Classification of Hemodynamics Scenarios from a Public Radar Dataset Using a Deep Learning Approach.
Gašper SlapničarWenjin WangMitja LustrekPublished in: Sensors (Basel, Switzerland) (2021)
Contact-free sensors offer important advantages compared to traditional wearables. Radio-frequency sensors (e.g., radars) offer the means to monitor cardiorespiratory activity of people without compromising their privacy, however, only limited information can be obtained via movement, traditionally related to heart or breathing rate. We investigated whether five complex hemodynamics scenarios (resting, apnea simulation, Valsalva maneuver, tilt up and tilt down on a tilt table) can be classified directly from publicly available contact and radar input signals in an end-to-end deep learning approach. A series of robust k-fold cross-validation evaluation experiments were conducted in which neural network architectures and hyperparameters were optimized, and different data input modalities (contact, radar and fusion) and data types (time and frequency domain) were investigated. We achieved reasonably high accuracies of 88% for contact, 83% for radar and 88% for fusion of modalities. These results are valuable in showing large potential of radar sensing even for more complex scenarios going beyond just heart and breathing rate. Such contact-free sensing can be valuable for fast privacy-preserving hospital screenings and for cases where traditional werables are impossible to use.
Keyphrases
- deep learning
- big data
- climate change
- neural network
- machine learning
- heart failure
- healthcare
- health information
- artificial intelligence
- electronic health record
- coronary artery
- convolutional neural network
- obstructive sleep apnea
- emergency department
- body composition
- mental health
- atomic force microscopy
- low cost
- risk assessment
- human health
- positive airway pressure
- blood pressure
- heart rate variability
- data analysis
- sleep apnea
- clinical evaluation