Department of Psychiatry and Psychotherapy, Medical University of Vienna, Vienna, Austria.
Department of Biomedical Imaging and Image-guided Therapy, Division of Nuclear Medicine, Medical University of Vienna, Vienna, Austria.
Commun Biol. 2022 May 9;5(1):428. doi: 10.1038/s42003-022-03362-4.
The neurobiological basis of learning is reflected in adaptations of brain structure, network organization and energy metabolism. However, it is still unknown how different neuroplastic mechanisms act together and if cognitive advancements relate to general or task-specific changes. Therefore, we tested how hierarchical network interactions contribute to improvements in the performance of a visuo-spatial processing task by employing simultaneous PET/MR neuroimaging before and after a 4-week learning period. We combined functional PET and metabolic connectivity mapping (MCM) to infer directional interactions across brain regions. Learning altered the top-down regulation of the salience network onto the occipital cortex, with increases in MCM at resting-state and decreases during task execution. Accordingly, a higher divergence between resting-state and task-specific effects was associated with better cognitive performance, indicating that these adaptations are complementary and both required for successful visuo-spatial skill learning. Simulations further showed that changes at resting-state were dependent on glucose metabolism, whereas those during task performance were driven by functional connectivity between salience and visual networks. Referring to previous work, we suggest that learning establishes a metabolically expensive skill engram at rest, whose retrieval serves for efficient task execution by minimizing prediction errors between neuronal representations of brain regions on different hierarchical levels.
学习的神经生物学基础反映在大脑结构、网络组织和能量代谢的适应性变化上。然而,不同的神经可塑性机制如何共同作用,以及认知的提高是否与一般或特定任务的变化有关,这些仍然未知。因此,我们通过在 4 周的学习期前后进行同时的 PET/MR 神经影像学测试,来检验层次网络相互作用如何有助于提高视觉空间处理任务的表现。我们结合了功能 PET 和代谢连通性映射 (MCM) 来推断大脑区域之间的方向相互作用。学习改变了突显网络对枕叶皮层的自上而下调节,静息状态下 MCM 增加,任务执行时减少。因此,静息状态和特定任务效应之间更高的发散性与更好的认知表现相关,表明这些适应性是互补的,两者都是成功进行视觉空间技能学习所必需的。模拟进一步表明,静息状态下的变化取决于葡萄糖代谢,而任务执行过程中的变化则是由突显网络和视觉网络之间的功能连接驱动的。参考之前的工作,我们认为学习在休息时建立了一个代谢昂贵的技能记忆痕迹,其检索通过最小化不同层次大脑区域神经元表示之间的预测误差,为高效的任务执行提供服务。