Novel computer algorithm for cough monitoring based on octonions.

Respir Physiol Neurobiol

Biomedical Center Martin, Comenius University in Bratislava, Jessenius Faculty of Medicine in Martin (JFM CU), Slovakia; Department of Pathophysiology, Comenius University in Bratislava, Jessenius Faculty of Medicine in Martin (JFM CU), Slovakia.

Published: November 2018

AI Article Synopsis

  • The assessment of cough frequency is important for evaluating cough therapies, but current automatic detection algorithms often struggle with sensitivity and require human input.
  • A new algorithm using 8-dimensional octonions shows improved performance over traditional neural networks in classifying cough sounds.
  • Tested on a dataset of 5200 cough and 90,000 non-cough sounds from patients, the octonionic algorithm achieved higher sensitivity (96.8%) and specificity (98.4%), enhancing cough sound detection.

Article Abstract

The objective assessment of cough frequency is essential for evaluation of cough and antitussive therapies. Nonetheless, available algorithms for automatic detection of cough sound have limited sensitivity and the analysis of cough sound often requires input from human observers. Therefore, an algorithm for the cough sound detection with high sensitivity would be very useful for development of automatic cough monitors. Here we present a novel algorithm for cough sounds classification based on 8-dimensional numbers octonions and compare it with the algorithm based on standard neural network. The performance was evaluated on a dataset of 5200 cough sounds and 90000 of non-cough sounds generated from the sound recordings in 18 patients with frequent cough caused by various respiratory diseases. Standard classification algorithm had sensitivity 82.2% and specificity 96.4%. In contrast, octonionic classification algorithm had significantly higher sensitivity 96.8% and specificity 98.4%. The use of octonions for classification of cough sounds improved sensitivity and specificity of cough sound detection.

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Source
http://dx.doi.org/10.1016/j.resp.2018.03.010DOI Listing

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