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A new approach for diagnostic estimation of Obstructive Sleep Apnea Syndrome based on One Dimensional Local Binary Pattern

机译:基于一维局部二元图案的阻塞性睡眠呼吸暂停综合征的诊断估算新方法

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In this study, a new approach for estimation of Obstructive Sleep Apnea Syndrome (OSAS) was proposed. OSAS is a sleep disorder that affects the life comfortability in human life. Up to now, the OSAS was diagnosed by Polysomnography (PSG) device by connected to the patients via electrodes. This device is expensive and restricted in the clinics. Since OSAS is serious, it should be diagnosed and treated early. For this purpose, the recorded Electroencephalography (EEG), Electromyography (EMG) and snore data were analyzed and features of them extracted by a proposed method called One Dimensional Local Binary Pattern (1D-LBP). The 1D-LBP extracted features from raw data effectively. The features, then, were fed to classifier's input in order to diagnose OSAS. As a result most of tested classifiers have yielded accuracies over 99%. The best results were obtained by using EEG, EMG and snore signal altogether. It was also shown that while the complexity of signal increase the best accuracy was obtained at the output of the classifier. The results have shown that the 1D-LBP method is an acceptable and has advantageous over conventional methods due to its capable of extract significant features from more complex signal. The results can be used in sleep laboratory for help to experts before put patient to the PSG.
机译:在这项研究中,提出了一种估计阻塞性睡眠呼吸暂停综合征(OSAS)的新方法。 OSA是一种影响人类生活中的生命舒适性的睡眠障碍。到目前为止,通过电极通过电极连接到患者,通过多组织摄影(PSG)装置诊断OSA。该装置在诊所昂贵且受限制。由于OSA是严重的,它应该早期诊断和治疗。为此目的,分析了所记录的脑电图(EEG),肌电图(EMG)和Snore数据,并通过所提出的方法提取它们的特征,称为一维本地二进制图案(1D-LBP)。 1D-LBP有效地从原始数据提取了特征。然后,该功能被馈送到分类器的输入,以便诊断OSA。结果,大多数经过测试的分类器均产生超过99%的精度。通过使用EEG,EMG和Snore信号完全获得了最佳结果。还表明,在分类器的输出中获得了信号增加的复杂性最佳精度。结果表明,1D-LBP方法是可接受的,并且由于其能够从更复杂的信号中提取显着特征而具有传统方法的优点。结果可以在睡眠实验室中使用,以帮助专家们在将患者放到PSG之前。

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