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Hierarchical Parallel PSO-SVM Based Subject-Independent Sleep Apnea Classification

机译:基于分层并行PSO-SVM的与受试者无关的睡眠呼吸暂停分类

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This paper presents a method for subject independent classification of sleep apnea by a parallel PSO-SVM algorithm. In the proposed structure, swarms are separated into masters and slaves and accessing to the global information is restricted according to their types. Biosignal records that used as the input of the system are air flow, thoracic and abdominal respiratory movement signals. The classification method consists of the three main parts; feature generation, feature selection and data reduction based on parallel PSO-SVM, and the final classification. Statistical analyses on the achieved results show efficiency of the proposed system.
机译:本文提出了一种基于并行PSO-SVM算法的独立于睡眠呼吸暂停的受试者分类方法。在提出的结构中,群体被分为主节点和从节点,并且根据其类型限制对全局信息的访问。用作系统输入的生物信号记录是气流,胸腔和腹部呼吸运动信号。分类方法包括三个主要部分:基于并行PSO-SVM的特征生成,特征选择和数据缩减以及最终分类。对获得的结果进行统计分析表明了该系统的有效性。

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