Can Machine Learning Be Used to Recognize and Diagnose Coughs?
- URL: http://arxiv.org/abs/2004.01495v3
- Date: Sun, 4 Oct 2020 04:00:50 GMT
- Title: Can Machine Learning Be Used to Recognize and Diagnose Coughs?
- Authors: Charles Bales, Muhammad Nabeel, Charles N. John, Usama Masood, Haneya
N. Qureshi, Hasan Farooq, Iryna Posokhova, Ali Imran
- Abstract summary: We present a low complexity, automated recognition and diagnostic tool for screening respiratory infections.
We use Convolutional Neural Networks (CNNs) to detect cough within environment audio and diagnose three potential illnesses.
Both proposed detection and diagnosis models achieve an accuracy of over 89%, while also remaining computationally efficient.
- Score: 3.2265234594751155
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Emerging wireless technologies, such as 5G and beyond, are bringing new use
cases to the forefront, one of the most prominent being machine learning
empowered health care. One of the notable modern medical concerns that impose
an immense worldwide health burden are respiratory infections. Since cough is
an essential symptom of many respiratory infections, an automated system to
screen for respiratory diseases based on raw cough data would have a multitude
of beneficial research and medical applications. In literature, machine
learning has already been successfully used to detect cough events in
controlled environments. In this paper, we present 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. Both
proposed detection and diagnosis models achieve an accuracy of over 89%, while
also remaining computationally efficient. Results show that the proposed system
is successfully able to detect and separate cough events from background noise.
Moreover, the proposed single diagnosis model is capable of distinguishing
between different illnesses without the need of separate models.
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