Developmental Neurophysiology, Neuroanatomy, University Medical Center Hamburg-Eppendorf Hamburg, Germany.
Institute of Neuroscience and Medicine (INM-6) and Institute for Advanced Simulation (IAS-6), Jülich Research Centre and JARA Jülich, Germany.
Front Neural Circuits. 2014 May 27;8:50. doi: 10.3389/fncir.2014.00050. eCollection 2014.
Flexible communication within the brain, which relies on oscillatory activity, is not confined to adult neuronal networks. Experimental evidence has documented the presence of discontinuous patterns of oscillatory activity already during early development. Their highly variable spatial and time-frequency organization has been related to region specificity. However, it might be equally due to the absence of unitary criteria for classifying the early activity patterns, since they have been mainly characterized by visual inspection. Therefore, robust and unbiased methods for categorizing these discontinuous oscillations are needed for increasingly complex data sets from different labs. Here, we introduce an unsupervised detection and classification algorithm for the discontinuous activity patterns of rodents during early development. For this, in a first step time windows with discontinuous oscillations vs. epochs of network "silence" were identified. In a second step, the major features of detected events were identified and processed by principal component analysis for deciding on their contribution to the classification of different oscillatory patterns. Finally, these patterns were categorized using an unsupervised cluster algorithm. The results were validated on manually characterized neonatal spindle bursts (SB), which ubiquitously entrain neocortical areas of rats and mice, and prelimbic nested gamma spindle bursts (NG). Moreover, the algorithm led to satisfactory results for oscillatory events that, due to increased similarity of their features, were more difficult to classify, e.g., during the pre-juvenile developmental period. Based on a linear classification, the optimal number of features to consider increased with the difficulty of detection. This algorithm allows the comparison of neonatal and pre-juvenile oscillatory patterns in their spatial and temporal organization. It might represent a first step for the unbiased elucidation of activity patterns during development.
大脑内的灵活通讯依赖于震荡活动,而这种通讯不仅局限于成年神经元网络。实验证据已经证明,在早期发育过程中就存在不连续的震荡活动模式。它们高度可变的空间和时频组织与区域特异性有关。然而,这可能同样是由于缺乏对早期活动模式进行分类的单一标准,因为这些模式主要是通过视觉检查来描述的。因此,需要稳健且无偏的方法来对这些不连续的震荡进行分类,以便处理来自不同实验室的越来越复杂的数据集。在这里,我们引入了一种用于分类啮齿动物早期发育过程中不连续活动模式的无监督检测和分类算法。为此,在第一步中,识别出具有不连续震荡的时间窗口与网络“静默”时段。在第二步中,确定检测到的事件的主要特征,并通过主成分分析进行处理,以决定它们对不同震荡模式分类的贡献。最后,使用无监督聚类算法对这些模式进行分类。该算法的结果通过手动特征化的新生期纺锤波(SB)进行验证,纺锤波普遍使大鼠和小鼠的新皮层区域同步,以及前扣带回嵌套γ波纺锤波(NG)。此外,该算法还为由于特征相似性增加而更难以分类的震荡事件(例如,在青少年前发育阶段)提供了令人满意的结果。基于线性分类,要考虑的最佳特征数量随着检测难度的增加而增加。该算法允许对新生儿和青少年前的震荡模式进行空间和时间组织的比较。它可能代表了在发育过程中对活动模式进行无偏解析的第一步。