首页> 外文会议>The 2010 International Joint Conference on Neural Networks >Hypoglycaemia detection for type 1 diabetic patients based on ECG parameters using Fuzzy Support Vector Machine
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Hypoglycaemia detection for type 1 diabetic patients based on ECG parameters using Fuzzy Support Vector Machine

机译:基于心电图参数的1型糖尿病患者低血糖检测

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Nocturnal hypoglycaemia in type 1 diabetic patients can be dangerous in which symptoms may not be apparent while blood glucose level decreases to very low level, and for this reason, an effective detection system for hypoglycaemia is crucial. This research work proposes a detection system for the hypoglycaemia based on the classification of electrocardiographic (ECG) parameters. The classification uses a Fuzzy Support Vector Machine (FSVM) with inputs of heart rate, corrected QT (QTc) interval and corrected TpTe (TpTec) interval. Three types of kernel functions (radial basis function (RBF), exponential radial basis function (ERBF) and polynomial function) are investigated in the classification. Moreover, parameters of the kernel functions are tuned to find the optimum of the classification. The results show that the FSVM classification using RBF kernel function demonstrates better performance than using SVM. However, both classifiers result approximately same performance if ERBF and polynomial kernel functions are used.
机译:1型糖尿病患者的夜间低血糖可能很危险,其中血糖水平降至非常低的水平时症状可能不明显,因此,有效的低血糖检测系统至关重要。这项研究工作提出了一种基于心电图(ECG)参数分类的低血糖检测系统。该分类使用模糊支持向量机(FSVM),其输入心率,校正后的QT(QT c )间隔和校正后的TpTe(TpTe c )间隔。在分类中研究了三种类型的核函数(径向基函数(RBF),指数径向基函数(ERBF)和多项式函数)。此外,调整内核函数的参数以找到最佳分类。结果表明,使用RBF内核函数进行的FSVM分类显示出比使用SVM更好的性能。但是,如果使用ERBF和多项式内核函数,则两个分类器的性能大致相同。

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