Alkan Yelda, Biswal Bharat B, Taylor Paul A, Alvarez Tara L
Department of Biomedical Engineering, New Jersey Institute of Technology, Newark.
Vis Neurosci. 2011 May;28(3):247-61. doi: 10.1017/S0952523811000125. Epub 2011 May 4.
Cortical and subcortical functional activity stimulated via saccade and vergence eye movements were investigated to examine the similarities and differences between networks and regions of interest (ROIs).
Blood oxygenation level-dependent (BOLD) signals from stimulus-induced functional Magnetic Resonance Imaging (MRI) experiments were analyzed studying 16 healthy subjects. Six types of oculomotor experiments were conducted using a block design to study both saccade and vergence circuits. The experiments included a simple eye movement task and a more cognitively demanding prediction task. A hierarchical independent component analysis (ICA) process began by analyzing individual subject data sets with spatial ICA to extract spatial independent components (sIC), which resulted in three ROIs. Using the time series from each of the three ROIs per subject, per oculomotor experiment, a temporal ICA was used to compute individual temporal independent components (tICs). For each of the three ROIs, the individual tICs from multiple subjects were entered into a second temporal ICA to compute group-level tICs for comparison.
Two independent spatial maps were observed for each subject (one sIC showing activity in the frontoparietal regions and another sIC in the cerebellum) during the six oculomotor tasks. Analysis of group-level tICs revealed an increased latency in the cerebellar region when compared to the frontoparietal region.
Shared neuronal behavior has been reported in the frontal and parietal lobes, which may in part explain the segregation of frontoparietal functional activity into one sIC. The cerebellum uses multiple time scales for motor learning. This may result in an increased latency observed in the BOLD signal of the cerebellar group-level tIC when compared to the frontal and parietal group-level tICs. The increased latency offers a possible explanation to why ICA dissects the cerebellar activity into an sIC. The hierarchical ICA process used to calculate group-level tICs can yield insight into functional connectivity within complex neural networks.
通过扫视和聚散眼球运动刺激皮层和皮层下功能活动,以研究感兴趣网络和区域(ROI)之间的异同。
分析了16名健康受试者在刺激诱发功能磁共振成像(MRI)实验中获得的血氧水平依赖(BOLD)信号。使用组块设计进行了六种类型的动眼神经实验,以研究扫视和聚散回路。实验包括一个简单的眼球运动任务和一个认知要求更高的预测任务。分层独立成分分析(ICA)过程首先通过空间ICA分析个体受试者数据集以提取空间独立成分(sIC),从而得到三个ROI。对于每个受试者的每个动眼神经实验,使用来自三个ROI中每个ROI的时间序列,通过时间ICA计算个体时间独立成分(tIC)。对于三个ROI中的每一个,将来自多个受试者的个体tIC输入到第二个时间ICA中,以计算组水平的tIC进行比较。
在六项动眼神经任务期间,每个受试者观察到两个独立的空间图谱(一个sIC显示额顶叶区域的活动,另一个sIC显示小脑区域的活动)。组水平tIC的分析显示,与额顶叶区域相比,小脑区域中的潜伏期增加。
额叶和顶叶中已报道有共同的神经元行为,这可能部分解释了额顶叶功能活动分离为一个sIC的原因。小脑使用多个时间尺度进行运动学习。这可能导致与额叶和顶叶组水平tIC相比,小脑组水平tIC的BOLD信号中观察到的潜伏期增加。潜伏期增加为ICA将小脑活动分解为一个sIC的原因提供了一种可能的解释。用于计算组水平tIC的分层ICA过程可以深入了解复杂神经网络内的功能连接性。