Multimodal Physical Activity Forecasting in Free-Living Clinical Settings: Hunting Opportunities for Just-in-Time Interventions
Abdullah Mamun, Krista S. Leonard, Megan E. Petrov, Matthew P. Buman,, Hassan Ghasemzadeh

TL;DR
This paper introduces MoveSense, a multimodal LSTM-based system for forecasting physical activity in real-world clinical settings to enable personalized, timely interventions for health improvement.
Contribution
It develops and evaluates multimodal LSTM models with early fusion for accurate next-day activity forecasting in clinical environments, outperforming traditional methods.
Findings
Multimodal LSTM with early fusion reduces mean absolute error by 33-37% compared to linear regression and ARIMA.
Achieves 72-79% accuracy in goal-based next-day step prediction.
Multimodal models outperform unimodal and traditional forecasting methods.
Abstract
Objective: This research aims to develop a lifestyle intervention system, called MoveSense, that forecasts a patient's activity behavior to allow for early and personalized interventions in real-world clinical environments. Methods: We conducted two clinical studies involving 58 prediabetic veterans and 60 patients with obstructive sleep apnea to gather multimodal behavioral data using wearable devices. We develop multimodal long short-term memory (LSTM) network models, which are capable of forecasting the number of step counts of a patient up to 24 hours in advance by examining data from activity and engagement modalities. Furthermore, we design goal-based forecasting models to predict whether a person's next-day steps will be over a certain threshold. Results: Multimodal LSTM with early fusion achieves 33% and 37% lower mean absolute errors than linear regression and ARIMA…
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Taxonomy
TopicsPhysical Activity and Health · Mobile Health and mHealth Applications
MethodsLinear Regression · Sigmoid Activation · Tanh Activation · Long Short-Term Memory
