Real-Time hypoglycemia prediction suite using continuous glucose monitoring: a safety net for the artificial pancreas

使用连续血糖监测的实时低血糖预测套件:人工胰腺的安全网

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作者:Eyal Dassau, Fraser Cameron, Hyunjin Lee, B Wayne Bequette, Howard Zisser, Lois Jovanovic, H Peter Chase, Darrell M Wilson, Bruce A Buckingham, Francis J Doyle 3rd

Conclusions

The HPA will enable automated insulin-pump suspension in response to a pending event that has been detected prior to severe immediate complications.

Methods

This real-time hypoglycemia prediction algorithm (HPA) combines five individual algorithms, all based on continuous glucose monitoring 1-min data. A predictive alarm is issued by a voting algorithm when a hypoglycemic event is predicted to occur in the next 35 min. The HPA system was developed using data derived from 21 Navigator studies that assessed Navigator function over 24 h in children with type 1 diabetes. We confirmed the function of the HPA using a separate dataset from 22 admissions of type 1 diabetic subjects. During these admissions, hypoglycemia was induced by gradual increases in the basal insulin infusion rate up to 180% from the subject's own baseline infusion rate.

Objective

The purpose of this study was to develop an advanced algorithm that detects pending hypoglycemia and then suspends basal insulin delivery. This approach can provide a solution to the problem of nocturnal hypoglycemia, a major concern of patients with diabetes. Research design and

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