Research Institute of Molecular Biology and Biophysics, Novosibirsk, Russia, 630117.
Institute of Medicine and Psychology, Novosibirsk State University, Novosibirsk, Russia, 630090.
Appl Psychophysiol Biofeedback. 2018 Jun;43(2):169-178. doi: 10.1007/s10484-018-9396-2.
Neural networks interaction was studied in healthy men (20-35 years old) who underwent 20 sessions of EEG biofeedback training outside the MRI scanner, with concurrent fMRI-EEG scans at the beginning, middle, and end of the course. The study recruited 35 subjects for EEG biofeedback, but only 18 of them were considered as "successful" in self-regulation of target EEG bands during the whole course of training. Results of fMRI analysis during EEG biofeedback are reported only for these "successful" trainees. The experimental group (N = 23 total, N = 13 "successful") upregulated the power of alpha rhythm, while the control group (N = 12 total, N = 5 "successful") beta rhythm, with the protocol instructions being as for alpha training in both. The acquisition of the stable skills of alpha self-regulation was followed by the weakening of the irrelevant links between the cerebellum and visuospatial network (VSN), as well as between the VSN, the right executive control network (RECN), and the cuneus. It was also found formation of a stable complex based on the interaction of the precuneus, the cuneus, the VSN, and the high level visuospatial network (HVN), along with the strengthening of the interaction of the anterior salience network (ASN) with the precuneus. In the control group, beta enhancement training was accompanied by weakening of interaction between the precuneus and the default mode network, and a decrease in connectivity between the cuneus and the primary visual network (PVN). The differences between the alpha training group and the control group increased successively during training. Alpha training was characterized by a less pronounced interaction of the network formed by the PVN and the HVN, as well as by an increased interaction of the cerebellum with the precuneus and the RECN. The study demonstrated the differences in the structure and interaction of neural networks involved into alpha and beta generating systems forming and functioning, which should be taken into account during planning neurofeedback interventions. Possibility of using fMRI-guided biofeedback organized according to the described neural networks interaction may advance more accurate targeting specific symptoms during neurotherapy.
研究了在 MRI 扫描仪外接受 20 次脑电图生物反馈训练的健康男性(20-35 岁)的神经网络相互作用,并在课程开始、中间和结束时进行了同时的 fMRI-EEG 扫描。该研究招募了 35 名脑电图生物反馈受试者,但只有 18 名被认为在整个训练过程中能够成功自我调节目标 EEG 频段。仅报告了这些“成功”训练者在脑电图生物反馈期间 fMRI 分析的结果。实验组(总 23 人,N=13 名“成功”者)上调了 alpha 节律的功率,而对照组(总 12 人,N=5 名“成功”者)beta 节律,协议指令与 alpha 训练相同。在获得 alpha 自我调节的稳定技能后,小脑与视空间网络(VSN)之间以及 VSN 与右侧执行控制网络(RECN)和楔前叶之间的不相关连接减弱。还发现,基于楔前叶、楔前叶、VSN 和高级视空间网络(HVN)之间的相互作用形成了一个稳定的复合体,以及前突显网络(ASN)与楔前叶之间的相互作用增强。在对照组中,beta 增强训练伴随着楔前叶与默认模式网络之间相互作用的减弱,以及楔前叶与初级视觉网络(PVN)之间连接的减少。在训练过程中,alpha 训练组和对照组之间的差异逐渐增加。alpha 训练的特点是由 PVN 和 HVN 形成的网络的相互作用不那么明显,以及小脑与楔前叶和 RECN 的相互作用增加。该研究表明,参与 alpha 和 beta 生成系统形成和功能的神经网络的结构和相互作用存在差异,在规划神经反馈干预时应考虑这些差异。根据描述的神经网络相互作用组织的 fMRI 引导生物反馈的可能性可能会在神经治疗中更准确地针对特定症状。