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Hybrid particle swarm optimization based normalized radial basis function neural network for hypoglycemia detection

机译:基于混合粒子群优化的归一化径向基函数神经网络用于低血糖检测

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In this study, a normalized radial basis function neural network (NRBFNN) is presented for detection of hypoglycemia episodes by using physiological parameters of electrocardiogram (ECG) signal. Hypoglycemia is a common and serious side effect of insulin therapy in patients with Type 1 diabetes. Based on heart rate (HR) and corrected QT interval (QTc) of electrocardiogram (ECG) signal, a hybrid particle swarm optimization based normalized RBFNN is developed for recognization of hypoglycemia episodes. A global learning algorithm called hybrid particle swarm optimization with wavelet mutation (HPSOWM) is used to optimize the parameters of NRBFNN. From a clinical study of 15 children with Type 1 diabetes, natural occurrence of nocturnal hypoglycemic episodes associated with increased heart rates and corrected QT interval are studied. The overall data are organized into a training set (5 patients), validation set (5 patients) and testing set (5 patients) randomly selected. Using the optimized NRBFNN, the testing performance for detection of hypoglycemic episodes are satisfactory with 76.74% of sensitivity and 51.82% of specificity.
机译:在这项研究中,提出了归一化径向基函数神经网络(NRBFNN)用于通过使用心电图(ECG)信号的生理参数检测低血糖发作。低血糖症是1型糖尿病患者胰岛素治疗的常见且严重的副作用。基于心率(HR)和心电图(ECG)信号的校正QT间隔(QTc),开发了基于归一化RBFNN的混合粒子群优化技术,用于识别低血糖发作。全局学习算法称为带有小波变异的混合粒子群优化算法(HPSOWM),用于优化NRBFNN的参数。从一项针对15名1型糖尿病儿童的临床研究中,研究了夜间降血糖发作的自然发生与心率增加和QT间隔校正有关。总体数据分为随机选择的训练集(5名患者),验证集(5名患者)和测试集(5名患者)。使用优化的NRBFNN,检测低血糖发作的测试性能令人满意,灵敏度为76.74%,特异性为51.82%。

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