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A wavelet and teager energy operator based method for automatic detection of K-Complex in sleep EEG

机译:基于小波和Teager能量算子的睡眠脑电图K复杂度自动检测方法

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In this study, an efficient algorithm is proposed for the automatic detection of K-complex from EEC recordings. First, the morphology of the K-complex had been examined and the detection features were determined according to visual recognition criterions of human scorer. These features were based on amplitude and duration properties of K-complex waveform. The algorithm is based on wavelet and teager energy operator and includes two main stages. Both results of stages were combined to make robust decision.The EEG recordings obtained from the Sleep Research Laboratory in Department of Psychiatry at Gulh-ane Military Medical Academy. All night sleep EEG data, total 1045 epochs and 690 of these are NREM 2 stage, from 25 years old healthy female subject were used. Three scorers inspected recording separately to score K-complexes. The detection algorithm was then tested on the same recording. The results show that the agreements between the scorers were fairly different. The results are evaluated with the ROC analysis which proves up to 91% success in detecting the K-complex.
机译:在这项研究中,提出了一种有效的算法,用于从EEC记录中自动检测K络合物。首先,检查了K-复合物的形态,并根据人类记分员的视觉识别标准确定了检测特征。这些特征基于K复数波形的幅度和持续时间特性。该算法基于小波和Teager能量算子,包括两个主要阶段。将两个阶段的结果结合起来可以做出可靠的决定。脑电图记录是从古尔恩军事医学院精神病学系的睡眠研究实验室获得的。使用了来自25岁健康女性受试者的整个晚上睡眠EEG数据,总共1045个时期,其中690个为NREM 2期。三名得分手分别检查记录以对K复数进行得分。然后在同一记录上测试检测算法。结果表明,记分员之间的协议存在很大差异。通过ROC分析对结果进行评估,结果证明在检测K复合物方面成功达到91%。

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