Literature DB >> 28637358

Comparative Simulation Study of Glucose Control Methods Designed for Use in the Intensive Care Unit Setting via a Novel Controller Scoring Metric.

Jeremy DeJournett1, Leon DeJournett1.   

Abstract

BACKGROUND: Effective glucose control in the intensive care unit (ICU) setting has the potential to decrease morbidity and mortality rates and thereby decrease health care expenditures. To evaluate what constitutes effective glucose control, typically several metrics are reported, including time in range, time in mild and severe hypoglycemia, coefficient of variation, and others. To date, there is no one metric that combines all of these individual metrics to give a number indicative of overall performance. We proposed a composite metric that combines 5 commonly reported metrics, and we used this composite metric to compare 6 glucose controllers.
METHODS: We evaluated the following controllers: Ideal Medical Technologies (IMT) artificial-intelligence-based controller, Yale protocol, Glucommander, Wintergerst et al PID controller, GRIP, and NICE-SUGAR. We evaluated each controller across 80 simulated patients, 4 clinically relevant exogenous dextrose infusions, and one nonclinical infusion as a test of the controller's ability to handle difficult situations. This gave a total of 2400 5-day simulations, and 585 604 individual glucose values for analysis. We used a random walk sensor error model that gave a 10% MARD. For each controller, we calculated severe hypoglycemia (<40 mg/dL), mild hypoglycemia (40-69 mg/dL), normoglycemia (70-140 mg/dL), hyperglycemia (>140 mg/dL), and coefficient of variation (CV), as well as our novel controller metric.
RESULTS: For the controllers tested, we achieved the following median values for our novel controller scoring metric: IMT: 88.1, YALE: 46.7, GLUC: 47.2, PID: 50, GRIP: 48.2, NICE: 46.4.
CONCLUSION: The novel scoring metric employed in this study shows promise as a means for evaluating new and existing ICU-based glucose controllers, and it could be used in the future to compare results of glucose control studies in critical care. The IMT AI-based glucose controller demonstrated the most consistent performance results based on this new metric.

Entities:  

Keywords:  artificial intelligence; closed loop control; glucometrics; glucose; intensive care unit; knowledge-based system

Mesh:

Substances:

Year:  2017        PMID: 28637358      PMCID: PMC5951048          DOI: 10.1177/1932296817711297

Source DB:  PubMed          Journal:  J Diabetes Sci Technol        ISSN: 1932-2968


  37 in total

1.  Grading system to assess clinical performance of closed-loop glucose control.

Authors:  Ludovic J Chassin; Malgorzata E Wilinska; Roman Hovorka
Journal:  Diabetes Technol Ther       Date:  2005-02       Impact factor: 6.118

2.  Glycemia prediction in critically ill patients using an adaptive modeling approach.

Authors:  Tom Van Herpe; Marcelo Espinoza; Niels Haverbeke; Bart De Moor; Greet Van den Berghe
Journal:  J Diabetes Sci Technol       Date:  2007-05

3.  Continuous intravenous insulin infusion reduces the incidence of deep sternal wound infection in diabetic patients after cardiac surgical procedures.

Authors:  A P Furnary; K J Zerr; G L Grunkemeier; A Starr
Journal:  Ann Thorac Surg       Date:  1999-02       Impact factor: 4.330

4.  Hospitalization costs and clinical outcomes in CABG patients treated with intensive insulin therapy.

Authors:  Saumeth Cardona; Francisco J Pasquel; Maya Fayfman; Limin Peng; Sol Jacobs; Priyathama Vellanki; Jeff Weaver; Michael Halkos; Robert A Guyton; Vinod H Thourani; Guillermo E Umpierrez
Journal:  J Diabetes Complications       Date:  2017-01-20       Impact factor: 2.852

5.  Tight glycemic control in diabetic coronary artery bypass graft patients improves perioperative outcomes and decreases recurrent ischemic events.

Authors:  Harold L Lazar; Stuart R Chipkin; Carmel A Fitzgerald; Yusheng Bao; Howard Cabral; Carl S Apstein
Journal:  Circulation       Date:  2004-03-08       Impact factor: 29.690

6.  Analysis of healthcare resource utilization with intensive insulin therapy in critically ill patients.

Authors:  Greet Van den Berghe; Pieter J Wouters; Katrien Kesteloot; Daniel E Hilleman
Journal:  Crit Care Med       Date:  2006-03       Impact factor: 7.598

7.  Understanding hypoglycemia in hospitalized patients.

Authors:  Raphael D Hulkower; Rena M Pollack; Joel Zonszein
Journal:  Diabetes Manag (Lond)       Date:  2014-03

8.  Assessment of the severity of hypoglycemia and glycemic lability in type 1 diabetic subjects undergoing islet transplantation.

Authors:  Edmond A Ryan; Tami Shandro; Kristy Green; Breay W Paty; Peter A Senior; David Bigam; A M James Shapiro; Marie-Christine Vantyghem
Journal:  Diabetes       Date:  2004-04       Impact factor: 9.461

9.  Variability of insulin sensitivity during the first 4 days of critical illness: implications for tight glycemic control.

Authors:  Christopher G Pretty; Aaron J Le Compte; J Geoffrey Chase; Geoffrey M Shaw; Jean-Charles Preiser; Sophie Penning; Thomas Desaive
Journal:  Ann Intensive Care       Date:  2012-06-15       Impact factor: 6.925

10.  Glucose variability.

Authors:  F John Service
Journal:  Diabetes       Date:  2013-05       Impact factor: 9.461

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