Neural Network Incorporating Meal Information Improves Accuracy of Short-Time Prediction of Glucose Concentration
暂无分享,去创建一个
Giuseppe De Nicolao | Giovanni Sparacino | Claudio Cobelli | Andrea Facchinetti | Chiara Zecchin | G. Nicolao | C. Cobelli | A. Facchinetti | G. Sparacino | Chiara Zecchin
[1] Scott M. Pappada,et al. Neural network-based real-time prediction of glucose in patients with insulin-dependent diabetes. , 2011, Diabetes technology & therapeutics.
[2] Geoffrey McGarraugh. Alarm Characterization for a Continuous Glucose Monitor That Replaces Traditional Blood Glucose Monitoring , 2010, Journal of diabetes science and technology.
[3] Giovanni Sparacino,et al. Modeling the Error of Continuous Glucose Monitoring Sensor Data: Critical Aspects Discussed through Simulation Studies , 2010, Journal of diabetes science and technology.
[4] C. C. Palerm,et al. Hypoglycemia prediction and detection using optimal estimation. , 2005, Diabetes technology & therapeutics.
[5] G. S. Wilson,et al. Prevention of hypoglycemia using risk assessment with a continuous glucose monitoring system. , 2002, Diabetes.
[6] Jay S Skyler. CGM--a technology in evolution. , 2009, Diabetes technology & therapeutics.
[7] C. Cobelli,et al. Artificial neural network algorithm for online glucose prediction from continuous glucose monitoring. , 2010, Diabetes technology & therapeutics.
[8] Giovanni Sparacino,et al. Glucose Concentration can be Predicted Ahead in Time From Continuous Glucose Monitoring Sensor Time-Series , 2007, IEEE Transactions on Biomedical Engineering.
[9] Srinivasan Rajaraman,et al. Predictive Monitoring for Improved Management of Glucose Levels , 2007, Journal of diabetes science and technology.
[10] Claudio Cobelli,et al. A System Model of Oral Glucose Absorption: Validation on Gold Standard Data , 2006, IEEE Transactions on Biomedical Engineering.
[11] Claudio Cobelli,et al. Meal Simulation Model of the Glucose-Insulin System , 2007, IEEE Transactions on Biomedical Engineering.
[12] K. Eskaf,et al. Predicting blood glucose levels in diabetics using feature extraction and Artificial Neural Networks , 2008, 2008 3rd International Conference on Information and Communication Technologies: From Theory to Applications.
[13] F. Ovalle,et al. Continuous Glucose Monitoring and Intensive Treatment of Type 1 Diabetes , 2009 .
[14] Giovanni Sparacino,et al. Enhanced accuracy of continuous glucose monitoring by online extended kalman filtering. , 2010, Diabetes technology & therapeutics.
[15] Yinghui Lu,et al. Universal Glucose Models for Predicting Subcutaneous Glucose Concentration in Humans , 2010, IEEE Transactions on Information Technology in Biomedicine.
[16] B Wayne Bequette,et al. Continuous Glucose Monitoring: Real-Time Algorithms for Calibration, Filtering, and Alarms , 2010, Journal of diabetes science and technology.
[17] Howard Zisser,et al. Improvement in glycemic excursions with a transcutaneous, real-time continuous glucose sensor: a randomized controlled trial. , 2006, Diabetes care.
[18] D. Klonoff. Benefits and Limitations of Self-Monitoring of Blood Glucose , 2007, Journal of diabetes science and technology.
[19] D. Gough,et al. Is blood glucose predictable from previous values? A solicitation for data. , 1999, Diabetes.
[20] Giovanni Sparacino,et al. “Smart” Continuous Glucose Monitoring Sensors: On-Line Signal Processing Issues , 2010, Sensors.
[21] Giovanni Sparacino,et al. A new index to optimally design and compare continuous glucose monitoring glucose prediction algorithms. , 2011, Diabetes technology & therapeutics.
[22] J. Mastrototaro,et al. Alarms based on real-time sensor glucose values alert patients to hypo- and hyperglycemia: the guardian continuous monitoring system. , 2004, Diabetes technology & therapeutics.
[23] C. Cobelli,et al. Artificial neural network algorithm for online glucose prediction from continuous glucose monitoring. , 2010, Diabetes technology & therapeutics.
[24] Srinivasan Rajaraman,et al. Predicting Subcutaneous Glucose Concentration in Humans: Data-Driven Glucose Modeling , 2009, IEEE Transactions on Biomedical Engineering.
[25] L. Quinn,et al. Estimation of future glucose concentrations with subject-specific recursive linear models. , 2009, Diabetes technology & therapeutics.
[26] Apurv Kamath,et al. Methods of Evaluating the Utility of Continuous Glucose Monitor Alerts , 2010, Journal of diabetes science and technology.
[27] Bruce Buckingham. Hypoglycemia detection, and better yet, prevention, in pediatric patients. , 2005, Diabetes technology & therapeutics.
[28] Giovanni Sparacino,et al. Continuous glucose monitoring and hypo/hyperglycaemia prediction , 2006 .
[29] O. Nelles. Nonlinear System Identification: From Classical Approaches to Neural Networks and Fuzzy Models , 2000 .
[30] Francis J Doyle,et al. Experimental Evaluation of a Recursive Model Identification Technique for Type 1 Diabetes , 2009, Journal of diabetes science and technology.
[31] Michael O'Grady,et al. Continuous glucose monitoring and intensive treatment of type 1 diabetes. , 2008, The New England journal of medicine.