Literature DB >> 34209125

Improved Methods for Mid-Term Blood Glucose Level Prediction Using Dietary and Insulin Logs.

Rebaz A H Karim1, István Vassányi1, István Kósa2,3.   

Abstract

Background and
Objectives: The daily lifestyle management of diabetes requires accurate predictions of the blood glucose level between meals. The objective of this study was to improve the accuracy achieved by previous work, especially on the mid-term, i.e., 120 to 180 min prediction horizons, for insulin-dependent patients. Materials and
Methods: An absorption model-based method is proposed to train an artificial neural network with the bolus and basal insulin dosing and timing, the baseline blood glucose level, the maximal glucose infusion rate, and the total carbohydrate content as parameters. The approach was implemented in various algorithmic setups, and it was validated on data from a small-scale clinical trial with continuous glucose monitoring.
Results: Root mean square error results for the mid-term horizons are 1.72 mmol/L (120 min) and 1.95 mmol/L (180 min). The accuracy of the proposed model measured on the clinical data is better than the accuracy reported by any other currently available and comparable models. Conclusions: A relatively short (ca. two weeks) training sample of a continuous glucose monitor and dietary/insulin log is sufficient to provide accurate predictions. For the outpatient application in practice, a hybrid model is proposed that combines the present mid-term method with the authors' previous work for short-term predictions.

Entities:  

Keywords:  artificial neural networks; basal insulin; lifestyle support for diabetes; mid-term blood glucose level prediction; outpatient care

Mesh:

Substances:

Year:  2021        PMID: 34209125     DOI: 10.3390/medicina57070676

Source DB:  PubMed          Journal:  Medicina (Kaunas)        ISSN: 1010-660X            Impact factor:   2.430


  19 in total

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