Prediction methods for blood glucose concentration : design, use and evaluation /
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Imprint: | Cham : Springer, [2016] ©2016 |
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Description: | 1 online resource |
Language: | English |
Series: | Lecture notes in bioengineering Lecture notes in bioengineering. |
Subject: | |
Format: | E-Resource Book |
URL for this record: | http://pi.lib.uchicago.edu/1001/cat/bib/11250491 |
Table of Contents:
- Preface; Contents; Alternative Frameworks for Personalized Insulin
- Glucose Models; 1 Introduction; 2 Alternatives for Modeling; 3 Model Structures; 4 Interval Models; 4.1 Continuous Time System Identification; 4.2 Interval Model Results; 5 A Probabilistic Approach; 5.1 Gaussian and Generalized Gaussian Mixture Models; 5.2 Modeling Method and Model Structure; 5.3 Modeling Results; 6 Conclusion and Outlook; References; Accuracy of BG Meters and CGM Systems: Possible Influence Factors for the Glucose Prediction Based on Tissue Glucose Concentrations; 1 Introduction.
- 2 SMBG Accuracy and CGM Calibration with SMBG Results2.1 SMBG Accuracy; 2.2 CGM Calibration with SMBG Results; 3 Accuracy of CGM Systems; 3.1 Mean Absolute Relative Difference; 3.2 Precision Absolute Relative Difference; 4 Glucose Prediction Based on Tissue Glucose Concentrations; References; CGM
- How Good Is Good Enough?; 1 Background; 2 CGM Performance Assessment; 2.1 Sensor Signal; 2.2 Reference Methodology; 2.3 Accuracy and Precision; 3 State of the Art; 4 Unresolved Issues; 4.1 Transient Sensor Signal Disruption; 4.2 Transient Significant CGM Inaccuracies.
- 5 Next Steps in CGM Development6 Conclusion; References; Can We Use Measurements to Classify Patients Suffering from Type 1 Diabetes into Subcategories and Does It Make Sense?; 1 Introduction; 2 Database of CGMS Recordings; 3 Modelling Using a Simple Transfer Function Model; 3.1 Description of the Model and System Identification; 3.2 Trends and Correlations; 3.3 Clustering and Classification; 3.4 Discussion of Results and Further Outlook; 4 Analysis of the High Frequency Content of CGMS Signals; 4.1 Filtering of CGMS Signals; 4.2 Trends and Classification.
- 4.3 Discussion of Results and Further OutlookReferences; Prevention of Severe Hypoglycemia by Continuous EEG Monitoring; 1 Background; 2 Clinical Studies
- Proof of Concept; 3 The Device; 4 Quantitative Evaluation of EEG Recorded with the Partly Implanted EEG Recorder; 5 Development of an Algorithm for Detection and Warning of Severe Hypoglycaemia in Type 1 Diabetes; 6 Clinical Studies
- Preliminary Results with Implanted Device; 7 Discussion and Perspectives; 8 Conclusion; References; Meta-Learning Based Blood Glucose Predictor for Diabetic Smartphone App; 1 Introduction.
- 2 Fully Adaptive Regularized Learning Algorithm for the Blood Glucose Prediction3 Android Version of the FARL Algorithm; 3.1 Translation of the Algorithm from Matlab to Android System; 3.2 Microprocessor and Power Consumption Analysis; 4 Performance Assessment; 4.1 Clinical Accuracy Metrics; 4.2 Performance Assessment; 4.3 Comparison of the Matlab and Android Versions; 5 Conclusions and Discussion; References; Predicting Glycemia in Type 1 Diabetes Mellitus with Subspace-Based Linear Multistep Predictors; 1 Introduction; 2 Subspace-Based Linear Multistep Predictors; 2.1 Notation.