Literature DB >> 23567002

Model identification using stochastic differential equation grey-box models in diabetes.

Anne Katrine Duun-Henriksen1, Signe Schmidt, Rikke Meldgaard Røge, Jonas Bech Møller, Kirsten Nørgaard, John Bagterp Jørgensen, Henrik Madsen.   

Abstract

BACKGROUND: The acceptance of virtual preclinical testing of control algorithms is growing and thus also the need for robust and reliable models. Models based on ordinary differential equations (ODEs) can rarely be validated with standard statistical tools. Stochastic differential equations (SDEs) offer the possibility of building models that can be validated statistically and that are capable of predicting not only a realistic trajectory, but also the uncertainty of the prediction. In an SDE, the prediction error is split into two noise terms. This separation ensures that the errors are uncorrelated and provides the possibility to pinpoint model deficiencies.
METHODS: An identifiable model of the glucoregulatory system in a type 1 diabetes mellitus (T1DM) patient is used as the basis for development of a stochastic-differential-equation-based grey-box model (SDE-GB). The parameters are estimated on clinical data from four T1DM patients. The optimal SDE-GB is determined from likelihood-ratio tests. Finally, parameter tracking is used to track the variation in the "time to peak of meal response" parameter.
RESULTS: We found that the transformation of the ODE model into an SDE-GB resulted in a significant improvement in the prediction and uncorrelated errors. Tracking of the "peak time of meal absorption" parameter showed that the absorption rate varied according to meal type.
CONCLUSION: This study shows the potential of using SDE-GBs in diabetes modeling. Improved model predictions were obtained due to the separation of the prediction error. SDE-GBs offer a solid framework for using statistical tools for model validation and model development.
© 2013 Diabetes Technology Society.

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Year:  2013        PMID: 23567002      PMCID: PMC3737645          DOI: 10.1177/193229681300700220

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


  14 in total

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Authors:  Stig B Mortensen; Søren Klim; Bernd Dammann; Niels R Kristensen; Henrik Madsen; Rune V Overgaard
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Authors:  Søren Klim; Stig Bousgaard Mortensen; Niels Rode Kristensen; Rune Viig Overgaard; Henrik Madsen
Journal:  Comput Methods Programs Biomed       Date:  2009-03-05       Impact factor: 5.428

4.  Mathematical modeling research to support the development of automated insulin-delivery systems.

Authors:  Garry M Steil; Jaques Reifman
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5.  Statistical methods for population pharmacokinetic modelling.

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Journal:  Stat Methods Med Res       Date:  1998-03       Impact factor: 3.021

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Authors:  Stephen D Patek; B Wayne Bequette; Marc Breton; Bruce A Buckingham; Eyal Dassau; Francis J Doyle; John Lum; Lalo Magni; Howard Zisser
Journal:  J Diabetes Sci Technol       Date:  2009-03-01

7.  A semiclosed-loop algorithm for the control of blood glucose levels in diabetics.

Authors:  M E Fisher
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8.  Stochastic differential equations in NONMEM: implementation, application, and comparison with ordinary differential equations.

Authors:  Christoffer W Tornøe; Rune V Overgaard; Henrik Agersø; Henrik A Nielsen; Henrik Madsen; E Niclas Jonsson
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9.  Predictive performance for population models using stochastic differential equations applied on data from an oral glucose tolerance test.

Authors:  Jonas B Møller; Rune V Overgaard; Henrik Madsen; Torben Hansen; Oluf Pedersen; Steen H Ingwersen
Journal:  J Pharmacokinet Pharmacodyn       Date:  2009-12-16       Impact factor: 2.745

10.  Meal simulation model of the glucose-insulin system.

Authors:  Chiara Dalla Man; Robert A Rizza; Claudio Cobelli
Journal:  IEEE Trans Biomed Eng       Date:  2007-10       Impact factor: 4.538

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  8 in total

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Authors:  Signe Schmidt; Dimitri Boiroux; Anne Katrine Duun-Henriksen; Laurits Frøssing; Ole Skyggebjerg; John Bagterp Jørgensen; Niels Kjølstad Poulsen; Henrik Madsen; Sten Madsbad; Kirsten Nørgaard
Journal:  J Diabetes Sci Technol       Date:  2013-09-01

2.  Identifiability analysis for stochastic differential equation models in systems biology.

Authors:  Alexander P Browning; David J Warne; Kevin Burrage; Ruth E Baker; Matthew J Simpson
Journal:  J R Soc Interface       Date:  2020-12-16       Impact factor: 4.118

3.  Evaluation of pharmacokinetic model designs for subcutaneous infusion of insulin aspart.

Authors:  Erin J Mansell; Signe Schmidt; Paul D Docherty; Kirsten Nørgaard; John B Jørgensen; Henrik Madsen
Journal:  J Pharmacokinet Pharmacodyn       Date:  2017-08-22       Impact factor: 2.745

4.  Hypoglycemia Prevention via Personalized Glucose-Insulin Models Identified in Free-Living Conditions.

Authors:  Chiara Toffanin; Eleonora Maria Aiello; Claudio Cobelli; Lalo Magni
Journal:  J Diabetes Sci Technol       Date:  2019-10-23

Review 5.  GLYFE: review and benchmark of personalized glucose predictive models in type 1 diabetes.

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6.  An Adaptive Nonlinear Basal-Bolus Calculator for Patients With Type 1 Diabetes.

Authors:  Dimitri Boiroux; Tinna Björk Aradóttir; Kirsten Nørgaard; Niels Kjølstad Poulsen; Henrik Madsen; John Bagterp Jørgensen
Journal:  J Diabetes Sci Technol       Date:  2016-09-25

7.  Predicting Plasma Glucose From Interstitial Glucose Observations Using Bayesian Methods.

Authors:  Alexander Hildenbrand Hansen; Anne Katrine Duun-Henriksen; Rune Juhl; Signe Schmidt; Kirsten Nørgaard; John Bagterp Jørgensen; Henrik Madsen
Journal:  J Diabetes Sci Technol       Date:  2014-03-06

8.  Multi-step ahead predictive model for blood glucose concentrations of type-1 diabetic patients.

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Journal:  Sci Rep       Date:  2021-12-21       Impact factor: 4.379

  8 in total

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