A Novel Method to Detect Pressure-Induced Sensor Attenuations (PISA) in an Artificial Pancreas

Author:

Baysal Nihat1,Cameron Fraser1,Buckingham Bruce A.2,Wilson Darrell M.2,Chase H. Peter3,Maahs David M.3,Bequette B. Wayne1,Buckingham Bruce A.,Wilson Darrell M.,Aye Tandy,Clinton Paula,Harris Breanne P.,Chase H. Peter,Maahs David M.,Slover Robert,Wadwa Paul,Realsen Jaime,Messer Laurel,Hramiak Irene,Paul Terri,Tereschyn Sue,Driscoll Marsha,Bequette B. Wayne,Cameron Fraser,Baysal Nihat,Beck Roy W.,Lum John,Kollman Craig,Calhoun Peter,Sibayan Judy,Njeru Nelly M.,Sauer Werner,Lott Jennifer,Pickup John C.,Hirsch Irl,Wolpert Howard,

Affiliation:

1. Department of Chemical & Biological Engineering, Rensselaer Polytechnic Institute, Troy, NY, USA

2. Division of Pediatric Endocrinology and Diabetes, Stanford University, Stanford, CA, USA

3. Barbara Davis Center for Childhood Diabetes, Aurora, CO, USA

Abstract

Background: Continuous glucose monitors (CGMs) provide real-time interstitial glucose concentrations that are essential for automated treatment of individuals with type 1 diabetes. Miscalibration, noise spikes, dropouts, or pressure applied to the site (e.g., lying on the site while sleeping) can cause inaccurate glucose signals, which could lead to inappropriate insulin dosing decisions. These studies focus on the problem of pressure-induced sensor attenuations (PISAs) that occur overnight and can cause undesirable pump shut-offs in a predictive low glucose suspend system. Methods: The algorithm presented here uses real-time CGM readings without knowledge of meals, insulin doses, activity, sensor recalibrations, or fingerstick measurements. The real-time PISA detection technique was tested on outpatient “in-home” data from a predictive low-glucose suspend trial with over 1125 nights of data. A total of 178 sets were created by using different parameters for the PISA detection algorithm to illustrate its range of available performance. Results: The tracings were reviewed via a web-based analysis tool by an engineer with an extensive expertise on analyzing clinical datasets and ~3% of the CGM readings were marked as PISA events which were used as the gold standard. It is shown that 88.34% of the PISAs were successfully detected by the algorithm, and the percentage of false detections could be reduced to 1.70% by altering the algorithm parameters. Conclusions: Use of the proposed PISA detection method can result in a significant decrease in undesirable pump suspensions overnight, and may lead to lower overnight mean glucose levels while still achieving a low risk of hypoglycemia.

Publisher

SAGE Publications

Subject

Biomedical Engineering,Bioengineering,Endocrinology, Diabetes and Metabolism,Internal Medicine

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