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Block based neural network for hypoglycemia detection

机译:基于块的神经网络用于低血糖检测

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In this paper, evolvable block based neural network (BBNN) is presented for detection of hypoglycemia episodes. The structure of BBNN consists of a two-dimensional (2D) array of fundamental blocks with four variable input-output nodes and weight connections. Depending on the structure settings, each block can have one of four different internal configurations. To provide early detection of hypoglycemia episodes, the physiological parameters such as heart rate (HR) and corrected QT interval (QTc) of electrocardiogram (ECG) signal are used as the inputs of BBNN. The overall structure and weights of BBNN are optimized by an evolutionary algorithm called hybrid particle swarm optimization with wavelet mutation (HPSOWM). The optimized structures and weights of BBNN are capable to compensate large variations of ECG patterns caused by individual and temporal difference since a fixed structure classifiers are easy to fail to trace ECG signals with large variations. The ECG data of 15 patients are organized into a training set, a testing set and a validation set, each of which has randomly selected 5 patients. The simulation results shows that the proposed algorithm, BBNN with HPSOWM can successfully detect the hypoglycemic episodes in T1DM in term of testing sensitivity (76.74%) and test specificity (50.91%).
机译:本文提出了一种可进化的基于块的神经网络(BBNN)以检测低血糖发作。 BBNN的结构包括二维(2D)基本块阵列,具有四个可变输入输出节点和权重连接。根据结构设置,每个块可以具有四种不同的内部配置中的一种。为了提供低血糖症的早期检测,心速(HR)和校正的心电图(ECG)信号的生理参数(ECG)信号被用作BBNN的输入。 BBNN的整体结构和重量通过称为混合粒子群优化的进化算法与小波突变(HPSOWM)进行了优化。 BBNN的优化结构和重量能够补偿由个体和时间差异引起的ECG模式的大变化,因为固定结构分类器容易追溯具有大变化的ECG信号。将15名患者的ECG数据组织成培训集,测试集和验证集,每个患者都有5名患者。仿真结果表明,该算法,具有Hpsowm的BBNN可以在测试敏感度(76.74%)和测试特异性(50.91%)中成功检测T1DM中的低血糖发作。

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