Identifying and predicting EEG microstates with sequence-to-sequence deep learning models for online applications.

IF 3.8
Qinglin Zhao, Kunbo Cui, Lixin Zhang, Zhongqing Wu, Hua Jiang, Mingqi Zhao, Bin Hu
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引用次数: 0

Abstract

Objective.Electroencephalographic (EEG) microstates, as a non-invasive and high-temporal-resolution tool for analyzing time-space features of brain activity, have been validated and applied in various research domains. However, current methods for EEG microstate analysis rely on clustering algorithms, which require large-scale offline computations to obtain microstate labels and cluster centers. This offline approach is no longer sufficient for applications in cross-subject, cross-dataset, and multi-task scenarios.Approach.To address these limitations, we propose, for the first time, a novel sequence-to-sequence-based framework for microstate identification and prediction, enabling end-to-end online recognition and prediction from EEG signals to microstate labels. Specifically, we introduce a method for constructing training datasets for online identification and prediction, which includes microstate label calibration, EEG electrode mapping, and sequence data partitioning. We validate this approach using four different neural network models with varying computational mechanisms on two public datasets.Main results.Our results demonstrate that EEG microstates can be identified and predicted by trainable models. In cross-subject microstate recognition tasks, the recognition accuracy for four typical microstates reached up to 74.26%, outperforming k-nearest neighbor (KNN) by 21.91%. For seven typical microstates, the recognition accuracy peaked at 66.76%, surpassing KNN by 26.6%. In prediction tasks, the accuracy for four and seven typical microstates reached 70.49% and 62.71%, respectively.Significance.Our work advances EEG microstate analysis from an offline clustering-based paradigm to an online model-data hybrid computation paradigm, providing new insights and references for cross-subject and cross-dataset applications of EEG microstates.

识别和预测EEG微状态与序列到序列深度学习模型在线应用。
目的:脑电图(EEG)微状态作为一种非侵入性、高时间分辨率的分析大脑活动时空特征的工具,已被验证并应用于各个研究领域。然而,目前的脑电微状态分析方法依赖于聚类算法,这需要大规模的离线计算来获得微状态标签和聚类中心。这种离线方法不再足以满足跨主题、跨数据集和多任务场景的应用程序。方法:为了解决这些限制,我们首次提出了一种新的基于序列到序列的微状态识别和预测框架,实现从EEG信号到微状态标签的端到端在线识别和预测。具体来说,我们介绍了一种构建用于在线识别和预测的训练数据集的方法,该方法包括微状态标记校准、脑电电极映射和序列数据划分。我们在两个公共数据集上使用具有不同计算机制的四种不同的神经网络模型验证了这种方法。研究结果表明,脑电微状态可以通过可训练模型进行识别和预测。在跨主体微状态识别任务中,四种典型微状态的识别准确率高达74.26%,优于k -最近邻(KNN)算法21.91%。对于7个典型的微观状态,识别准确率达到66.76%,比KNN高出26.6%。在预测任务中,4种和7种典型微观状态的预测准确率分别达到70.49%和62.71%。意义:将脑电微状态分析从基于离线聚类的范式推进到在线模型-数据混合计算范式,为脑电微状态的跨学科、跨数据集应用提供了新的见解和参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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