Hypoglycemia Alarm Enhancement Using Data Fusion

التفاصيل البيبلوغرافية
العنوان: Hypoglycemia Alarm Enhancement Using Data Fusion
المؤلفون: Timothy W. Jones, Victor Skladnev, Thomas Mcgregor, Steve Gourlay, Nejhdeh Ghevondian, Stanislav Tarnavskii
المصدر: University of Western Australia
بيانات النشر: Diabetes Technology Society, 2010.
سنة النشر: 2010
مصطلحات موضوعية: Blood Glucose, Male, medicine.medical_specialty, endocrine system diseases, Adolescent, Endocrinology, Diabetes and Metabolism, Biomedical Engineering, Monitoring, Ambulatory, Bioengineering, Biosensing Techniques, Efficiency, Hypoglycemia, Autonomic Nervous System, ALARM, Young Adult, Internal Medicine, medicine, Humans, Computer Simulation, Intensive care medicine, Child, Type 1 diabetes, Blood Specimen Collection, Electronic Data Processing, Symposium, Models, Statistical, Continuous glucose monitoring, business.industry, Blood Glucose Self-Monitoring, nutritional and metabolic diseases, medicine.disease, Sensor fusion, Autonomic nervous system, Diabetes Mellitus, Type 1, Clinical Alarms, Emergency medicine, Equipment Failure, Female, business, human activities
الوصف: The acceptance of closed-loop blood glucose (BG) control using continuous glucose monitoring systems (CGMS) is likely to improve with enhanced performance of their integral hypoglycemia alarms. This article presents an in silico analysis (based on clinical data) of a modeled CGMS alarm system with trained thresholds on type 1 diabetes mellitus (T1DM) patients that is augmented by sensor fusion from a prototype hypoglycemia alarm system (HypoMon). This prototype alarm system is based on largely independent autonomic nervous system (ANS) response features.Alarm performance was modeled using overnight BG profiles recorded previously on 98 T1DM volunteers. These data included the corresponding ANS response features detected by HypoMon (AiMedics Pty. Ltd.) systems. CGMS data and alarms were simulated by applying a probabilistic model to these overnight BG profiles. The probabilistic model developed used a mean response delay of 7.1 minutes, measurement error offsets on each sample of +/- standard deviation (SD) = 4.5 mg/dl (0.25 mmol/liter), and vertical shifts (calibration offsets) of +/- SD = 19.8 mg/dl (1.1 mmol/liter). Modeling produced 90 to 100 simulated measurements per patient. Alarm systems for all analyses were optimized on a training set of 46 patients and evaluated on the test set of 56 patients. The split between the sets was based on enrollment dates. Optimization was based on detection accuracy but not time to detection for these analyses. The contribution of this form of data fusion to hypoglycemia alarm performance was evaluated by comparing the performance of the trained CGMS and fused data algorithms on the test set under the same evaluation conditions.The simulated addition of HypoMon data produced an improvement in CGMS hypoglycemia alarm performance of 10% at equal specificity. Sensitivity improved from 87% (CGMS as stand-alone measurement) to 97% for the enhanced alarm system. Specificity was maintained constant at 85%. Positive predictive values on the test set improved from 61 to 66% with negative predictive values improving from 96 to 99%. These enhancements were stable within sensitivity analyses. Sensitivity analyses also suggested larger performance increases at lower CGMS alarm performance levels.Autonomic nervous system response features provide complementary information suitable for fusion with CGMS data to enhance nocturnal hypoglycemia alarms.
اللغة: English
الوصول الحر: https://explore.openaire.eu/search/publication?articleId=doi_dedup___::a01c9eb919cee7f721ce833ee6c99cd1Test
https://europepmc.org/articles/PMC2825622Test/
حقوق: OPEN
رقم الانضمام: edsair.doi.dedup.....a01c9eb919cee7f721ce833ee6c99cd1
قاعدة البيانات: OpenAIRE