| Literature DB >> 29390915 |
Daniel P Howsmon1, Nihat Baysal1, Bruce A Buckingham2, Gregory P Forlenza3, Trang T Ly2, David M Maahs2, Tatiana Marcal2, Lindsey Towers3, Eric Mauritzen4, Sunil Deshpande5,6, Lauren M Huyett6,7, Jordan E Pinsker6, Ravi Gondhalekar5,6, Francis J Doyle5,6, Eyal Dassau5,6, Juergen Hahn1,8, B Wayne Bequette1.
Abstract
BACKGROUND: As evidence emerges that artificial pancreas systems improve clinical outcomes for patients with type 1 diabetes, the burden of this disease will hopefully begin to be alleviated for many patients and caregivers. However, reliance on automated insulin delivery potentially means patients will be slower to act when devices stop functioning appropriately. One such scenario involves an insulin infusion site failure, where the insulin that is recorded as delivered fails to affect the patient's glucose as expected. Alerting patients to these events in real time would potentially reduce hyperglycemia and ketosis associated with infusion site failures.Entities:
Keywords: artificial pancreas; fault detection; infusion site failure; model predictive control; safety; type 1 diabetes
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Year: 2018 PMID: 29390915 PMCID: PMC6154252 DOI: 10.1177/1932296818755173
Source DB: PubMed Journal: J Diabetes Sci Technol ISSN: 1932-2968