Literature DB >> 19885262

Development of a neural network for prediction of glucose concentration in type 1 diabetes patients.

Scott M Pappada1, Brent D Cameron, Paul M Rosman.   

Abstract

BACKGROUND: A major difficulty in the management of diabetes is the optimization of insulin therapies to avoid occurrences of hypoglycemia and hyperglycemia. Many factors impact glucose fluctuations in diabetes patients, such as insulin dosage, nutritional intake, daily activities and lifestyle (e.g., sleep-wake cycles and exercise), and emotional states (e.g., stress). The overall effect of these factors has not been fully quantified to determine the impact on subsequent glycemic trends. Recent advances in diabetes technology such as continuous glucose monitoring (CGM) provides significant sources of data, such that quantification may be possible. Depending on the CGM technology utilized, the sampling frequency ranges from 1-5 min. In this study, an intensive electronic diary documenting the factors previously described was created. This diary was utilized by 18 patients with insulin-dependent diabetes mellitus in conjunction with CGM. Utilizing this dataset, various neural network models were constructed to predict glucose in these diabetes patients while varying the predictive window from 50-180 min. The predictive capability of each neural network within the fully trained dataset was analyzed as well as the predictive capabilities of the neural networks on unseen data.
METHODS: Neural network models were created using NeuroSolutions software with variable predictive windows of 50, 75, 100, 120, 150, and 180 min. Neural network models were trained using patient datasets ranging from 11-17 patients and evaluated on patient data not included in the neural network formulation. Performance analysis was completed for the neural network models using MATLAB. Performance measures include the calculation of the mean absolute difference percent overall and at hypoglycemic and hyperglycemic extremes, and the percentage of hypoglycemic and hyperglycemic occurrences were predicted.
RESULTS: Overall, the neural network models perform adequately at predicting at normal (>70 and <180 mg/dl) and hyperglycemic ranges (> or =180 mg/dl); however, glucose concentrations in areas of hypoglycemia were commonly overestimated. One potential reason for the "high" predictions in areas of hypoglycemia is due to the minimal occurrences of hypoglycemic events within the training data. The entire 18-patient dataset (consisting of 18,400 glucose values) had a relatively low incidence of hypoglycemia (1460 CGM values < or =70 mg/dl), which corresponds to approximately 7.9% of the dataset. On the contrary, hyperglycemia comprised approximately 35.7% of the dataset (6560 CGM values >or =180 mg/dl), and euglycemic values allotted for 56.4% of the dataset (10,380 CGM values >70 and <180 mg/dl). Results further indicate that an increase in predictive window leads to a decrease in predictive accuracy of the neural network model. It is hypothesized that the underestimation of hyperglycemic extremes is due to the extension of the predictive window and the associated inability of the neural network to determine oscillations and trends in glycemia as well as the occurrence of other relevant input events such as lifestyle, emotional states, insulin dosages, and meals, which may occur within the predicted time window and may impact or change neural network weights.
CONCLUSIONS: In this investigation, the feasibility of utilizing neural network models for the prediction of glucose using predictive windows ranging from 50-180 min is demonstrated. The predictive windows were chosen arbitrarily to cover a wide range; however, longer predictive windows were implemented to gain a predictive view of 120-180 min, which is very important for diabetes patients, specifically after meals and insulin dosages. Neural networks, such as those generated in this investigation, could be utilized in a semiclosed-loop device for guiding therapy in diabetes patients. Use of such a device may lead to better glycemic control and subsequent avoidance of complications.

Entities:  

Keywords:  CGM; diabetes; glycemic predictions; neural network

Year:  2008        PMID: 19885262      PMCID: PMC2769804          DOI: 10.1177/193229680800200507

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


  22 in total

Review 1.  Continuous glucose monitoring: roadmap for 21st century diabetes therapy.

Authors:  David C Klonoff
Journal:  Diabetes Care       Date:  2005-05       Impact factor: 19.112

2.  Intensive diabetes treatment and cardiovascular disease in patients with type 1 diabetes.

Authors:  David M Nathan; Patricia A Cleary; Jye-Yu C Backlund; Saul M Genuth; John M Lachin; Trevor J Orchard; Philip Raskin; Bernard Zinman
Journal:  N Engl J Med       Date:  2005-12-22       Impact factor: 91.245

Review 3.  Roles of circadian rhythmicity and sleep in human glucose regulation.

