Literature DB >> 21284480

Neural network-based real-time prediction of glucose in patients with insulin-dependent diabetes.

Scott M Pappada1, Brent D Cameron, Paul M Rosman, Raymond E Bourey, Thomas J Papadimos, William Olorunto, Marilyn J Borst.   

Abstract

BACKGROUND: Continuous glucose monitoring (CGM) technologies report measurements of interstitial glucose concentration every 5 min. CGM technologies have the potential to be utilized for prediction of prospective glucose concentrations with subsequent optimization of glycemic control. This article outlines a feed-forward neural network model (NNM) utilized for real-time prediction of glucose.
METHODS: A feed-forward NNM was designed for real-time prediction of glucose in patients with diabetes implementing a prediction horizon of 75 min. Inputs to the NNM included CGM values, insulin dosages, metered glucose values, nutritional intake, lifestyle, and emotional factors. Performance of the NNM was assessed in 10 patients not included in the model training set.
RESULTS: The NNM had a root mean squared error of 43.9 mg/dL and a mean absolute difference percentage of 22.1. The NNM routinely overestimates hypoglycemic extremes, which can be attributed to the limited number of hypoglycemic reactions in the model training set. The model predicts 88.6% of normal glucose concentrations (> 70 and < 180 mg/dL), 72.6% of hyperglycemia (≥ 180 mg/dL), and 2.1% of hypoglycemia (≤ 70 mg/dL). Clarke Error Grid Analysis of model predictions indicated that 92.3% of predictions could be regarded as clinically acceptable and not leading to adverse therapeutic direction. Of these predicted values, 62.3% and 30.0% were located within Zones A and B, respectively, of the error grid.
CONCLUSIONS: Real-time prediction of glucose via the proposed NNM may provide a means of intelligent therapeutic guidance and direction.

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Year:  2011        PMID: 21284480     DOI: 10.1089/dia.2010.0104

Source DB:  PubMed          Journal:  Diabetes Technol Ther        ISSN: 1520-9156            Impact factor:   6.118


  27 in total

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Authors:  Chiara Zecchin; Andrea Facchinetti; Giovanni Sparacino; Chiara Dalla Man; Chinmay Manohar; James A Levine; Ananda Basu; Yogish C Kudva; Claudio Cobelli
Journal:  Diabetes Technol Ther       Date:  2013-08-14       Impact factor: 6.118

2.  Signal processing algorithms implementing the "smart sensor" concept to improve continuous glucose monitoring in diabetes.

Authors:  Andrea Facchinetti; Giovanni Sparacino; Claudio Cobelli
Journal:  J Diabetes Sci Technol       Date:  2013-09-01

3.  Professional continuous glucose monitoring in subjects with type 1 diabetes: retrospective hypoglycemia detection.

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Journal:  J Diabetes Sci Technol       Date:  2013-01-01

4.  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

5.  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

6.  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

7.  A novel algorithm for prediction and detection of hypoglycemia based on continuous glucose monitoring and heart rate variability in patients with type 1 diabetes.

Authors:  Simon Lebech Cichosz; Jan Frystyk; Ole K Hejlesen; Lise Tarnow; Jesper Fleischer
Journal:  J Diabetes Sci Technol       Date:  2014-03-31

8.  An early warning system for hypoglycemic/hyperglycemic events based on fusion of adaptive prediction models.

Authors:  Elena Daskalaki; Kirsten Nørgaard; Thomas Züger; Aikaterini Prountzou; Peter Diem; Stavroula Mougiakakou
Journal:  J Diabetes Sci Technol       Date:  2013-05-01

9.  How Much Is Short-Term Glucose Prediction in Type 1 Diabetes Improved by Adding Insulin Delivery and Meal Content Information to CGM Data? A Proof-of-Concept Study.

Authors:  Chiara Zecchin; Andrea Facchinetti; Giovanni Sparacino; Claudio Cobelli
Journal:  J Diabetes Sci Technol       Date:  2016-08-22

10.  Sliding mode control for a fractional-order non-linear glucose-insulin system.

Authors:  Muhammad Waleed Khan; Muhammad Abid; Abdul Qayyum Khan; Ghulam Mustafa; Muzamil Ali; Asifullah Khan
Journal:  IET Syst Biol       Date:  2020-10       Impact factor: 1.615

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