Postprandial fuzzy adaptive strategy for a hybrid proportional derivative controller for the artificial pancreas.
Aleix BeneytoJosep VehíPublished in: Medical & biological engineering & computing (2018)
This paper presents a support fuzzy adaptive system for a hybrid proportional derivative controller that will refine its parameters during postprandial periods to enhance performance. Even though glucose controllers have improved over the last decade, tuning them and keeping them tuned are still major challenges. Changes in a patient's lifestyle, stress, exercise, or other activities may modify their blood glucose system, making it necessary to retune or change the insulin dosing algorithm. This paper presents a strategy to adjust the parameters of a proportional derivative controller using the so-called safety auxiliary feedback element loop for type 1 diabetic patients. The main parameters, such as the insulin on board limit and proportional gain are tuned using postprandial performance indexes and the information given by the controller itself. The adaptive and robust performance of the control algorithm was assessed "in silico" on a cohort of virtual patients under challenging realistic scenarios considering mixed meals, circadian variations, time-varying uncertainties, sensor errors, and other disturbances. The results showed that an adaptive strategy can significantly improve the performance of postprandial glucose control, individualizing the tuning by directly taking into account the intra-patient variability of type 1 patients. Graphical Abstract title: Postprandial glycaemia improvement via fuzzy adaptive control A fuzzy inference engine was implemented within a clinically tested artificial pancreas control system. The aim of the fuzzy system was to adapt controller parameters to improve postprandial blood glucose control while ensuring safety. Results show a significant improvement over time of the postprandial glucose response due to the adaptation, thus demonstrating the usefulness of the fuzzy adaptive system.
Keyphrases
- blood glucose
- glycemic control
- end stage renal disease
- neural network
- type diabetes
- blood pressure
- newly diagnosed
- chronic kidney disease
- prognostic factors
- machine learning
- peritoneal dialysis
- case report
- emergency department
- cardiovascular disease
- weight loss
- metabolic syndrome
- deep learning
- transcription factor
- climate change
- social media
- adverse drug
- electronic health record
- quality improvement
- heat stress
- patient reported
- water soluble