Literature DB >> 24876584

Predicting Plasma Glucose From Interstitial Glucose Observations Using Bayesian Methods.

Alexander Hildenbrand Hansen1, Anne Katrine Duun-Henriksen2, Rune Juhl2, Signe Schmidt3, Kirsten Nørgaard3, John Bagterp Jørgensen2, Henrik Madsen2.   

Abstract

One way of constructing a control algorithm for an artificial pancreas is to identify a model capable of predicting plasma glucose (PG) from interstitial glucose (IG) observations. Stochastic differential equations (SDEs) make it possible to account both for the unknown influence of the continuous glucose monitor (CGM) and for unknown physiological influences. Combined with prior knowledge about the measurement devices, this approach can be used to obtain a robust predictive model. A stochastic-differential-equation-based gray box (SDE-GB) model is formulated on the basis of an identifiable physiological model of the glucoregulatory system for type 1 diabetes mellitus (T1DM) patients. A Bayesian method is used to estimate robust parameters from clinical data. The models are then used to predict PG from IG observations from 2 separate study occasions on the same patient. First, all statistically significant diffusion terms of the model are identified using likelihood ratio tests, yielding inclusion of [Formula: see text], [Formula: see text], and [Formula: see text]. Second, estimates using maximum likelihood are obtained, but prediction capability is poor. Finally a Bayesian method is implemented. Using this method the identified models are able to predict PG using only IG observations. These predictions are assessed visually. We are also able to validate these estimates on a separate data set from the same patient. This study shows that SDE-GBs and a Bayesian method can be used to identify a reliable model for prediction of PG using IG observations obtained with a CGM. The model could eventually be used in an artificial pancreas.
© 2014 Diabetes Technology Society.

Entities:  

Keywords:  Bayesian methods; PG-IG dynamics; plasma glucose dynamics; stochastic differential equations; stochastic gray-box modeling; type 1 diabetes mellitus

Year:  2014        PMID: 24876584      PMCID: PMC4455396          DOI: 10.1177/1932296814523878

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


  36 in total

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2.  Enhanced accuracy of continuous glucose monitoring by online extended kalman filtering.

Authors:  Andrea Facchinetti; Giovanni Sparacino; Claudio Cobelli
Journal:  Diabetes Technol Ther       Date:  2010-05       Impact factor: 6.118

3.  Real-time glucose estimation algorithm for continuous glucose monitoring using autoregressive models.

Authors:  Yenny Leal; Winston Garcia-Gabin; Jorge Bondia; Eduardo Esteve; Wifredo Ricart; Jose-Manuel Fernández-Real; Josep Vehí
Journal:  J Diabetes Sci Technol       Date:  2010-03-01

4.  Use of subcutaneous interstitial fluid glucose to estimate blood glucose: revisiting delay and sensor offset.

Authors:  Kerstin Rebrin; Norman F Sheppard; Garry M Steil
Journal:  J Diabetes Sci Technol       Date:  2010-09-01

5.  Peculiarities of the continuous glucose monitoring data stream and their impact on developing closed-loop control technology.

Authors:  Boris Kovatchev; William Clarke
Journal:  J Diabetes Sci Technol       Date:  2008-01

6.  Model-based closed-loop glucose control in type 1 diabetes: the DiaCon experience.

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

7.  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
Journal:  Pharm Res       Date:  2005-08-03       Impact factor: 4.200

8.  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

9.  Analysis, modeling, and simulation of the accuracy of continuous glucose sensors.

Authors:  Marc Breton; Boris Kovatchev
Journal:  J Diabetes Sci Technol       Date:  2008-09

10.  Accuracy of continuous glucose monitoring during exercise in type 1 diabetes pregnancy.

Authors:  Kavita Kumareswaran; Daniela Elleri; Janet M Allen; Karen Caldwell; Marianna Nodale; Malgorzata E Wilinska; Stephanie A Amiel; Roman Hovorka; Helen R Murphy
Journal:  Diabetes Technol Ther       Date:  2013-02-27       Impact factor: 6.118

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