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Identifiability Analysis of Three Control-Oriented Models for Use in Artificial Pancreas Systems.

Jose Garcia-TiradoChristian C Zuluaga-BedoyaMarc D Breton
Published in: Journal of diabetes science and technology (2018)
This study shows that both structural and practical identifiability analysis need to be considered prior to the model identification/individualization in patients with T1D. It was shown that all the studied models are able to represent the CGM data, yet their usefulness in a hypothetical artificial pancreas could be a matter of debate. In spite that the three models do not capture all the dynamics and metabolic effects as a maximal model (ie, our FDA-accepted UVa/Padova simulator), SOGMM and ICING appear to be more appealing than MMC regarding both the performance and parameter variability after reidentification. Although the model predictions of ICING are comparable to the ones of the SOGMM model, the large parameter set makes the model prone to overfitting if all parameters are identified. Moreover, the existence of a high nonlinear function like [Formula: see text] prevents the use of tools from the linear systems theory.
Keyphrases
  • mouse model
  • smoking cessation
  • preterm infants
  • deep learning
  • artificial intelligence
  • neural network