首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >Comparative assessment of glucose prediction models for patients with type 1 diabetes mellitus applying sensors for glucose and physical activity monitoring
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Comparative assessment of glucose prediction models for patients with type 1 diabetes mellitus applying sensors for glucose and physical activity monitoring

机译:使用传感器进行葡萄糖和身体活动监测的1型糖尿病患者葡萄糖预测模型的比较评估

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摘要

The present work presents the comparative assessment of four glucose prediction models for patients with type 1 diabetes mellitus (T1DM) using data from sensors monitoring blood glucose concentration. The four models are based on a feedforward neural network (FNN), a self-organizing map (SOM), a neuro-fuzzy network with wavelets as activation functions (WFNN), and a linear regression model (LRM), respectively. For the development and evaluation of the models, data from 10 patients with T1DM for a 6-day observation period have been used. The models' predictive performance is evaluated considering a 30-, 60- and 120-min prediction horizon, using both mathematical and clinical criteria. Furthermore, the addition of input data from sensors monitoring physical activity is considered and its effect on the models' predictive performance is investigated. The continuous glucose-error grid analysis indicates that the models' predictive performance benefits mainly in the hypoglycemic range when additional information related to physical activity is fed into the models. The obtained results demonstrate the superiority of SOM over FNN, WFNN, and LRM with SOM leading to better predictive performance in terms of both mathematical and clinical evaluation criteria.
机译:本工作利用来自监测血糖浓度的传感器的数据,对1型糖尿病(T1DM)患者的四种血糖预测模型进行了比较评估。这四个模型分别基于前馈神经网络(FNN),自组织图(SOM),具有小波作为激活函数的神经模糊网络(WFNN)和线性回归模型(LRM)。为了开发和评估模型,使用了10位T1DM患者在6天观察期内的数据。使用数学和临床标准,在30、60和120分钟的预测范围内评估模型的预测性能。此外,考虑了从传感器中监视身体活动的输入数据,并研究了其对模型预测性能的影响。连续的葡萄糖误差网格分析表明,当将与身体活动相关的其他信息输入模型时,模型的预测性能主要在降血糖范围内受益。获得的结果证明了SOM优于FNN,WFNN和LRM与SOM的优势,从而在数学和临床评估标准方面都具有更好的预测性能。

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