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基于脑连接组预测模型的脑电图静息态和任务功能连接模式对工作记忆表现预测的直接比较

Direct Comparison of EEG Resting State and Task Functional Connectivity Patterns for Predicting Working Memory Performance Using Connectome-Based Predictive Modeling.

作者信息

Pashkov Anton, Dakhtin Ivan

机构信息

FSBI "Federal Center of Neurosurgery", Novosibirsk, Russia.

Department of neurosurgery, Novosibirsk State Medical University, Novosibirsk, Russia.

出版信息

Brain Connect. 2025 May;15(4):175-187. doi: 10.1089/brain.2024.0059. Epub 2025 May 2.

Abstract

The integration of machine learning with advanced neuroimaging has emerged as a powerful approach for uncovering the relationship between neuronal activity patterns and behavioral traits. While resting-state neuroimaging has significantly contributed to understanding the neural basis of cognition, recent fMRI studies suggest that task-based paradigms may offer superior predictive power for cognitive outcomes. However, this hypothesis has never been tested using electroencephalography (EEG) data. We conducted the first experimental comparison of predictive models built on high-density EEG data recorded during both resting-state and an auditory working memory task. Multiple data processing pipelines were employed to ensure robustness and reliability. Model performance was evaluated by computing the Pearson correlation coefficient between predicted and observed behavioral scores, supplemented by mean absolute error and root mean square error metrics for each model configuration. Consistent with prior fMRI findings, task-based EEG data yielded slightly better modeling performance than resting-state data. Both conditions demonstrated high predictive accuracy, with peak correlations between observed and predicted values reaching r = 0.5. Alpha and beta band functional connectivity were the strongest predictors of working memory performance, followed by theta and gamma bands. Additionally, the choice of parcellation atlas and connectivity method significantly influenced results, highlighting the importance of methodological considerations. Our findings support the advantage of task-based EEG over resting-state data in predicting cognitive performance, aligning with. The study underscores the critical role of frequency-specific functional connectivity and methodological choices in model performance. These insights should guide future experimental designs in cognitive neuroscience. Impact Statement This study provides the first direct comparison of EEG-based functional connectivity during rest and task conditions for predicting working memory performance using connectome-based predictive modeling (CPM). It demonstrates that task-based EEG data slightly outperforms resting-state data, with alpha and beta bands being the most predictive. The findings highlight the critical influence of methodological choices, such as parcellation atlases and connectivity metrics, on model outcomes. By bridging gaps in EEG research and validating CPM's applicability, this work advances the optimization of neuroimaging protocols for cognitive assessment, offering insights for future studies in cognitive neuroscience.

摘要

机器学习与先进神经影像学的整合已成为揭示神经元活动模式与行为特征之间关系的有力方法。虽然静息态神经影像学在理解认知的神经基础方面做出了重大贡献,但最近的功能磁共振成像研究表明,基于任务的范式可能对认知结果具有更强的预测能力。然而,这一假设从未使用脑电图(EEG)数据进行过测试。我们首次对基于静息态和听觉工作记忆任务期间记录的高密度EEG数据构建的预测模型进行了实验比较。采用了多个数据处理流程以确保稳健性和可靠性。通过计算预测行为分数与观察到的行为分数之间的皮尔逊相关系数来评估模型性能,并辅以每个模型配置的平均绝对误差和均方根误差指标。与先前的功能磁共振成像研究结果一致,基于任务的EEG数据产生的建模性能略优于静息态数据。两种情况均显示出较高的预测准确性,观察值与预测值之间的峰值相关性达到r = 0.5。α和β波段功能连接是工作记忆性能的最强预测指标,其次是θ和γ波段。此外,脑区划分图谱和连接方法的选择对结果有显著影响,突出了方法学考虑的重要性。我们的研究结果支持基于任务的EEG在预测认知性能方面优于静息态数据,与……一致。该研究强调了特定频率功能连接和方法选择在模型性能中的关键作用。这些见解应指导认知神经科学未来的实验设计。影响声明本研究首次直接比较了静息和任务条件下基于EEG的功能连接,以使用基于连接组的预测建模(CPM)预测工作记忆性能。结果表明,基于任务的EEG数据略优于静息态数据,其中α和β波段最具预测性。研究结果突出了方法选择(如脑区划分图谱和连接指标)对模型结果的关键影响。通过弥合EEG研究中的差距并验证CPM的适用性,这项工作推动了用于认知评估的神经影像学协议的优化,为认知神经科学的未来研究提供了见解。

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