Authors:  E Van Cauter; K S Polonsky; A J Scheen
Journal:  Endocr Rev       Date:  1997-10       Impact factor: 19.871

4.  Predictive neural networks for learning the time course of blood glucose levels from the complex interaction of counterregulatory hormones.

Authors:  K Prank; C Jürgens; A von zur Mühlen; G Brabant
Journal:  Neural Comput       Date:  1998-05-15       Impact factor: 2.026

5.  Retinopathy and nephropathy in patients with type 1 diabetes four years after a trial of intensive therapy.

Authors:  John M Lachin; Saul Genuth; Patricia Cleary; Matthew D Davis; David M Nathan
Journal:  N Engl J Med       Date:  2000-02-10       Impact factor: 91.245

6.  Circadian modulation of glucose and insulin responses to meals: relationship to cortisol rhythm.

Authors:  E Van Cauter; E T Shapiro; H Tillil; K S Polonsky
Journal:  Am J Physiol       Date:  1992-04

7.  Obstructive sleep apnoea and diabetes mellitus: the role of cardiovascular autonomic neuropathy.

Authors:  J H Ficker; S H Dertinger; W Siegfried; H J König; M Pentz; D Sailer; A Katalinic; E G Hahn
Journal:  Eur Respir J       Date:  1998-01       Impact factor: 16.671

8.  Diabetes and sleep disturbances: findings from the Sleep Heart Health Study.

Authors:  Helaine E Resnick; Susan Redline; Eyal Shahar; Adele Gilpin; Anne Newman; Robert Walter; Gordon A Ewy; Barbara V Howard; Naresh M Punjabi
Journal:  Diabetes Care       Date:  2003-03       Impact factor: 19.112

9.  Sustained effect of intensive treatment of type 1 diabetes mellitus on development and progression of diabetic nephropathy: the Epidemiology of Diabetes Interventions and Complications (EDIC) study.

Authors: 
Journal:  JAMA       Date:  2003-10-22       Impact factor: 56.272

10.  Circadian variation of insulin requirement in insulin dependent diabetes mellitus the relationship between circadian change in insulin demand and diurnal patterns of growth hormone, cortisol and glucagon during euglycemia.

Authors:  B G Trümper; K Reschke; J Molling
Journal:  Horm Metab Res       Date:  1995-03       Impact factor: 2.936

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  17 in total

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

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

2.  Comparative assessment of glucose prediction models for patients with type 1 diabetes mellitus applying sensors for glucose and physical activity monitoring.

Authors:  K Zarkogianni; K Mitsis; E Litsa; M-T Arredondo; G Ficο; A Fioravanti; K S Nikita
Journal:  Med Biol Eng Comput       Date:  2015-06-07       Impact factor: 2.602

Review 3.  A Review of Emerging Technologies for the Management of Diabetes Mellitus.

Authors:  Konstantia Zarkogianni; Eleni Litsa; Konstantinos Mitsis; Po-Yen Wu; Chanchala D Kaddi; Chih-Wen Cheng; May D Wang; Konstantina S Nikita
Journal:  IEEE Trans Biomed Eng       Date:  2015-08-19       Impact factor: 4.538

4.  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

5.  Predicting Glycaemia in Type 1 Diabetes Patients: Experiments in Feature Engineering and Data Imputation.

Authors:  Jouhyun Jeon; Peter J Leimbigler; Gaurav Baruah; Michael H Li; Yan Fossat; Alfred J Whitehead
Journal:  J Healthc Inform Res       Date:  2019-12-10

6.  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

7.  Time Delay of CGM Sensors: Relevance, Causes, and Countermeasures.

Authors:  Günther Schmelzeisen-Redeker; Michael Schoemaker; Harald Kirchsteiger; Guido Freckmann; Lutz Heinemann; Luigi Del Re
Journal:  J Diabetes Sci Technol       Date:  2015-08-04

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.  Machine Learning For Tuning, Selection, And Ensemble Of Multiple Risk Scores For Predicting Type 2 Diabetes.

Authors:  Yujia Liu; Shangyuan Ye; Xianchao Xiao; Chenglin Sun; Gang Wang; Guixia Wang; Bo Zhang
Journal:  Risk Manag Healthc Policy       Date:  2019-11-05

10.  Artificial neural networks based controller for glucose monitoring during clamp test.

Authors:  Merav Catalogna; Eyal Cohen; Sigal Fishman; Zamir Halpern; Uri Nevo; Eshel Ben-Jacob
Journal:  PLoS One       Date:  2012-08-31       Impact factor: 3.240

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