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感觉运动节律上调神经反馈学习表现的多模态神经影像学预测指标

Multimodal Neuroimaging Predictors of Learning Performance of Sensorimotor Rhythm Up-Regulation Neurofeedback.

作者信息

Li Linling, Wang Yinxue, Zeng Yixuan, Hou Shaohui, Huang Gan, Zhang Li, Yan Nan, Ren Lijie, Zhang Zhiguo

机构信息

School of Biomedical Engineering, Health Science Center, Shenzhen University, Shenzhen, China.

Guangdong Provincial Key Laboratory of Biomedical Measurements and Ultrasound Imaging, Shenzhen, China.

出版信息

Front Neurosci. 2021 Jul 20;15:699999. doi: 10.3389/fnins.2021.699999. eCollection 2021.

Abstract

Electroencephalographic (EEG) neurofeedback (NFB) is a popular neuromodulation method to help one selectively enhance or inhibit his/her brain activities by means of real-time visual or auditory feedback of EEG signals. Sensory motor rhythm (SMR) NFB protocol has been applied to improve cognitive performance, but a large proportion of participants failed to self-regulate their brain activities and could not benefit from NFB training. Therefore, it is important to identify the neural predictors of SMR up-regulation NFB training performance for a better understanding the mechanisms of individual difference in SMR NFB. Twenty-seven healthy participants (12 males, age: 23.1 ± 2.36) were enrolled to complete three sessions of SMR up-regulation NFB training and collection of multimodal neuroimaging data [resting-state EEG, structural magnetic resonance imaging (MRI), and resting-state functional MRI (fMRI)]. Correlation analyses were performed between within-session NFB learning index and anatomical and functional brain features extracted from multimodal neuroimaging data, in order to identify the neuroanatomical and neurophysiological predictors for NFB learning performance. Lastly, machine learning models were trained to predict NFB learning performance using features from each modality as well as multimodal features. According to our results, most participants were able to successfully increase the SMR power and the NFB learning performance was significantly correlated with a set of neuroimaging features, including resting-state EEG powers, gray/white matter volumes from MRI, regional and functional connectivity (FC) of resting-state fMRI. Importantly, results of prediction analysis indicate that NFB learning index can be better predicted using multimodal features compared with features of single modality. In conclusion, this study highlights the importance of multimodal neuroimaging technique as a tool to explain the individual difference in within-session NFB learning performance, and could provide a theoretical framework for early identification of individuals who cannot benefit from NFB training.

摘要

脑电图(EEG)神经反馈(NFB)是一种流行的神经调节方法,可通过EEG信号的实时视觉或听觉反馈帮助个体选择性增强或抑制其大脑活动。感觉运动节律(SMR)NFB方案已被应用于改善认知表现,但很大一部分参与者未能自我调节其大脑活动,无法从NFB训练中受益。因此,识别SMR上调NFB训练表现的神经预测指标对于更好地理解SMR NFB个体差异机制很重要。招募了27名健康参与者(12名男性,年龄:23.1±2.36),完成三个阶段的SMR上调NFB训练并收集多模态神经影像数据[静息态EEG、结构磁共振成像(MRI)和静息态功能磁共振成像(fMRI)]。在阶段内NFB学习指数与从多模态神经影像数据中提取的解剖学和功能性脑特征之间进行相关性分析,以识别NFB学习表现的神经解剖学和神经生理学预测指标。最后,使用来自每种模态的特征以及多模态特征训练机器学习模型来预测NFB学习表现。根据我们的结果,大多数参与者能够成功提高SMR功率,并且NFB学习表现与一组神经影像特征显著相关,包括静息态EEG功率、MRI的灰质/白质体积、静息态fMRI的区域和功能连接(FC)。重要的是,预测分析结果表明,与单模态特征相比,使用多模态特征可以更好地预测NFB学习指数。总之,本研究强调了多模态神经影像技术作为解释阶段内NFB学习表现个体差异工具的重要性,并可为早期识别无法从NFB训练中受益的个体提供理论框架。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1a43/8329704/bacc2fd9e5fc/fnins-15-699999-g001.jpg

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