| Literature DB >> 29276347 |
Xia Yu1, Kamuran Turksoy2, Mudassir Rashid3, Jianyuan Feng3, Nicole Frantz2, Iman Hajizadeh3, Sediqeh Samadi3, Mert Sevil2, Caterina Lazaro4, Zacharie Maloney2, Elizabeth Littlejohn5, Laurie Quinn6, Ali Cinar2,3.
Abstract
Accurate predictions of glucose concentrations are necessary to develop an artificial pancreas (AP) system for people with type 1 diabetes (T1D). In this work, a novel glucose forecasting paradigm based on a model fusion strategy is developed to accurately characterize the variability and transient dynamics of glycemic measurements. To this end, four different adaptive filters and a fusion mechanism are proposed for use in the online prediction of future glucose trajectories. The filter fusion mechanism is developed based on various prediction performance indexes to guide the overall output of the forecasting paradigm. The efficiency of the proposed model fusion based forecasting method is evaluated using simulated and clinical datasets, and the results demonstrate the capability and prediction accuracy of the data-based fusion filters, especially in the case of limited data availability. The model fusion framework may be used in the development of an AP system for glucose regulation in patients with T1D.Entities:
Keywords: adaptive filtering algorithms; model fusion strategy; online glucose prediction; type 1 diabetes
Year: 2018 PMID: 29276347 PMCID: PMC5736323 DOI: 10.1016/j.conengprac.2017.10.013
Source DB: PubMed Journal: Control Eng Pract ISSN: 0967-0661 Impact factor: 3.475