PulseImpute
The promise of Mobile Health (mHealth) is the ability to use wearable sensors to monitor participant physiology at high frequencies during daily life to enable temporally-precise health interventions. However, a major challenge is frequent missing data. Despite a rich imputation literature, existing techniques are ineffective for the pulsative signals which comprise many mHealth applications, and a lack of available datasets has stymied progress. We address this gap with PulseImpute, the first large-scale pulsative signal imputation challenge which includes realistic mHealth missingness models, an extensive set of baselines, and clinically-relevant downstream tasks. Our baseline models include a novel transformer-based architecture designed to exploit the structure of pulsative signals. We hope that PulseImpute will enable the ML community to tackle this significant and challenging task.

Details & Specifications
Imputation,
Pulsative, Physiological
- Dr. James Rehg (UIUC)
- Dr. Santosh Kumar (Memphis)
- Dr. David Wetter (Utah)
- Maxwell Xu (Georgia Tech)
- Alexander Moreno (Georgia Tech)
- Supriya Nagesh (Georgia Tech)
- Burak Aydemir (Georgia Tech)