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Closed-loop Regulation of Blood Glucose based on Subcutaneous Measurements

B. Wayne Bequette. Closed-loop Regulation of Blood Glucose based on Subcutaneous Measurements. Background Model Predictive Control (MPC), State Estimation Model and Controller Design Unique Challenges of Diabetes Simulation Results Focus on Meal Disturbance Rejection

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Closed-loop Regulation of Blood Glucose based on Subcutaneous Measurements

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  1. B. Wayne Bequette Closed-loop Regulation of Blood Glucose based on Subcutaneous Measurements • Background • Model Predictive Control (MPC), State Estimation • Model and Controller Design • Unique Challenges of Diabetes • Simulation Results • Focus on Meal Disturbance Rejection • Sensor Degradation and Compensation

  2. Automated Feedback Control glucose setpoint patient controller pump Sensor (Therasense)

  3. Model Predictive Control Find current and future insulin infusion rates that best meet a desired future glucose trajectory. Implement first “move.” Correct for model mismatch (estimate states), then perform new optimization.

  4. MPC Issues • Type of Model • Linear differential equations • Model Update • Additive “correction”? • Explicit disturbance (meal) or parameter estimation? • Error Due to Disturbance or Noise? • Future Prediction? • Classical MPC - assume constant for future • Sensors & Estimation • Measure subcutaneous, control blood glucose

  5. MPC Literature Review • Dogs, Venous Blood, Glucose+Insulin Delivery • Kan et al. (2000) • Simulation, s.c. Sensor + Delivery, ANN • Trajanoski and Wach (1998) • Simulation, i.v.-i.v., EFK-based MPC • Parker et al. (1999) • Simulation, i.v.-s.c., EKF-based MPC • Lynch and Bequette (2002) • Simulation, s.c.-s.c., EKF-based MPC • Lynch (2002)

  6. Estimation - Basic Idea

  7. Optimal Estimation - Kalman Filter • Measurement noise vs. process noise (disturbances) • If little measurement noise • Trust measurement more than model • If much measurement noise • Trust model more than measurement • Estimate unmeasured states • Blood glucose based on s.c. measurement, for example

  8. Simulation Study • Simulated Type I Diabetic • Minimal Model - Bergman (3-state) • Lehman and Deutsch (1992) Meal Model Absorption into circulation Gastric emptying

  9. Constant Disturbance Assumption (Classical) Additive step output Glucose conc. Additive step input Insulin infusion

  10. Improved Meal Effect Prediction (ramp)

  11. Simulation Study Using s.c. Sensor • Simulated Type I Diabetic • 19 Differential Equations (Sorenson, 1985) - Extended • Model for Estimator/Controller • Modified Bergman “minimal model” • Parameters fit to Sorenson response • Augmented equation for meal disturbance

  12. Simulation Results - s.c. Sensor Degradation Motivates use of additional blood capillary measurement for s.c. sensor calibration 50% sensor sensitivity decrease over 3 days

  13. Simulation results: Sensor compensation 5% s.c. noise (s.d. = 3.8 mg/dl) 2% capillary blood noise (s.d. =1.6 mg/dl) Sensor degradation (50% over 3 days) Sensitivity estimate

  14. Summary • Kalman Filter (estimation)-based MPC • Disturbance (meal) estimation • Improved disturbance prediction • Low-order linear model, high-order patient • State estimation: measure s.c., estimate blood glucose • Estimate sensor sensitivity with capillary blood measurement • Dual rate Kalman Filter • Future • Multiple Models

  15. Acknowledgment • Sandra Lynch • MS Thesis, RPI (2002)

  16. Kalman Filter w/Augmented States Augmented state (includes meal disturbance) Predictor-corrector equations: Insulin infusion Aug. state estimate Kalman gain Measured s.c. glucose

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