Robust Fault Detection System for Insulin Pump Therapy Using Continuous Glucose Monitoring |
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Authors: | Pau Herrero Remei Calm Josep Vehí Joaquim Armengol Pantelis Georgiou Nick Oliver Christofer Tomazou |
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Affiliation: | 1.Center for Bio-Inspired Technology, Institute of Biomedical Engineering, Imperial College London, South Kensington Campus, London, United Kingdom;2.Institut d’Informàtica i Aplicacions, Universitat de Girona, Campus de Montilivi, Girona, Spain;3.Charing Cross Hospital, Imperial College Hospitals NHS Trust, London, United Kingdom |
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Abstract: | BackgroundThe popularity of continuous subcutaneous insulin infusion (CSII), or insulin pump therapy, as a way to deliver insulin more physiologically and achieve better glycemic control in diabetes patients has increased. Despite the substantiated therapeutic advantages of using CSII, its use has also been associated with an increased risk of technical malfunctioning of the device, which leads to an increased risk of acute metabolic complications, such as diabetic ketoacidosis. Current insulin pumps already incorporate systems to detect some types of faults, such as obstructions in the infusion set, but are not able to detect other types of fault such as the disconnection or leakage of the infusion set.MethodsIn this article, we propose utilizing a validated robust model-based fault detection technique, based on interval analysis, for detecting disconnections of the insulin infusion set. For this purpose, a previously validated metabolic model of glucose regulation in type 1 diabetes mellitus (T1DM) and a continuous glucose monitoring device were used. As a first step to assess the performance of the presented fault detection system, a Food and Drug Administration-accepted T1DM simulator was employed.ResultsOf the 100 in silico tests (10 scenarios on 10 subjects), only two false negatives and one false positive occurred. All faults were detected before plasma glucose concentration reached 300 mg/dl, with a mean plasma glucose detection value of 163 mg/dl and a mean detection time of 200 min.ConclusionsInterval model-based fault detection has been proven (in silico) to be an effective tool for detecting disconnection faults in sensor-augmented CSII systems. Proper quantification of the uncertainty associated with the employed model has been observed to be crucial for the good performance of the proposed approach. |
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Keywords: | diabetes fault detection insulin pump therapy interval analysis model-based robustness |
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