacy and data collection. Current efforts are aimed at gathering data. In a later stage, it is possible that sound apps will have the capacity (and ethical approvals) to provide information back to users. In order to develop and train signal analysis approaches, large datasets are required.
History
[edit]The COVID-19 outbreak was announced as a global pandemic by the World Health Organization in March 2020 and has affected a growing number of people globally. In this context, advanced artificial intelligence techniques are being considered as tools in aiding our response to global health crisis. Other COVID-19 apps which offer solutions for user tracking have been developed. At the same time a number of approaches which tries to use respiratory sounds and artificial intelligence to understand if the disease can be diagnosed have been proposed. A few studies are available as preprints (i.e. not yet peer-reviewed) documents.
Methodologies
[edit]The potential for using speech and sound analysis by artificial intelligence to help in this scenario, by surveying which types of related or contextually significant phenomena can be automatically assessed from speech or sound has been recently overviewed.[1] These include the automatic recognition and monitoring of breathing, dry and wet coughing or sneezing sounds, speech under cold, eating behaviour, sleepiness, or pain.
Additionally, the potential use-cases of intelligent speech analysis for COVID-19 diagnosed patients has also been presented.[2] In particular, by analysing speech recordings from these patients, an audio-only-based model to automatically categorise the health state of patients from four aspects, including the severity of illness, sleep quality, fatigue, and anxiety, is constructed. This work shows promise in estimating the severity of illness.
Machine learning methods have been explored to recognize and diagnose coughs from different diseases. These included a low complexity, automated recognition and diagnostic tool for screening respiratory infections that utilizes convolutional neural networks (CNNs) to detect cough within environment audio and diagnose three potential illnesses (i.e. bronchitis, bronchiolitis and pertussis) based on their unique cough audio features.[3]
A large-scale crowdsourced dataset of respiratory sounds has been collected to aid diagnosis of COVID-19: coughs and breathing sounds are sufficient to distinguish users affected by COVID-19 versus those affected by asthma or healthy controls.[4]
Behind these studies is the ambition that automated systems to screen for respiratory diseases based on voice, raw cough or other sound data would have positive medical applications in both clinical and public health arenas.
List of apps to analyse COVID-19 sounds
[edit]Name | Functionality and aim/stage of project | Nature of Sounds recorded, and other metadata | Sponsor of project (University / Company / grassroots) | Platforms | Ethical approval | Cumulative Samples Collected (with date) | Languages | Data Release |
---|---|---|---|---|---|---|---|---|
COVID-19 Sounds App | Audio data collection to establish diagnostic potential | Cough, breathing and voice + symptoms and elements of medical history. | University of Cambridge | Web, Android, iOS | Cambridge Univ. Computer Lab. Ethics Committee. | 6000 (1 May 20) | English, German, French, Italian, Spanish, Greek, Portuguese | Pending legal advice. Hoping to be made available to researchers, subject to legal framework protecting privacy. |
Breathe for Science | Audio data collection to establish diagnostic potential | Cough and elements of medical history | New York University | Web | ||||
Covid Voice Detector | Audio data collection, diagnosis | Voice | Carnegie Mellon University | Web | ||||
Coughvid | Audio data collection | Cough | École Polytechnique Fédérale de Lausanne | Web, Android | ||||
VoiceMed | Audio data collection, diagnosis | Cough, breathing and voice | Web | |||||
Detectnow | Audio data collection | Cough | Web | 489 (7 May 20) | ||||
Coughmode | Audio data collection | Cough, COVID-19 symptoms | Healthmode, Inc. | Web, iOS (https://coughmode.com Archived 2021-08-03 at the Wayback Machine) | Advarra Central IRB | |||
COVID-19 Voice Study | Audio data collection, medical advice | Voice | Vocalis Health | Web | ||||
Cough Against Covid | Audio data collection to establish screening potential | Cough, Voice, Symptoms | Wadhwani Institute for Artificial Intelligence | Web | State governments of Odisha, Bihar, Brihanmumbai Municipal Corporation | |||
Virufy | Audio data collection | Cough, voice | Stanford University (unofficial) | Web, Android, iOS | 5000 | English, Spanish, Portuguese | https://github.com/virufy/covid |
References
[edit]- ^ Schuller, Björn W.; Schuller, Dagmar M. (2020). "COVID-19 and Computer Audition: An Overview on What Speech & Sound Analysis Could Contribute in the SARS-CoV-2 Corona Crisis". arXiv:2003.11117 [cs.SD].
- ^ Han, Jing; Song, Meishu (2020). "An Early Study on Intelligent Analysis of Speech under COVID-19: Severity, Sleep Quality, Fatigue, and Anxiety". arXiv:2005.00096 [eess.AS].
- ^ Bales, Charles; Nabeel, Muhammad (2020). "Can Machine Learning be Used to Recognize and Diagnose Coughs?". 2020 International Conference on e-Health and Bioengineering (EHB). pp. 1–4. arXiv:2004.01495. doi:10.1109/EHB50910.2020.9280115. ISBN 978-1-7281-8803-4. S2CID 214795228.
- ^ Brown, Chloe; Chauhan, Jagmohan; Grammenos, Andreas; Han, Jing; Hasthanasombat, Apinan; Spathis, Dimitris; Xia, Tong; Cicuta, Pietro; Mascolo, Cecilia (2020). "Exploring Automatic Diagnosis of COVID-19 from Crowdsourced Respiratory Sound Data". Proceedings of the 26th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining. pp. 3474–3484. arXiv:2006.05919. doi:10.1145/3394486.3412865. ISBN 9781450379984. S2CID 219558912.