Wein Simon, Deco Gustavo, Tomé Ana Maria, Goldhacker Markus, Malloni Wilhelm M, Greenlee Mark W, Lang Elmar W
CIML, Biophysics, University of Regensburg, Regensburg 93040, Germany.
Experimental Psychology, University of Regensburg, Regensburg 93040, Germany.
Comput Intell Neurosci. 2021 May 27;2021:5573740. doi: 10.1155/2021/5573740. eCollection 2021.
This short survey reviews the recent literature on the relationship between the brain structure and its functional dynamics. Imaging techniques such as diffusion tensor imaging (DTI) make it possible to reconstruct axonal fiber tracks and describe the structural connectivity (SC) between brain regions. By measuring fluctuations in neuronal activity, functional magnetic resonance imaging (fMRI) provides insights into the dynamics within this structural network. One key for a better understanding of brain mechanisms is to investigate how these fast dynamics emerge on a relatively stable structural backbone. So far, computational simulations and methods from graph theory have been mainly used for modeling this relationship. Machine learning techniques have already been established in neuroimaging for identifying functionally independent brain networks and classifying pathological brain states. This survey focuses on methods from machine learning, which contribute to our understanding of functional interactions between brain regions and their relation to the underlying anatomical substrate.
本简短综述回顾了近期关于脑结构与其功能动力学之间关系的文献。诸如扩散张量成像(DTI)等成像技术使得重建轴突纤维束并描述脑区之间的结构连通性(SC)成为可能。通过测量神经元活动的波动,功能磁共振成像(fMRI)为这个结构网络内的动力学提供了见解。更好理解脑机制的一个关键是研究这些快速动力学如何在相对稳定的结构框架上出现。到目前为止,计算模拟和图论方法主要用于对这种关系进行建模。机器学习技术已经在神经成像中确立,用于识别功能上独立的脑网络并对病理性脑状态进行分类。本综述聚焦于机器学习方法,这些方法有助于我们理解脑区之间的功能相互作用及其与潜在解剖基质的关系。