Classification and Detection of Breathing Patterns with Wearable Sensors and Deep Learning.
Kristin McClureBrett ErdreichJason H T BatesRyan S McGinnisAxel MasquelinSafwan WshahPublished in: Sensors (Basel, Switzerland) (2020)
Rapid assessment of breathing patterns is important for several emergency medical situations. In this research, we developed a non-invasive breathing analysis system that automatically detects different types of breathing patterns of clinical significance. Accelerometer and gyroscopic data were collected from light-weight wireless sensors placed on the chest and abdomen of 100 normal volunteers who simulated various breathing events (central sleep apnea, coughing, obstructive sleep apnea, sighing, and yawning). We then constructed synthetic datasets by injecting annotated examples of the various patterns into segments of normal breathing. A one-dimensional convolutional neural network was implemented to detect the location of each event in each synthetic dataset and to classify it as belonging to one of the above event types. We achieved a mean F1 score of 92% for normal breathing, 87% for central sleep apnea, 72% for coughing, 51% for obstructive sleep apnea, 57% for sighing, and 63% for yawning. These results demonstrate that using deep learning to analyze chest and abdomen movement data from wearable sensors provides an unobtrusive means of monitoring the breathing pattern. This could have application in a number of critical medical situations such as detecting apneas during sleep at home and monitoring breathing events in mechanically ventilated patients in the intensive care unit.
Keyphrases
- deep learning
- obstructive sleep apnea
- sleep apnea
- convolutional neural network
- positive airway pressure
- physical activity
- healthcare
- body mass index
- big data
- newly diagnosed
- ejection fraction
- intensive care unit
- weight loss
- electronic health record
- depressive symptoms
- acute respiratory distress syndrome
- prognostic factors
- patient reported outcomes