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Communication Dans Un Congrès Année : 2019

Model fusion to enhance the clinical acceptability of long-term glucose predictions

Résumé

This paper presents the Derivatives Combination Predictor (DCP), a novel model fusion algorithm for making long-term glucose predictions for diabetic people. First, using the history of glucose predictions made by several models, the future glucose variation at a given horizon is predicted. Then, by accumulating the past predicted variations starting from a known glucose value, the fused glucose prediction is computed. A new loss function is introduced to make the DCP model learn to react faster to changes in glucose variations. The algorithm has been tested on 10 in-silico type-1 diabetic children from the T1DMS software. Three initial predictors have been used: a Gaussian process regressor, a feed-forward neural network and an extreme learning machine model. The DCP and two other fusion algorithms have been evaluated at a prediction horizon of 120 minutes with the root-mean-squared error of the prediction, the root-mean-squared error of the predicted variation, and the continuous glucose-error grid analysis. By making a successful trade-off between prediction accuracy and predicted-variation accuracy, the DCP, alongside with its specifically designed loss function, improves the clinical acceptability of the predictions, and therefore the safety of the model for diabetic people.

Dates et versions

hal-02481403 , version 1 (17-02-2020)

Identifiants

Citer

Maxime de Bois, Mounim El Yacoubi, Mehdi Ammi. Model fusion to enhance the clinical acceptability of long-term glucose predictions. BIBE 2019: 19th International Conference on Bioinformatics and Bioengineering, Oct 2019, Athens, Greece. pp.258-264, ⟨10.1109/BIBE.2019.00053⟩. ⟨hal-02481403⟩
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