Exploring the Link Between Brain Waves and Sleep Patterns with Deep Learning Manifold Alignment.

Yosef Bernardus Wirian, Yang Jiang, Sylvia Cerel-Suhl, Jeremiah Suhl, Qiang Cheng
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Abstract

Medical data are often multi-modal, which are collected from different sources with different formats, such as text, images, and audio. They have some intrinsic connections in meaning and semantics while manifesting disparate appearances. Polysomnography (PSG) datasets are multi-modal data that include hypnogram, electrocardiogram (ECG), and electroencephalogram (EEG). It is hard to measure the associations between different modalities. Previous studies have used PSG datasets to study the relationship between sleep disorders and quality and sleep architecture. We leveraged a new method of deep learning manifold alignment to explore the relationship between sleep architecture and EEG features. Our analysis results agreed with the results of previous studies that used PSG datasets to diagnose different sleep disorders and monitor sleep quality in different populations. The method could effectively find the associations between sleep architecture and EEG datasets, which are important for understanding the changes in sleep stages and brain activity. On the other hand, the Spearman correlation method, which is a common statistical technique, could not find the correlations between these datasets.

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利用深度学习 Manifold Alignment 探索脑电波与睡眠模式之间的联系。
医学数据通常是多模态的,它们从不同的来源以不同的格式收集而来,如文本、图像和音频。它们在意义和语义上有一些内在联系,同时又表现出不同的外观。多导睡眠图(PSG)数据集是多模态数据,包括催眠图、心电图(ECG)和脑电图(EEG)。很难测量不同模式之间的关联。以往的研究使用 PSG 数据集来研究睡眠障碍、睡眠质量和睡眠结构之间的关系。我们利用一种新的深度学习流形配准方法来探索睡眠结构与脑电图特征之间的关系。我们的分析结果与之前使用 PSG 数据集诊断不同睡眠障碍和监测不同人群睡眠质量的研究结果一致。该方法能有效发现睡眠结构与脑电图数据集之间的关联,这对了解睡眠阶段和大脑活动的变化非常重要。另一方面,斯皮尔曼相关法作为一种常见的统计技术,却无法找到这些数据集之间的相关性。
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PENN: Phase Estimation Neural Network on Gene Expression Data. The 4th Joint International Conference on Deep Learning, Big Data and Blockchain (DBB 2023) Exploring the Link Between Brain Waves and Sleep Patterns with Deep Learning Manifold Alignment. Intel OpenVino: A Must-Know Deep Learning Toolkit The Deep Learning Framework
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