A Reinforcement Learning System to Encourage Physical Activity in Diabetes Patients
Irit Hochberg, Guy Feraru, Mark Kozdoba, Shie Mannor and, Moshe Tennenholtz, Elad Yom-Tov

TL;DR
This study demonstrates that a reinforcement learning-based mobile messaging system can effectively increase physical activity and improve blood glucose control in sedentary type 2 diabetes patients.
Contribution
Introduces a personalized reinforcement learning approach for optimizing motivational messages to enhance physical activity in diabetic patients.
Findings
RL messages increased activity levels and walking pace
Patients receiving RL messages showed greater reduction in HbA1c levels
The RL algorithm improved in predicting effective motivational messages over time
Abstract
Regular physical activity is known to be beneficial to people suffering from diabetes type 2. Nevertheless, most such people are sedentary. Smartphones create new possibilities for helping people to adhere to their physical activity goals, through continuous monitoring and communication, coupled with personalized feedback. We provided 27 sedentary diabetes type 2 patients with a smartphone-based pedometer and a personal plan for physical activity. Patients were sent SMS messages to encourage physical activity between once a day and once per week. Messages were personalized through a Reinforcement Learning (RL) algorithm which optimized messages to improve each participant's compliance with the activity regimen. The RL algorithm was compared to a static policy for sending messages and to weekly reminders. Our results show that participants who received messages generated by the RL…
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Taxonomy
TopicsDiabetes Management and Research · Digital Mental Health Interventions · Mobile Health and mHealth Applications
