» Articles » PMID: 38155742

Blood Glucose Forecasting from Temporal and Static Information in Children with T1D

Overview
Journal Front Pediatr
Specialty Pediatrics
Date 2023 Dec 29
PMID 38155742
Authors
Affiliations
Soon will be listed here.
Abstract

Background: The overarching goal of blood glucose forecasting is to assist individuals with type 1 diabetes (T1D) in avoiding hyper- or hypoglycemic conditions. While deep learning approaches have shown promising results for blood glucose forecasting in adults with T1D, it is not known if these results generalize to children. Possible reasons are physical activity (PA), which is often unplanned in children, as well as age and development of a child, which both have an effect on the blood glucose level.

Materials And Methods: In this study, we collected time series measurements of glucose levels, carbohydrate intake, insulin-dosing and physical activity from children with T1D for one week in an ethics approved prospective observational study, which included daily physical activities. We investigate the performance of state-of-the-art deep learning methods for adult data-(dilated) recurrent neural networks and a transformer-on our dataset for short-term ( min) and long-term ( h) prediction. We propose to integrate static patient characteristics, such as age, gender, BMI, and percentage of basal insulin, to account for the heterogeneity of our study group.

Results: Integrating static patient characteristics (SPC) proves beneficial, especially for short-term prediction. LSTMs and GRUs with SPC perform best for a prediction horizon of  min (RMSE of  mmol/l), a vanilla RNN with SPC performs best across different prediction horizons, while the performance significantly decays for long-term prediction. For prediction during the night, the best method improves to an RMSE of  mmol/l. Overall, the results for our baselines and RNN models indicate that blood glucose forecasting for children conducting regular physical activity is more challenging than for previously studied adult data.

Conclusion: We find that integrating static data improves the performance of deep-learning architectures for blood glucose forecasting of children with T1D and achieves promising results for short-term prediction. Despite these improvements, additional clinical studies are warranted to extend forecasting to longer-term prediction horizons.

Citing Articles

Predicting risk for nocturnal hypoglycemia after physical activity in children with type 1 diabetes.

Leutheuser H, Bartholet M, Marx A, Pfister M, Burckhardt M, Bachmann S Front Med (Lausanne). 2024; 11:1439218.

PMID: 39526244 PMC: 11543467. DOI: 10.3389/fmed.2024.1439218.

References
1.
Gregory J, Cameron F, Joshi K, Eiswirth M, Garrett C, Garvey K . ISPAD Clinical Practice Consensus Guidelines 2022: Diabetes in adolescence. Pediatr Diabetes. 2022; 23(7):857-871. PMC: 9828225. DOI: 10.1111/pedi.13408. View

2.
Parkes J, Slatin S, Pardo S, Ginsberg B . A new consensus error grid to evaluate the clinical significance of inaccuracies in the measurement of blood glucose. Diabetes Care. 2000; 23(8):1143-8. DOI: 10.2337/diacare.23.8.1143. View

3.
Li K, Liu C, Zhu T, Herrero P, Georgiou P . GluNet: A Deep Learning Framework for Accurate Glucose Forecasting. IEEE J Biomed Health Inform. 2019; 24(2):414-423. DOI: 10.1109/JBHI.2019.2931842. View

4.
Bachmann S, Hess M, Martin-Diener E, Denhaerynck K, Zumsteg U . Nocturnal Hypoglycemia and Physical Activity in Children With Diabetes: New Insights by Continuous Glucose Monitoring and Accelerometry. Diabetes Care. 2016; 39(7):e95-6. DOI: 10.2337/dc16-0411. View

5.
Abraham M, Karges B, Dovc K, Naranjo D, Arbelaez A, Mbogo J . ISPAD Clinical Practice Consensus Guidelines 2022: Assessment and management of hypoglycemia in children and adolescents with diabetes. Pediatr Diabetes. 2022; 23(8):1322-1340. PMC: 10107518. DOI: 10.1111/pedi.13443. View