| Literature DB >> 22865931 |
Meriyan Eren-Oruklu1, Ali Cinar, Derrick K Rollins, Lauretta Quinn.
Abstract
Many patients with diabetes experience high variability in glucose concentrations that includes prolonged hyperglycemia or hypoglycemia. Models predicting a subject's future glucose concentrations can be used for preventing such conditions by providing early alarms. This paper presents a time-series model that captures dynamical changes in the glucose metabolism. Adaptive system identification is proposed to estimate model parameters which enable the adaptation of the model to inter-/intra-subject variation and glycemic disturbances. It consists of online parameter identification using the weighted recursive least squares method and a change detection strategy that monitors variation in model parameters. Univariate models developed from a subject's continuous glucose measurements are compared to multivariate models that are enhanced with continuous metabolic, physical activity and lifestyle information from a multi-sensor body monitor. A real life application for the proposed algorithm is demonstrated on early (30 min in advance) hypoglycemia detection.Entities:
Year: 2012 PMID: 22865931 PMCID: PMC3409594 DOI: 10.1016/j.automatica.2012.05.076
Source DB: PubMed Journal: Automatica (Oxf) ISSN: 0005-1098 Impact factor: 5.944