确定自动睡眠分级系统设计中最强大的功能

Seral Özşen, Yasin Koca, G. Tezel, Sena Çeper, Serkan Küççüktürk, H. Vatansev
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引用次数: 0

摘要

对睡眠专家来说,花太多时间在手动睡眠分期上既累人又具有挑战性。此外,睡眠阶段的经验也会给睡眠专家带来不同的决定。在过去的几年里,寻找一种有效的自动睡眠分期系统的研究已经加速了。有很多研究都是针对这个问题的,但很少有研究是基于真实的睡眠数据。已对大多经过处理和清理的数据集进行了研究。此外,很少有研究在睡眠阶段的数据分布是平衡的(使用每个阶段相同数量的epoch),可以看出这些研究的表现与其他研究相比是相当低的。在文献研究中,有很多研究提取了许多特征,使用了许多特征选择方法,应用了许多分类器,并有各种组合。因此,为了确定表现最好的特征和最强大的特征,我们从124例患者的真实EEG、EOG和EMG信号中提取了168个特征。使用7种不同的特征选择方法选择这些特征,并使用4个分类器进行分类。总的来说,ReliefF特征选择方法表现最好,使用非线性特征的Bagged Tree分类器达到了67.92%的最高分类准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DETERMINING THE MOST POWERFUL FEATURES IN THE DESIGN OF AN AUTOMATIC SLEEP STAGING SYSTEM
Spending too much time on manual sleep staging is tiring and challenging for sleep specialists. In addition, experience in sleep staging also creates different decisions for sleep experts. The search for finding an effective automatic sleep staging system has been accelerated in the last few years. There are many studies dealing with this problem but very few of them were conducted with real sleep data. Studies have been carried out on mostly processed and cleaned-ready data sets. In addition, there are few studies in which the data distribution in sleep stages is balanced (equal numbers of epochs from each stage are used), and it is seen that the performance of these studies is quite low compared to other studies. When the literature studies are examined, there is a wide range of studies in which many features are extracted, many feature selection methods are used, many classifiers are applied and various combinations of these are available. For this reason, to determine the best-performing features and the most powerful features, 168 features were extracted from the real EEG, EOG, and EMG signals of 124 patients. These features were selected with 7 different feature selection methods, and classification was carried out with 4 classifiers. In general, the ReliefF feature selection method has performed best, and the Bagged Tree classifier has reached the highest classification accuracy of 67.92% with the use of nonlinear features.
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