Distance-Based Detection of Cough, Wheeze, and Breath Sounds on Wearable Devices.
Bing XueWen ShiSanjay Haresh ChotirmallVivian Ci Ai KohYi Yang AngRex Xiao TanWee SerPublished in: Sensors (Basel, Switzerland) (2022)
Smart wearable sensors are essential for continuous health-monitoring applications and detection accuracy of symptoms and energy efficiency of processing algorithms are key challenges for such devices. While several machine-learning-based algorithms for the detection of abnormal breath sounds are reported in literature, they are either too computationally expensive to implement into a wearable device or inaccurate in multi-class detection. In this paper, a kernel-like minimum distance classifier (K-MDC) for acoustic signal processing in wearable devices was proposed. The proposed algorithm was tested with data acquired from open-source databases, participants, and hospitals. It was observed that the proposed K-MDC classifier achieves accurate detection in up to 91.23% of cases, and it reaches various detection accuracies with a fewer number of features compared with other classifiers. The proposed algorithm's low computational complexity and classification effectiveness translate to great potential for implementation in health-monitoring wearable devices.
Keyphrases
- machine learning
- loop mediated isothermal amplification
- deep learning
- healthcare
- real time pcr
- label free
- heart rate
- public health
- artificial intelligence
- randomized controlled trial
- primary care
- mental health
- depressive symptoms
- physical activity
- high resolution
- health information
- electronic health record
- quality improvement
- quantum dots
- social media