Transfer learning from ECG to PPG for improved sleep staging from wrist-worn wearables.
Qiao LiQichen LiAyse Selin CakmakGiulia Da PoianDonald BliwiseViola VaccarinoAmit J ShahGari D CliffordPublished in: Physiological measurement (2021)
We proposed a combined PPG and actigraphy-based sleep stage classification approach using transfer learning from a large ECG sleep database. Results demonstrate that the transfer learning approach improves estimates of sleep state. The use of automated beat detectors and quality metrics means human over-reading is not required, and the approach can be scaled for large cross-sectional or longitudinal studies using wrist-worn devices for sleep-staging.