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Scaling Wearable Foundation Models

About

Wearable sensors have become ubiquitous thanks to a variety of health tracking features. The resulting continuous and longitudinal measurements from everyday life generate large volumes of data; however, making sense of these observations for scientific and actionable insights is non-trivial. Inspired by the empirical success of generative modeling, where large neural networks learn powerful representations from vast amounts of text, image, video, or audio data, we investigate the scaling properties of sensor foundation models across compute, data, and model size. Using a dataset of up to 40 million hours of in-situ heart rate, heart rate variability, electrodermal activity, accelerometer, skin temperature, and altimeter per-minute data from over 165,000 people, we create LSM, a multimodal foundation model built on the largest wearable-signals dataset with the most extensive range of sensor modalities to date. Our results establish the scaling laws of LSM for tasks such as imputation, interpolation and extrapolation, both across time and sensor modalities. Moreover, we highlight how LSM enables sample-efficient downstream learning for tasks like exercise and activity recognition.

Girish Narayanswamy, Xin Liu, Kumar Ayush, Yuzhe Yang, Xuhai Xu, Shun Liao, Jake Garrison, Shyam Tailor, Jake Sunshine, Yun Liu, Tim Althoff, Shrikanth Narayanan, Pushmeet Kohli, Jiening Zhan, Mark Malhotra, Shwetak Patel, Samy Abdel-Ghaffar, Daniel McDuff• 2024

Related benchmarks

TaskDatasetResultRank
Condition Diagnosis (COPD)Longitudinal Wearable Sensor Waveforms Downstream Tasks WavesFM
AUROC74.9
4
Lifestyle Factor Prediction (Frequent Sugar)Longitudinal Wearable Sensor Waveforms Downstream Tasks WavesFM
AUROC69.4
4
Active Smoker PredictionLongitudinal Wearable Sensor Waveforms Downstream Tasks WavesFM
AUROC72.2
4
Condition Diagnosis (Diabetes)Longitudinal Wearable Sensor Waveforms WavesFM (Downstream Tasks)
AUROC79.6
4
Condition Diagnosis (Stroke)Longitudinal Wearable Sensor Waveforms Downstream Tasks WavesFM
AUROC62.3
4
Treatment Identification (Nitrates)Longitudinal Wearable Sensor Waveforms Downstream Tasks WavesFM
AUROC0.805
4
Condition Diagnosis (Atrial Fibrillation)Longitudinal Wearable Sensor Waveforms Downstream Tasks WavesFM
AUROC0.791
4
Condition Diagnosis (Cancer)Longitudinal Wearable Sensor Waveforms WavesFM
AUROC0.673
4
Obesity PredictionLongitudinal Wearable Sensor Waveforms Downstream Tasks WavesFM
AUROC0.817
4
Older Age PredictionLongitudinal Wearable Sensor Waveforms WavesFM (Downstream Tasks)
AUROC0.881
4
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