多导睡眠图脑电图数据中运动和爆铅伪影的检测。

Signals Pub Date : 2024-12-01 Epub Date: 2024-10-22 DOI:10.3390/signals5040038
Nishanth Anandanadarajah, Amlan Talukder, Deryck Yeung, Yuanyuan Li, David M Umbach, Zheng Fan, Leping Li
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引用次数: 0

摘要

多导睡眠描记术(PSG)通过使用六根导联的脑电图(EEG)来测量睡眠期间的大脑活动。由运动或松动引线引起的伪影会扭曲脑电图测量结果。我们开发了一种方法来自动识别这些伪影在PSG脑电图跟踪。预处理后,我们使用4 s窗和3 s重叠进行多锥度频谱分析,提取0.5-32.5 Hz频率下的功率电平。对于每个产生的1 s段,我们计算了所有对引线的功率水平之间的段特定相关性。然后,我们对每条线索的所有两两相关系数取平均值,为每条线索创建一个特定于细分市场的平均相关性时间序列。我们的算法使用局部移动窗口分别扫描每个平均时间序列中的“坏”段。在第二次传递中,在所有剩余的良好段中,任何平均相关性小于全局阈值的段都被宣布为离群值。我们将两个间隔小于300秒的离群片段之间的所有片段标记为人工区域。这个过程是重复的,在每次迭代中删除一个有过多异常值的通道。我们将算法发现的伪迹区域与专家评估的地面真相进行了比较,分别达到80%和91%的灵敏度和特异性。我们的算法是一个开源工具,可以是Python包,也可以是Docker。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Movement and Lead-Popping Artifacts in Polysomnography EEG Data.

Polysomnography (PSG) measures brain activity during sleep via electroencephalography (EEG) using six leads. Artifacts caused by movement or loose leads distort EEG measurements. We developed a method to automatically identify such artifacts in a PSG EEG trace. After preprocessing, we extracted power levels at frequencies of 0.5-32.5 Hz with multitaper spectral analysis using 4 s windows with 3 s overlap. For each resulting 1 s segment, we computed segment-specific correlations between power levels for all pairs of leads. We then averaged all pairwise correlation coefficients involving each lead, creating a time series of segment-specific average correlations for each lead. Our algorithm scans each averaged time series separately for "bad" segments using a local moving window. In a second pass, any segment whose averaged correlation is less than a global threshold among all remaining good segments is declared an outlier. We mark all segments between two outlier segments fewer than 300 s apart as artifact regions. This process is repeated, removing a channel with excessive outliers in each iteration. We compared artifact regions discovered by our algorithm to expert-assessed ground truth, achieving sensitivity and specificity of 80% and 91%, respectively. Our algorithm is an open-source tool, either as a Python package or a Docker.

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来源期刊
CiteScore
3.20
自引率
0.00%
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审稿时长
11 weeks
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