Literature DB >> 30287976

Multi-level Supervision and Modification of Artificial Pancreas Control System.

Jianyuan Feng1, Iman Hajizadeh1, Xia Yu2, Mudassir Rashid1, Kamuran Turksoy3, Sediqeh Samadi1, Mert Sevil3, Nicole Hobbs3, Rachel Brandt3, Caterina Lazaro4, Zacharie Maloney4, Elizabeth Littlejohn5, Louis H Philipson6, Ali Cinar1,3.   

Abstract

Artificial pancreas (AP) systems provide automated regulation of blood glucose concentration (BGC) for people with type 1 diabetes (T1D). An AP includes three components: a continuous glucose monitoring (CGM) sensor, a controller calculating insulin infusion rate based on the CGM signal, and a pump delivering the insulin amount calculated by the controller to the patient. The performance of the AP system depends on successful operation of these three components. Many APs use model predictive controllers that rely on models to predict BGC and to calculate the optimal insulin infusion rate. The performance of model-based controllers depends on the accuracy of the models that is affected by large dynamic changes in glucose-insulin metabolism or equipment performance that may move the operating conditions away from those used in developing the models and designing the control system. Sensor errors and missing signals will cause calculation of erroneous insulin infusion rates. And the performance of the controller may vary at each sampling step and each period (meal, exercise, and sleep), and from day to day. Here we describe a multi-level supervision and controller modification (ML-SCM) module is developed to supervise the performance of the AP system and retune the controller. It supervises AP performance in 3 time windows: sample level, period level, and day level. At sample level, an online controller performance assessment sub-module will generate controller performance indexes to evaluate various components of the AP system and conservatively modify the controller. A sensor error detection and signal reconciliation module will detect sensor error and reconcile the CGM sensor signal at each sample. At period level, the controller performance is evaluated with information collected during a certain time period and the controller is tuned more aggressively. At the day level, the daily CGM ranges are further analyzed to determine the adjustable range of controller parameters used for sample level and period level. Thirty subjects in the UVa/Padova metabolic simulator were used to evaluate the performance of the ML-SCM module and one clinical experiment is used to illustrate its performance in a clinical environment. The results indicate that the AP system with an ML-SCM module has a safer range of glucose concentration distribution and more appropriate insulin infusion rate suggestions than an AP system without the ML-SCM module.

Entities:  

Keywords:  Artificial Pancreas; Controller Performance Assessment; Controller Retuning; Sensor Error Detection; Type 1 Diabetes

Year:  2018        PMID: 30287976      PMCID: PMC6166877          DOI: 10.1016/j.compchemeng.2018.02.002

Source DB:  PubMed          Journal:  Comput Chem Eng        ISSN: 0098-1354            Impact factor:   3.845


  22 in total

1.  Classification of Physical Activity: Information to Artificial Pancreas Control Systems in Real Time.

Authors:  Kamuran Turksoy; Thiago Marques Luz Paulino; Dessi P Zaharieva; Loren Yavelberg; Veronica Jamnik; Michael C Riddell; Ali Cinar
Journal:  J Diabetes Sci Technol       Date:  2015-10-06

2.  A closed-loop artificial pancreas using model predictive control and a sliding meal size estimator.

Authors:  Hyunjin Lee; Bruce A Buckingham; Darrell M Wilson; B Wayne Bequette
Journal:  J Diabetes Sci Technol       Date:  2009-09-01

3.  Effect of insulin feedback on closed-loop glucose control: a crossover study.

Authors:  Jessica L Ruiz; Jennifer L Sherr; Eda Cengiz; Lori Carria; Anirban Roy; Gayane Voskanyan; William V Tamborlane; Stuart A Weinzimer
Journal:  J Diabetes Sci Technol       Date:  2012-09-01

4.  Sleep, glucose, and daytime functioning in youth with type 1 diabetes.

Authors:  Michelle M Perfect; Priti G Patel; Roxanne E Scott; Mark D Wheeler; Chetanbabu Patel; Kurt Griffin; Seth T Sorensen; James L Goodwin; Stuart F Quan
Journal:  Sleep       Date:  2012-01-01       Impact factor: 5.849

5.  Proposed clinical application for tuning fuzzy logic controller of artificial pancreas utilizing a personalization factor.

Authors:  Richard Mauseth; Youqing Wang; Eyal Dassau; Robert Kircher; Donald Matheson; Howard Zisser; Lois Jovanovic; Francis J Doyle
Journal:  J Diabetes Sci Technol       Date:  2010-07-01

6.  MD-logic artificial pancreas system: a pilot study in adults with type 1 diabetes.

Authors:  Eran Atlas; Revital Nimri; Shahar Miller; Eli A Grunberg; Moshe Phillip
Journal:  Diabetes Care       Date:  2010-02-11       Impact factor: 19.112

7.  Model predictive control of type 1 diabetes: an in silico trial.

Authors:  Lalo Magni; Davide M Raimondo; Luca Bossi; Chiara Dalla Man; Giuseppe De Nicolao; Boris Kovatchev; Claudio Cobelli
Journal:  J Diabetes Sci Technol       Date:  2007-11

8.  An integrated multivariable artificial pancreas control system.

Authors:  Kamuran Turksoy; Lauretta T Quinn; Elizabeth Littlejohn; Ali Cinar
Journal:  J Diabetes Sci Technol       Date:  2014-04-07

9.  Clinical evaluation of an automated artificial pancreas using zone-model predictive control and health monitoring system.

Authors:  Rebecca A Harvey; Eyal Dassau; Wendy C Bevier; Dale E Seborg; Lois Jovanovič; Francis J Doyle; Howard C Zisser
Journal:  Diabetes Technol Ther       Date:  2014-01-28       Impact factor: 6.118

10.  Reduced hypoglycemia and increased time in target using closed-loop insulin delivery during nights with or without antecedent afternoon exercise in type 1 diabetes.

Authors:  Jennifer L Sherr; Eda Cengiz; Cesar C Palerm; Bud Clark; Natalie Kurtz; Anirban Roy; Lori Carria; Martin Cantwell; William V Tamborlane; Stuart A Weinzimer
Journal:  Diabetes Care       Date:  2013-06-11       Impact factor: 19.112

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  3 in total

1.  Incorporating Unannounced Meals and Exercise in Adaptive Learning of Personalized Models for Multivariable Artificial Pancreas Systems.

Authors:  Iman Hajizadeh; Mudassir Rashid; Kamuran Turksoy; Sediqeh Samadi; Jianyuan Feng; Mert Sevil; Nicole Hobbs; Caterina Lazaro; Zacharie Maloney; Elizabeth Littlejohn; Ali Cinar
Journal:  J Diabetes Sci Technol       Date:  2018-07-31

2.  Insulin-Based Infusion System: Preliminary Study.

Authors:  Nasseh Hashemi; Tim Valk; Kim Houlind; Niels Ejskjaer
Journal:  J Diabetes Sci Technol       Date:  2019-01-24

3.  Controlling the AP Controller: Controller Performance Assessment and Modification.

Authors:  Iman Hajizadeh; Nicole Hobbs; Sediqeh Samadi; Mert Sevil; Mudassir Rashid; Rachel Brandt; Mohammad Reza Askari; Zacharie Maloney; Ali Cinar
Journal:  J Diabetes Sci Technol       Date:  2019-09-27
  3 in total

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