Biochemistry department, University of Zurich, Zurich, Switzerland CH-8057.
Biochemistry department, University of Zurich, Zurich, Switzerland CH-8057
eNeuro. 2021 Nov 5;8(6). doi: 10.1523/ENEURO.0484-20.2021. Print 2021 Nov-Dec.
The hippocampus and amygdala are functionally coupled brain regions that play a crucial role in processes involving memory and learning. Because interareal communication has been reported both during specific sleep stages and in awake, behaving animals, these brain regions can serve as an archetype to establish that measuring functional interactions is important for comprehending neural systems. To this end, we analyze here a public dataset of local field potentials (LFPs) recorded in rats simultaneously from the hippocampus and amygdala during different behaviors. Employing a specific, time-lagged embedding technique, named topological causality (TC), we infer directed interactions between the LFP band powers of the two regions across six frequency bands in a time-resolved manner. The combined power and interaction signals are processed with our own unsupervised tools developed originally for the analysis of molecular dynamics simulations to effectively visualize and identify putative, neural states that are visited by the animals repeatedly. Our proposed methodology minimizes impositions onto the data, such as isolating specific epochs, or averaging across externally annotated behavioral stages, and succeeds in separating internal states by external labels such as sleep or stimulus events. We show that this works better for two of the three rats we analyzed, and highlight the need to acknowledge individuality in analyses of this type. Importantly, we demonstrate that the quantification of functional interactions is a significant factor in discriminating these external labels, and we suggest our methodology as a general tool for large, multisite recordings.
海马体和杏仁核是功能耦合的脑区,在涉及记忆和学习的过程中起着至关重要的作用。由于在特定的睡眠阶段和清醒、行为动物中都有报道过脑区之间的交流,这些脑区可以作为一个范例,以证明测量功能相互作用对于理解神经系统是很重要的。为此,我们在这里分析了一个公共数据集,该数据集记录了大鼠在不同行为期间同时从海马体和杏仁核记录的局部场电位(LFPs)。我们采用一种特定的、时间滞后的嵌入技术,名为拓扑因果关系(TC),以时间分辨的方式推断两个区域的 LFPs 频带功率之间的有向相互作用。将组合的功率和相互作用信号与我们最初为分析分子动力学模拟而开发的、用于有效可视化和识别动物反复访问的潜在神经状态的无监督工具进行处理。我们提出的方法最大限度地减少了对数据的限制,例如隔离特定的时段,或者对外部注释的行为阶段进行平均,并且可以通过外部标签(如睡眠或刺激事件)来分离内部状态。我们表明,这种方法在我们分析的三只大鼠中的两只中效果更好,并强调需要在这种类型的分析中承认个体差异。重要的是,我们证明了功能相互作用的量化是区分这些外部标签的一个重要因素,并提出我们的方法作为一种用于大规模多站点记录的通用工具。