Neuro-fuzzy based glucose prediction model for patients with Type 1 diabetes mellitus

Author(s):  
K. Zarkogianni ◽  
K. Mitsis ◽  
M.-T. Arredondo ◽  
G. Fico ◽  
A. Fioravanti ◽  
...  
2019 ◽  
Vol 4 (1) ◽  
pp. 1-15
Author(s):  
N. O. Orieke ◽  
O.S. Asaolu ◽  
T. A. Fashanu ◽  
O. A. Fasanmade

AbstractDiabetes Mellitus is a metabolic disorder that affects the ability of the human body to properly utilize and regulate glucose. It is pervasive world-wide yet tenuous and costly to manage. Diabetes Mellitus is also difficult to model because it is nonlinear, dynamic and laden with mostly patient specific uncertainties. A neuro-fuzzy model for the prediction of blood glucose level in Type 1 diabetic patients using coupled insulin and meal effects is developed. This study establishes that the necessary and sufficient conditions to predict blood glucose level in a Type 1 diabetes mellitus patient are: knowledge of the patient’s insulin effects and meal effects under diverse metabolic scenarios and the transparent coupling of the insulin and meal effects. The neuro-fuzzy models were trained with data collected from a single Type 1 diabetic patient covering a period of two months. Clarke’s Error Grid Analysis (CEGA) of the model shows that 87.5% of the predictions fall into region A, while the remaining 12.5% of the predictions fall into region B within a four (4) hour prediction window. The model reveals significant variation in insulin and glucose responses as the Body Mass Index (BMI) of the patient changes.


2013 ◽  
Author(s):  
Blake M. Lancaster ◽  
Ashley M. Lugo ◽  
Lynne Clure ◽  
Kate S. Holman ◽  
Ryan T. Thorson

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