Wearable Accelerometer Foundation Models for Health via Knowledge Distillation
Journal:
arXiv
Published Date:
Dec 15, 2024
Abstract
Modern wearable devices can conveniently record various biosignals in the
many different environments of daily living, enabling a rich view of individual
health. However, not all biosignals are the same: high-fidelity biosignals,
such as photoplethysmogram (PPG), contain more physiological information, but
require optical sensors with a high power footprint. Alternatively, a
lower-fidelity biosignal such as accelerometry has a significantly smaller
power footprint and is available in almost any wearable device. While
accelerometry is widely used for activity recognition and fitness, it is less
explored for health biomarkers and diagnosis. Here, we show that an
accelerometry foundation model can predict a wide variety of health targets. To
achieve improved performance, we distill representational knowledge from PPG
encoders to accelerometery encoders using 20 million minutes of unlabeled data,
collected from ~172K participants in the Apple Heart and Movement Study under
informed consent. We observe strong cross-modal alignment on unseen data, e.g.,
99.2% top-1 accuracy for retrieving PPG embeddings from accelerometry
embeddings. We show that distilled accelerometry encoders have significantly
more informative representations compared to self-supervised or supervised
encoders trained directly on accelerometry data, observed by at least 23%-49%
improved performance for predicting heart rate and heart rate variability. We
also show that distilled accelerometry encoders are readily predictive of a
wide array of downstream health targets, i.e., they are generalist foundation
models. We believe accelerometry foundation models for health may unlock new
opportunities for developing digital biomarkers from any wearable device.