VAEEG:用于提取脑电图表征的变异自动编码器。

IF 4.7 2区 医学 Q1 NEUROIMAGING
Tong Zhao, Yi Cui, Taoyun Ji, Jiejian Luo, Wenling Li, Jun Jiang, Zaifen Gao, Wenguang Hu, Yuxiang Yan, Yuwu Jiang, Bo Hong
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引用次数: 0

摘要

脑电图(EEG)具有复杂性和强随机性的特点。现有的脑电图深度学习模型通常针对特定的目标和数据集,其可扩展性受到数据集规模的限制,导致感知和泛化能力有限。为了获得更直观、更简洁、更有用的大脑活动表征,我们构建了基于变异自动编码器(VAE)和独立频带的脑电图重构自监督学习模型,称为脑电图变异自动编码器(VAEEG)。VAEEG 实现了出色的重构性能。此外,我们还在有关小儿大脑发育、癫痫发作和睡眠阶段分类的三个临床任务中验证了潜表征的有效性。我们发现某些潜在特征1)与青少年大脑发育变化相关;2)在癫痫发作和背景活动的分布中表现出显著的区别;3)在不同的睡眠周期中表现出显著的变化。在相应的下游拟合或分类任务中,基于 VAEEG 提取的表征构建的模型表现出了卓越的性能。我们的模型可以从复杂的脑电信号中提取有效的特征,作为下游分类任务的早期特征提取器。这减少了下游任务所需的数据量,简化了下游模型的复杂性,并简化了训练过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
VAEEG: Variational Auto-encoder for Extracting EEG Representation.

The electroencephalogram (EEG) exhibits characteristics of complexity and strong randomness. Existing deep learning models for EEG typically target specific objectives and datasets, with their scalability constrained by the size of the dataset, resulting in limited perceptual and generalization abilities. In order to obtain more intuitive, concise, and useful representations of brain activity, we constructed a reconstruction-based self-supervised learning model for EEG based on Variational Autoencoder (VAE) with separate frequency bands, termed variational auto-encoder for EEG (VAEEG). VAEEG achieved outstanding reconstruction performance. Furthermore, we validated the efficacy of the latent representations in three clinical tasks concerning pediatric brain development, epileptic seizure, and sleep stage classification. We discovered that certain latent features: 1) correlate with adolescent brain developmental changes; 2) exhibit significant distinctions in the distribution between epileptic seizures and background activity; 3) show significant variations across different sleep cycles. In corresponding downstream fitting or classification tasks, models constructed based on the representations extracted by VAEEG demonstrated superior performance. Our model can extract effective features from complex EEG signals, serving as an early feature extractor for downstream classification tasks. This reduces the amount of data required for downstream tasks, simplifies the complexity of downstream models, and streamlines the training process.

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来源期刊
NeuroImage
NeuroImage 医学-核医学
CiteScore
11.30
自引率
10.50%
发文量
809
审稿时长
63 days
期刊介绍: NeuroImage, a Journal of Brain Function provides a vehicle for communicating important advances in acquiring, analyzing, and modelling neuroimaging data and in applying these techniques to the study of structure-function and brain-behavior relationships. Though the emphasis is on the macroscopic level of human brain organization, meso-and microscopic neuroimaging across all species will be considered if informative for understanding the aforementioned relationships.
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