一种预测胰岛素诱导受试者低血糖的新型模糊神经网络估计器

N. Ghevondian, H.T. Nguyen, S. Colagiuri
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引用次数: 18

摘要

预测低血糖的发生可以避免I型胰岛素依赖型糖尿病(IDDM)患者的主要健康并发症。本文描述了一种新的模糊神经网络估计算法(FNNE)的设计,该算法通过模拟心率和皮肤阻抗参数的变化来预测胰岛素诱导受试者的血糖分布和低血糖发作。对12名志愿者(A组:6名非糖尿病患者,B组:6名1型IDDM患者)进行胰岛素输注诱导短暂低血糖。他们的皮肤阻抗、心率和实际血糖水平(BGL)被定期监测。FNNE算法使用A组的所有受试者进行训练,并对B组的剩余受试者进行验证/测试。训练数据集(A组)的BGL剖面估计平均误差为0.107 (p < 0.05),验证/测试数据集(B组)的BGL剖面估计平均误差为0.139 (p < 0.05)。此外,FNNE算法能够预测A组和B组低血糖发作的发生,平均误差分别为0.071 (p < 0.03)和0。176例(p < 0.05)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel fuzzy neural network estimator for predicting hypoglycaemia in insulin-induced subjects
Predicting the onset of hypoglycaemia can avoid major health complications in Type I insulin-dependent-diabetes-mellitus (IDDM) patients. This paper describes the design of a novel fuzzy neural network estimator algorithm (FNNE) for predicting the glycaemia profile and onset of hypoglycaemia in insulin-induced subjects, by modelling the changes in heart rate and skin impedance parameters. Hypoglycaemia was induced briefly in 12 volunteers (group A: 6 non-diabetic subjects and group B: 6 Type 1 IDDM patients) using insulin infusion. Their skin impedances, heart rates and actual blood glucose levels (BGL) were monitored at regular intervals. The FNNE algorithm was trained using all subjects from group A and validated/tested on the remaining subjects from group B. The mean error of estimation of BGL profile for the training data set (group A) was 0.107 (p < 0.05) and for the validation/test data set (group B) was 0.139 (p < 0.05). Furthermore, the FNNE algorithm was able to predict the onset of hypoglycaemia episodes in group A and group B with a mean error of 0.071 (p < 0.03) and 0. 176 (p < 0.05) respectively.
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