Combining uncertainty-aware predictive modeling and a bedtime Smart Snack intervention to prevent nocturnal hypoglycemia in people with type 1 diabetes on multiple daily injections

Author:

Mosquera-Lopez Clara1ORCID,Roquemen-Echeverri Valentina1,Tyler Nichole S1,Patton Susana R2,Clements Mark A34,Martin Corby K5,Riddell Michael C6,Gal Robin L7,Gillingham Melanie8,Wilson Leah M9,Castle Jessica R9,Jacobs Peter G1

Affiliation:

1. Artificial Intelligence for Medical Systems (AIMS) Lab, Department of Biomedical Engineering, Oregon Health & Science University , Portland, OR 97239, United States

2. Center for Healthcare Delivery Science, Nemours Children’s Health , Jacksonville, FL 32207, United States

3. Children’s Mercy Hospital , Kansas City, MO 64111, United States

4. Glooko Inc. , Palo Alto, CA 94301, United States

5. Pennington Biomedical Research Center, Louisiana State University , Baton Rouge, LA 70808, United States

6. Muscle Health Research Centre, York University , Toronto, ON M3J1P3, Canada

7. Jaeb Center for Health Research , Tampa, FL 33647, United States

8. Molecular and Medical Genetics, School of Medicine, Oregon Health & Science University , Portland, OR 97239, United States

9. Harold Schnitzer Diabetes Health Center, Oregon Health & Science University , Portland, OR 97239, United States

Abstract

Abstract Objective Nocturnal hypoglycemia is a known challenge for people with type 1 diabetes, especially for physically active individuals or those on multiple daily injections. We developed an evidential neural network (ENN) to predict at bedtime the probability and timing of nocturnal hypoglycemia (0-4 vs 4-8 h after bedtime) based on several glucose metrics and physical activity patterns. We utilized these predictions in silico to prescribe bedtime carbohydrates with a Smart Snack intervention specific to the predicted minimum nocturnal glucose and timing of nocturnal hypoglycemia. Materials and methods We leveraged free-living datasets collected from 366 individuals from the T1DEXI Study and Glooko. Inputs to the ENN used to model nocturnal hypoglycemia were derived from demographic information, continuous glucose monitoring, and physical activity data. We assessed the accuracy of the ENN using area under the receiver operating curve, and the clinical impact of the Smart Snack intervention through simulations. Results The ENN achieved an area under the receiver operating curve of 0.80 and 0.71 to predict nocturnal hypoglycemic events during 0-4 and 4-8 h after bedtime, respectively, outperforming all evaluated baseline methods. Use of the Smart Snack intervention reduced probability of nocturnal hypoglycemia from 23.9 ± 14.1% to 14.0 ± 13.3% and duration from 7.4 ± 7.0% to 2.4 ± 3.3% in silico. Discussion Our findings indicate that the ENN-based Smart Snack intervention has the potential to significantly reduce the frequency and duration of nocturnal hypoglycemic events. Conclusion A decision support system that combines prediction of minimum nocturnal glucose and proactive recommendations for bedtime carbohydrate intake might effectively prevent nocturnal hypoglycemia and reduce the burden of glycemic self-management.

Funder

National Institutes of Health

NIH

NIDDK

The Leona M. and Harry B. Helmsley Charitable Trust

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

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