14 research outputs found
Estimation of Future Glucose Concentrations with Subject-Specific Recursive Linear Models
Background: Estimation of future glucose concentrations is a crucial task for diabetes management. Predicted glucose values can be used for early hypoglycemic/hyperglycemic alarms or for adjustment of insulin injections or insulin infusion rates of manual or automated pumps. Continuous glucose monitoring (CGM) technologies provide glucose readings at a high frequency and consequently detailed insight into the subject's glucose variations. The objective of this research is to develop reliable subject-specific glucose prediction models using CGM data. Methods: Two separate patient databases collected under hospitalized (disturbance-free) and normal daily life conditions are used for validation of the proposed glucose prediction algorithm. Both databases consist of glucose concentration data collected at 5-min intervals using a CGM device. Using time-series analysis, low-order linear models are developed from patients' own CGM data. The time-series models are integrated with recursive identification and change detection methods, which enables dynamic adaptation of the model to inter-/intra-subject variability and glycemic disturbances. Prediction performance is evaluated in terms of glucose prediction error and Clarke Error Grid analysis (CG-EGA). Results: Prediction errors are significantly reduced with recursive identification of the models, and predictions are further improved with inclusion of a parameter change detection method. CG-EGA analysis results in accurate readings of 90% or more. Conclusions: Subject-specific glucose prediction strategy has been developed. Including a change detection method to the recursive algorithm improves the prediction accuracy. The proposed modeling algorithm with small number of parameters is a good candidate for installation in portable devices for early hypoglycemic/hyperglycemic alarms and for closing the glucose regulation loop with an insulin pump.Endnote format citatio
Predicting Glycemia in Type 1 Diabetes Mellitus with Subspace-Based Linear Multistep Predictors
A major challenge for a person with diabetes is to adapt insulin dosage regimens and food intake to keep blood glucose within tolerable limits during daily life activities. The accurate prediction of blood glucose levels in response to inputs would support the patients with invaluable information for appropriate on-the-spot decision making concerning the management of the disease. Against this background, in this paper we propose multistep data-driven predictors to the purpose of predicting blood glucose multiple steps ahead in the future. We formulate the predictors based on the state-space construction step in subspace identification methods for linear systems. The clinical data of 14 type 1 diabetic patients collected during a 3-days long hospital visit were used. We exploited physiological models from the literature to filter the raw information on carbohydrate and insulin intakes in order to retrieve the inputs signals to the predictors. Predictions were based on the collected CGMS measurements, recalibrated against finger stick samples and smoothed through a regularization step. Performances were assessed with respect to YSI blood glucose samples and compared to those achieved with a Kalman filter identified from data. Results proved the competitiveness of the proposed approach
Hypoglycemia Early Alarm Systems Based on Multivariable Models
Hypoglycemia is a major challenge of artificial pancreas systems and a source of concern for potential users and parents of young children with Type 1 diabetes (T1D). Early alarms to warn the potential of hypoglycemia are essential and should provide enough time to take action to avoid hypoglycemia. Many alarm systems proposed in the literature are based on interpretation of recent trends in glucose values. In the present study, subject-specific recursive linear time series models are introduced as a better alternative to capture glucose variations and predict future blood glucose concentrations. These models are then used in hypoglycemia early alarm systems that notify patients to take action to prevent hypoglycemia before it happens. The models developed and the hypoglycemia alarm system are tested retrospectively using T1D subject data. A Savitzky-Golay filter and a Kalman filter are used to reduce noise in patient data. The hypoglycemia alarm algorithm is developed by using predictions of future glucose concentrations from recursive models. The modeling algorithm enables the dynamic adaptation of models to inter-/intra-subject variation and glycemic disturbances and provides satisfactory glucose concentration prediction with relatively small error. The alarm systems demonstrate good performance in prediction of hypoglycemia and ultimately in prevention of its occurrence
Jump Neural Network for Real-Time Prediction of Glucose ConcentrationArtificial Neural Networks
Prediction of the future value of a variable is of central importance in a wide variety of fields, including
economy and finance, meteorology, informatics, and, last but not least important, medicine. For example,
in the therapy of Type 1 Diabetes (T1D), in which, for patient safety, glucose concentration in the blood
should be maintained in a defined normoglycemic range, the ability to forecast glucose concentration in
the short-term (with a prediction horizon of around 30 min) might be sufficient to reduce the incidence
of hypoglycemic and hyperglycemic events. Neural Network (NN) approaches are suitable for prediction
purposes because of their ability to model nonlinear dynamics and handle in their inputs signals coming
from different domains. In this chapter we illustrate the design of a jump NN glucose prediction algorithm
that exploits past glucose concentration data, measured in real-time by a minimally invasive continuous
glucose monitoring (CGM) sensor, and information on ingested carbohydrates, supplied by the patient
himself or herself. The methodology is assessed by tuning the NN on data of ten T1D individuals and then
testing it on a dataset of ten different subjects. Results with a prediction horizon of 30 min show that
prediction of glucose concentration in T1D via NN is feasible and sufficiently accurate. The average time
anticipation obtained is compatible with the generation of preventive hypoglycemic and hyperglycemic
alerts and the improvement of artificial pancreas performance