Literature DB >> 30095007

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

Jose Garcia-Tirado1, Christian Zuluaga-Bedoya2, Marc D Breton1.   

Abstract

OBJECTIVE: Our aim is to analyze the identifiability of three commonly used control-oriented models for glucose control in patients with type 1 diabetes (T1D).
METHODS: Structural and practical identifiability analysis were performed on three published control-oriented models for glucose control in patients with type 1 diabetes (T1D): the subcutaneous oral glucose minimal model (SOGMM), the intensive control insulin-nutrition-glucose (ICING) model, and the minimal model control-oriented (MMC). Structural identifiability was addressed with a combination of the generating series (GS) approach and identifiability tableaus whereas practical identifiability was studied by means of (1) global ranking of parameters via sensitivity analysis together with the Latin hypercube sampling method (LHS) and (2) collinearity analysis among parameters. For practical identifiability and model identification, continuous glucose monitor (CGM), insulin pump, and meal records were selected from a set of patients (n = 5) on continuous subcutaneous insulin infusion (CSII) that underwent a clinical trial in an outpatient setting. The performance of the identified models was analyzed by means of the root mean square (RMS) criterion.
RESULTS: A reliable set of identifiable parameters was found for every studied model after analyzing the possible identifiability issues of the original parameter sets. According to an importance factor ([Formula: see text]), it was shown that insulin sensitivity is not the most influential parameter from the dynamical point of view, that is, is not the parameter impacting the outputs the most of the three models, contrary to what is assumed in the literature. For the test data, the models demonstrated similar performance with most RMS values around 20 mg/dl (min: 15.64 mg/dl, max: 51.32 mg/dl). However, MMC failed to identify the model for patient 4. Also, considering the three models, the MMC model showed the higher parameter variability when reidentified every 6 hours.
CONCLUSION: 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.

Entities:  

Keywords:  control-oriented model; global parameter ranking; model identification; practical identifiability; structural identifiability; type 1 diabetes

Mesh:

Substances:

Year:  2018        PMID: 30095007      PMCID: PMC6134618          DOI: 10.1177/1932296818788873

Source DB:  PubMed          Journal:  J Diabetes Sci Technol        ISSN: 1932-2968


  31 in total

1.  The oral glucose minimal model: estimation of insulin sensitivity from a meal test.

Authors:  Chiara Dalla Man; Andrea Caumo; Claudio Cobelli
Journal:  IEEE Trans Biomed Eng       Date:  2002-05       Impact factor: 4.538

2.  Numerical non-identifiability regions of the minimal model of glucose kinetics: superiority of Bayesian estimation.

Authors:  Gianluigi Pillonetto; Giovanni Sparacino; Claudio Cobelli
Journal:  Math Biosci       Date:  2003-07       Impact factor: 2.144

3.  Anticipating the next meal using meal behavioral profiles: a hybrid model-based stochastic predictive control algorithm for T1DM.

Authors:  C S Hughes; S D Patek; M Breton; B P Kovatchev
Journal:  Comput Methods Programs Biomed       Date:  2010-06-19       Impact factor: 5.428

4.  A physiological Intensive Control Insulin-Nutrition-Glucose (ICING) model validated in critically ill patients.

Authors:  Jessica Lin; Normy N Razak; Christopher G Pretty; Aaron Le Compte; Paul Docherty; Jacquelyn D Parente; Geoffrey M Shaw; Christopher E Hann; J Geoffrey Chase
Journal:  Comput Methods Programs Biomed       Date:  2011-02-01       Impact factor: 5.428

5.  Insulin analogs-are they worth it? Yes!

Authors:  George Grunberger
Journal:  Diabetes Care       Date:  2014-06       Impact factor: 19.112

6.  Closed-loop artificial pancreas using subcutaneous glucose sensing and insulin delivery and a model predictive control algorithm: preliminary studies in Padova and Montpellier.

Authors:  Daniela Bruttomesso; Anne Farret; Silvana Costa; Maria Cristina Marescotti; Monica Vettore; Angelo Avogaro; Antonio Tiengo; Chiara Dalla Man; Jerome Place; Andrea Facchinetti; Stefania Guerra; Lalo Magni; Giuseppe De Nicolao; Claudio Cobelli; Eric Renard; Alberto Maran
Journal:  J Diabetes Sci Technol       Date:  2009-09-01

7.  Integral-based parameter identification for long-term dynamic verification of a glucose-insulin system model.

Authors:  Christopher E Hann; J Geoffrey Chase; Jessica Lin; Thomas Lotz; Carmen V Doran; Geoffrey M Shaw
Journal:  Comput Methods Programs Biomed       Date:  2005-03       Impact factor: 5.428

8.  Model predictive control of type 1 diabetes: an in silico trial.

Authors:  Lalo Magni; Davide M Raimondo; Luca Bossi; Chiara Dalla Man; Giuseppe De Nicolao; Boris Kovatchev; Claudio Cobelli
Journal:  J Diabetes Sci Technol       Date:  2007-11

Review 9.  Nonadjunctive Use of Continuous Glucose Monitoring for Diabetes Treatment Decisions.

Authors:  Jessica R Castle; Peter G Jacobs
Journal:  J Diabetes Sci Technol       Date:  2016-08-22

10.  Chaotic time series prediction for glucose dynamics in type 1 diabetes mellitus using regime-switching models.

Authors:  Mirela Frandes; Bogdan Timar; Romulus Timar; Diana Lungeanu
Journal:  Sci Rep       Date:  2017-07-24       Impact factor: 4.379

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  3 in total

1.  A metamodel-based flexible insulin therapy for type 1 diabetes patients subjected to aerobic physical activity.

Authors:  Emeric Scharbarg; Joachim Greck; Claude H Moog; Eric Le Carpentier; Lucy Chaillous
Journal:  Sci Rep       Date:  2022-05-16       Impact factor: 4.996

2.  In Silico Analysis of an Exercise-Safe Artificial Pancreas With Multistage Model Predictive Control and Insulin Safety System.

Authors:  Jose Garcia-Tirado; Patricio Colmegna; John P Corbett; Basak Ozaslan; Marc D Breton
Journal:  J Diabetes Sci Technol       Date:  2019-11

3.  Mathematical Models of Meal Amount and Timing Variability With Implementation in the Type-1 Diabetes Patient Decision Simulator.

Authors:  Nunzio Camerlingo; Martina Vettoretti; Simone Del Favero; Andrea Facchinetti; Giovanni Sparacino
Journal:  J Diabetes Sci Technol       Date:  2020-09-17
  3 in total

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