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Blood glucose level prediction : advanced deep-ensemble learning approach

Nemat, H., Khadem, H., Eissa, M.R., Elliott, J., Benaissa, M.

2022White Rose Research Online (University of Leeds, The University of Sheffield, University of York)52 citationsOpen Access PDF

Abstract

Optimal and sustainable control of blood glucose levels (BGLs) is the aim of type-1 diabetes management. The automated prediction of BGL using machine learning (ML) algorithms is considered as a promising tool that can support this aim. In this context, this paper proposes new advanced ML architectures to predict BGL leveraging deep learning and ensemble learning. The deep-ensemble models are developed with novel meta-learning approaches, where the feasibility of changing the dimension of a univariate time series forecasting task is investigated. The models are evaluated regression-wise and clinical-wise. The performance of the proposed ensemble models are compared with benchmark non-ensemble models. The results show the superior performance of the developed ensemble models over developed non-ensemble benchmark models and also show the efficacy of the proposed meta-learning approaches.

Topics & Concepts

Ensemble learningComputer scienceArtificial intelligenceMachine learningBenchmark (surveying)Ensemble forecastingContext (archaeology)UnivariateDeep learningPredictive modellingMultivariate statisticsPaleontologyGeographyGeodesyBiologyDiabetes Management and ResearchDiabetes, Cardiovascular Risks, and LipoproteinsArtificial Intelligence in Healthcare
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