Blood Glucose Prediction from Nutrition Analytics in Type 1 Diabetes: A Review

Author:

Lubasinski Nicole1ORCID,Thabit Hood23,Nutter Paul W.1ORCID,Harper Simon1

Affiliation:

1. Department of Computer Science, The University of Manchester, Manchester M13 9PL, UK

2. Diabetes, Endocrine and Metabolism Centre, Manchester Royal Infirmary, Manchester University NHS, Manchester M13 9WL, UK

3. Division of Diabetes, Endocrinology and Gastroenterology, School of Medical Science, The University of Manchester, Manchester M13 9NT, UK

Abstract

Introduction: Type 1 Diabetes (T1D) affects over 9 million worldwide and necessitates meticulous self-management for blood glucose (BG) control. Utilizing BG prediction technology allows for increased BG control and a reduction in the diabetes burden caused by self-management requirements. This paper reviews BG prediction models in T1D, which include nutritional components. Method: A systematic search, utilizing the PRISMA guidelines, identified articles focusing on BG prediction algorithms for T1D that incorporate nutritional variables. Eligible studies were screened and analyzed for model type, inclusion of additional aspects in the model, prediction horizon, patient population, inputs, and accuracy. Results: The study categorizes 138 blood glucose prediction models into data-driven (54%), physiological (14%), and hybrid (33%) types. Prediction horizons of ≤30 min are used in 36% of models, 31–60 min in 34%, 61–90 min in 11%, 91–120 min in 10%, and >120 min in 9%. Neural networks are the most used data-driven technique (47%), and simple carbohydrate intake is commonly included in models (data-driven: 72%, physiological: 52%, hybrid: 67%). Real or free-living data are predominantly used (83%). Conclusion: The primary goal of blood glucose prediction in T1D is to enable informed decisions and maintain safe BG levels, considering the impact of all nutrients for meal planning and clinical relevance.

Publisher

MDPI AG

Reference158 articles.

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3. National Institute for Health and Care Excellence (2015). Diabetes (Type 1 and Type 2) in Children and Young People: Diagnosis and Management, National Institute for Health and Care Excellence.

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5. Time in Range: A New Parameter to Evaluate Blood Glucose Control in Patients with Diabetes;Gabbay;Diabetol. Metab. Syndr.,2020

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