Literature DB >> 19885110

Predictive monitoring for improved management of glucose levels.

Jaques Reifman1, Srinivasan Rajaraman, Andrei Gribok, W Kenneth Ward.   

Abstract

BACKGROUND: Recent developments and expected near-future improvements in continuous glucose monitoring (CGM) devices provide opportunities to couple them with mathematical forecasting models to produce predictive monitoring systems for early, proactive glycemia management of diabetes mellitus patients before glucose levels drift to undesirable levels. This article assesses the feasibility of data-driven models to serve as the forecasting engine of predictive monitoring systems.
METHODS: We investigated the capabilities of data-driven autoregressive (AR) models to (1) capture the correlations in glucose time-series data, (2) make accurate predictions as a function of prediction horizon, and (3) be made portable from individual to individual without any need for model tuning. The investigation is performed by employing CGM data from nine type 1 diabetic subjects collected over a continuous 5-day period.
RESULTS: With CGM data serving as the gold standard, AR model-based predictions of glucose levels assessed over nine subjects with Clarke error grid analysis indicated that, for a 30-minute prediction horizon, individually tuned models yield 97.6 to 100.0% of data in the clinically acceptable zones A and B, whereas cross-subject, portable models yield 95.8 to 99.7% of data in zones A and B.
CONCLUSIONS: This study shows that, for a 30-minute prediction horizon, data-driven AR models provide sufficiently-accurate and clinically-acceptable estimates of glucose levels for timely, proactive therapy and should be considered as the modeling engine for predictive monitoring of patients with type 1 diabetes mellitus. It also suggests that AR models can be made portable from individual to individual with minor performance penalties, while greatly reducing the burden associated with model tuning and data collection for model development.

Entities:  

Keywords:  autoregressive model; continuous glucose monitoring; diabetes; predictive monitoring

Year:  2007        PMID: 19885110      PMCID: PMC2769639          DOI: 10.1177/193229680700100405

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


  10 in total

1.  Evaluating the accuracy of continuous glucose-monitoring sensors: continuous glucose-error grid analysis illustrated by TheraSense Freestyle Navigator data.

Authors:  Boris P Kovatchev; Linda A Gonder-Frederick; Daniel J Cox; William L Clarke
Journal:  Diabetes Care       Date:  2004-08       Impact factor: 19.112

2.  Nonlinear model predictive control of glucose concentration in subjects with type 1 diabetes.

Authors:  Roman Hovorka; Valentina Canonico; Ludovic J Chassin; Ulrich Haueter; Massimo Massi-Benedetti; Marco Orsini Federici; Thomas R Pieber; Helga C Schaller; Lukas Schaupp; Thomas Vering; Malgorzata E Wilinska
Journal:  Physiol Meas       Date:  2004-08       Impact factor: 2.833

3.  A critical assessment of algorithms and challenges in the development of a closed-loop artificial pancreas.

Authors:  B Wayne Bequette
Journal:  Diabetes Technol Ther       Date:  2005-02       Impact factor: 6.118

4.  Error bounds for data-driven models of dynamical systems.

Authors:  Nicholas O Oleng'; Andrei Gribok; Jaques Reifman
Journal:  Comput Biol Med       Date:  2006-08-08       Impact factor: 4.589

5.  Regularization of body core temperature prediction during physical activity.

Authors:  Andrei Gribok; Thomas McKenna; Jacques Reifman
Journal:  Conf Proc IEEE Eng Med Biol Soc       Date:  2006

6.  Evaluating clinical accuracy of systems for self-monitoring of blood glucose.

Authors:  W L Clarke; D Cox; L A Gonder-Frederick; W Carter; S L Pohl
Journal:  Diabetes Care       Date:  1987 Sep-Oct       Impact factor: 19.112

7.  Modeling insulin action for development of a closed-loop artificial pancreas.

Authors:  G M Steil; Bud Clark; Sami Kanderian; K Rebrin
Journal:  Diabetes Technol Ther       Date:  2005-02       Impact factor: 6.118

Review 8.  How does blood glucose control with insulin save lives in intensive care?

Authors:  Greet Van den Berghe
Journal:  J Clin Invest       Date:  2004-11       Impact factor: 14.808

9.  Continuous subcutaneous glucose monitoring improved metabolic control in pediatric patients with type 1 diabetes: a controlled crossover study.

Authors:  Johnny Ludvigsson; Ragnar Hanas
Journal:  Pediatrics       Date:  2003-05       Impact factor: 7.124

10.  Glucose concentration can be predicted ahead in time from continuous glucose monitoring sensor time-series.

Authors:  Giovanni Sparacino; Francesca Zanderigo; Stefano Corazza; Alberto Maran; Andrea Facchinetti; Claudio Cobelli
Journal:  IEEE Trans Biomed Eng       Date:  2007-05       Impact factor: 4.538

  10 in total
  20 in total

1.  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

2.  Continuous glucose monitoring: real-time algorithms for calibration, filtering, and alarms.

Authors:  B Wayne Bequette
Journal:  J Diabetes Sci Technol       Date:  2010-03-01

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

Authors:  Garry M Steil; Jaques Reifman
Journal:  J Diabetes Sci Technol       Date:  2009-03-01

4.  Autoregressive Modeling of Drift and Random Error to Characterize a Continuous Intravascular Glucose Monitoring Sensor.

Authors:  Tony Zhou; Jennifer L Dickson; J Geoffrey Chase
Journal:  J Diabetes Sci Technol       Date:  2017-07-14

5.  Model-Fusion-Based Online Glucose Concentration Predictions in People with Type 1 Diabetes.

Authors:  Xia Yu; Kamuran Turksoy; Mudassir Rashid; Jianyuan Feng; Nicole Frantz; Iman Hajizadeh; Sediqeh Samadi; Mert Sevil; Caterina Lazaro; Zacharie Maloney; Elizabeth Littlejohn; Laurie Quinn; Ali Cinar
Journal:  Control Eng Pract       Date:  2018-02       Impact factor: 3.475

6.  Diabetes: Models, Signals, and Control.

Authors:  Claudio Cobelli; Chiara Dalla Man; Giovanni Sparacino; Lalo Magni; Giuseppe De Nicolao; Boris P Kovatchev
Journal:  IEEE Rev Biomed Eng       Date:  2009-01-01

7.  Predicting subcutaneous glucose concentration using a latent-variable-based statistical method for type 1 diabetes mellitus.

Authors:  Chunhui Zhao; Eyal Dassau; Lois Jovanovič; Howard C Zisser; Francis J Doyle; Dale E Seborg
Journal:  J Diabetes Sci Technol       Date:  2012-05-01

8.  Online Glucose Prediction Using Computationally Efficient Sparse Kernel Filtering Algorithms in Type-1 Diabetes.

Authors:  Xia Yu; Mudassir Rashid; Jianyuan Feng; Nicole Hobbs; Iman Hajizadeh; Sediqeh Samadi; Mert Sevil; Caterina Lazaro; Zacharie Maloney; Elizabeth Littlejohn; Laurie Quinn; Ali Cinar
Journal:  IEEE Trans Control Syst Technol       Date:  2018-06-22       Impact factor: 5.485

9.  Personalized State-space Modeling of Glucose Dynamics for Type 1 Diabetes Using Continuously Monitored Glucose, Insulin Dose, and Meal Intake: An Extended Kalman Filter Approach.

Authors:  Qian Wang; Peter Molenaar; Saurabh Harsh; Kenneth Freeman; Jinyu Xie; Carol Gold; Mike Rovine; Jan Ulbrecht
Journal:  J Diabetes Sci Technol       Date:  2014-03-24

10.  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
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