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   a hybrid dynamic waveletbased modeling method for blood glucose concentration prediction in type 1 diabetes  
   
نویسنده faghihimani elham ,kharazihai isfahani mohsen ,marateb hamid reza ,zekri maryam
منبع journal of medical signals and sensors - 2020 - دوره : 10 - شماره : 3 - صفحه:174 -184
چکیده    Background: diabetes mellitus (dm) is a chronic disease that affects public health. the prediction of blood glucose concentration (bgc) is essential to improve the therapy of type 1 dm (t1dm). methods: having considered the risk of hyper and hypoglycemia, we provide a new hybrid modeling approach for bgc prediction based on a dynamic wavelet neural network (wnn) model, including a heuristic input selection. the proposed models include a hybrid dynamic wnn (hdwnn) and a hybrid dynamic fuzzy wnn (hdfwnn). these waveletbased networks are designed based on dominant wavelets selected by the genetic algorithmorthogonal least square method. furthermore, the hdfwnn model structure is improved using fuzzy rule induction, an important innovation in the fuzzy wavelet modeling. the proposed networks are tested on real data from 12 t1dm patients and also simulated data from 33 virtual patients with an uva/ padova simulator, an approved simulator by the us food and drug administration. results: a comparison study is performed in terms of new glucosebased assessment metrics, such as gfit, glucoseweighted form of esodn (gesodn), and glucoseweighted r^2 (gr^2). for real patients’ data, the values of the mentioned indices are accomplished as gfit = 0.97 ± 0.01, gesodn = 1.18 ± 0.38, and gr^2 = 0.88 ± 0.07. hdfwnn, hdwnn and jump nn method showed the prediction error (root mean square error [rmse]) of 11.23 ± 2.77 mg/dl, 10.79 ± 3.86 mg/dl and 16.45 ± 4.33 mg/dl, respectively. conclusion: furthermore, the generalized estimating equation and post hoc tests show that proposed models perform better compared with other proposed methods.
کلیدواژه blood glucose prediction ,diabetes mellitus ,fuzzy rule induction ,fuzzy wavelet neural network ,wavelet neural network
آدرس isfahan university of medical sciences, isfahan endocrine and metabolism research center, iran, isfahan university of technology, department of electrical and computer engineering, iran, university of isfahan, faculty of engineering, department of biomedical engineering, iran. polytechnic university of catalonia, barcelona tech, biomedical engineering research center, department of automatic control, spain, isfahan university of technology, department of electrical and computer engineering, iran
پست الکترونیکی mzekri@cc.iut.ac.ir
 
     
   
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