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Automated detection of sleep EEG slow waves based on matching pursuit using a restricted dictionary

机译:使用受限字典基于匹配追踪来自动检测睡眠脑电图慢波

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In this paper, an original method to detect sleep slow waves (SSW) in electroencephalogram (EEG) recordings is proposed. This method takes advantage of a Matching Pursuit algorithm using a dictionary reduced to Gabor functions reproducing the main targeted waveform characteristics. By describing the EEG signals in terms of SSW properties, the corresponding algorithm is able to identify waveforms based on the largest matching coefficients. The implemented algorithm was tested on a database of whole night sleep EEG recordings collected in 9 young healthy subjects where SSW have been visually scored by an expert. Besides being fully automated and much faster than visual scoring analysis, the results obtained to the proposed method were in excellent agreement with the expert with 98% of correct detections and a 77% concordance in event time position and duration. These results were superior from those of the classical method both in terms of sensibility and precision.
机译:本文提出了一种检测脑电图(EEG)记录中的睡眠慢波(SSW)的原始方法。该方法利用了使用简化为Gabor函数的字典的Matching Pursuit算法,该字典可再现主要目标波形特征。通过根据SSW属性描述EEG信号,相应的算法能够基于最大匹配系数来识别波形。在9个年轻健康受试者中收集了整夜睡眠EEG记录的数据库中测试了所执行的算法,其中专家对SSW进行了视觉评分。除了完全自动化且比视觉评分分析快得多之外,该方法所获得的结果与专家非常一致,正确检测率达98%,事件时间位置和持续时间的一致性达77%。这些结果在灵敏度和精确度方面均优于传统方法。

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