Phuong Ngo
Norwegian Centre for E-health Research, Norwa
Maryam Tayefi
Norwegian Centre for E-health Research, Norway
Anne Torill Nordsletta
Norwegian Centre for E-health Research, Norway
Fred Godtliebsen
UiT The Arctic University of Norway, Tromsø, Norway
Download articlePublished in: SHI 2019. Proceedings of the 17th Scandinavian Conference on Health Informatics, November 12-13, 2019, Oslo, Norway
Linköping Electronic Conference Proceedings 161:8, p. 45-49
Published: 2019-11-07
ISBN: 978-91-7929-957-6
ISSN: 1650-3686 (print), 1650-3740 (online)
Physical activities have a significant impact on blood glucose homeostasis of patients with type 1 diabetes. Regular physical exercise provides many proven health benefits and is recommended as part of a healthy lifestyle. However, one of the main side effects of physical activities is hypoglycemia (low blood glucose). Fear of hypoglycemia generally leads to the patients not participating in physical activities. This paper shows a proof of concept that machine learning can be used to create a personalized food recommendation system for patients with type 1 diabetes. Machine learning algorithms were designed to improve glycemic control and reduce the overcompensation of carbohydrate. First, a personalized model based on feedforward neural networks is developed to predict the blood glucose outcome during and after physical activities. Based on the personalized model and reinforcement learning, optimal food intakes will be recommended to the patient. Simulation results show that the proposed methodology has successfully maintained the blood glucose in the healthy range on a type 1 diabetes simulator during physical activities.
Type 1 diabetes, physical activities, feedforward neural network, reinforcement learning.