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The Generalized Sleep Spindles Detector: A Generative Model Approach on Single-Channel EEGs

机译:通用睡眠主轴检测器:单通道脑电图的生成模型方法

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We propose a data-driven, unsupervised learning framework for one of the hallmarks of stage 2 sleep in the electroencephalogram (EEG)—sleep spindles. Neurophysiological principles and clustering of time series subsequences constitute the underpinnings of methods fully based on a generative latent variable model for single-channel EEG. Learning on the model results in representations that characterize families of sleep spindles. The discriminative embedding transform separates potential micro-events from ongoing background activity. Then, a hierarchical clustering framework exploits Minimum Description Length (MDL) encoding principles to effectively partition the time series into patterns belonging to clusters of different dimensions. The proposed algorithm has only one main hyperparameter due to online model selection and the flexibility provided by cross-correlation operators. Methods are validated on the DREAMS Sleep Spindles database with results that echo previous approaches and clinical findings. Moreover, the learned representations provide a rich parameter space for further applications such as sparse encoding, inference, detection, diagnosis, and modeling.
机译:我们为脑电图(EEG)的第2阶段睡眠特征之一-睡眠纺锤体提出了一种数据驱动,无监督的学习框架。神经生理学原理和时间序列子序列的聚类构成了完全基于单通道脑电图的潜在潜变量模型的方法的基础。在模型上学习会得到表征睡眠纺锤体家族的表征。判别性嵌入转换将潜在的微事件与正在进行的背景活动分开。然后,分层聚类框架利用最小描述长度(MDL)编码原理将时间序列有效地划分为属于不同维度的聚类的模式。由于在线模型选择和互相关算子提供的灵活性,所提出的算法只有一个主要的超参数。方法在DREAMS Sleep Spindles数据库上进行了验证,其结果与以前的方法和临床发现相呼应。此外,学习到的表示为进一步的应用程序提供了丰富的参数空间,例如稀疏编码,推断,检测,诊断和建模。

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