School authors:
External authors:
- Saul Langarica ( Pontificia Universidad Catolica de Chile )
- Maria Rodriguez-Fernandez ( Pontificia Universidad Catolica de Chile )
- Francis J. Doyle ( Harvard University )
Abstract:
Accurate blood glucose prediction is a critical element in modern artificial pancreas systems. Recently, many deep learning-based models have been proposed for glucose prediction, showing encouraging results in population modeling. However, due to the large amount of data required for training deep learning -based models, few studies have successfully addressed personalized modeling, which is critical to ensure safe policies in a closed-loop scheme given the high inter-patient variability. To address this concern, we propose a meta-learning-based technique for accurate personalized modeling that requires minimal data volume to personalize from its population version, needs few training iterations, and has a low risk of over-fitting. Results using the UVA/Padova simulator show that the proposed technique generalizes better and outperforms other approaches in standard and task-specific metrics, particularly for longer prediction horizons and higher degrees of distributional shifts.
UT | WOS:000965347200001 |
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Number of Citations | 2 |
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Pages | |
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Volume | 135 |
Month of Publication | JUN |
Year of Publication | 2023 |
DOI | https://doi.org/10.1016/j.conengprac.2023.105498 |
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ISBN |