
TL;DR
This paper introduces a comprehensive method for real-time personal health state estimation by integrating multi-modal data and domain knowledge into a dynamic graph-based model, enabling continuous health monitoring and proactive guidance.
Contribution
It presents a novel digital twin framework that fuses diverse data sources and biological layers to continually estimate and predict individual health trajectories.
Findings
Demonstrated effective health state monitoring using real-world sensor data.
Established a navigational framework for guiding health state transitions.
Showed potential for shifting from disease-focused to total health management.
Abstract
Life's most valuable asset is health. Continuously understanding the state of our health and modeling how it evolves is essential if we wish to improve it. Given the opportunity that people live with more data about their life today than any other time in history, the challenge rests in interweaving this data with the growing body of knowledge to compute and model the health state of an individual continually. This dissertation presents an approach to build a personal model and dynamically estimate the health state of an individual by fusing multi-modal data and domain knowledge. The system is stitched together from four essential abstraction elements: 1. the events in our life, 2. the layers of our biological systems (from molecular to an organism), 3. the functional utilities that arise from biological underpinnings, and 4. how we interact with these utilities in the reality of daily…
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Taxonomy
TopicsHealth, Environment, Cognitive Aging · Context-Aware Activity Recognition Systems
