Dashtestani Hadis, Miguel Helga O, Condy Emma E, Zeytinoglu Selin, Millerhagen John B, Debnath Ranjan, Smith Elizabeth, Adali Tulay, Fox Nathan A, Gandjbakhche Amir H
Eunice Kennedy Shriver National Institute of Child Health and Human Development (NICHD), National Institutes of Health, Bethesda, MD, USA.
Department of Human Development and Quantitative Methodology, University of Maryland, College Park, MD, USA.
Sci Rep. 2022 Apr 27;12(1):6878. doi: 10.1038/s41598-022-10942-1.
The action observation network (AON) is a network of brain regions involved in the execution and observation of a given action. The AON has been investigated in humans using mostly electroencephalogram (EEG) and functional magnetic resonance imaging (fMRI), but shared neural correlates of action observation and action execution are still unclear due to lack of ecologically valid neuroimaging measures. In this study, we used concurrent EEG and functional Near Infrared Spectroscopy (fNIRS) to examine the AON during a live-action observation and execution paradigm. We developed structured sparse multiset canonical correlation analysis (ssmCCA) to perform EEG-fNIRS data fusion. MCCA is a generalization of CCA to more than two sets of variables and is commonly used in medical multimodal data fusion. However, mCCA suffers from multi-collinearity, high dimensionality, unimodal feature selection, and loss of spatial information in interpreting the results. A limited number of participants (small sample size) is another problem in mCCA, which leads to overfitted models. Here, we adopted graph-guided (structured) fused least absolute shrinkage and selection operator (LASSO) penalty to mCCA to conduct feature selection, incorporating structural information amongst the variables (i.e., brain regions). Benefitting from concurrent recordings of brain hemodynamic and electrophysiological responses, the proposed ssmCCA finds linear transforms of each modality such that the correlation between their projections is maximized. Our analysis of 21 right-handed participants indicated that the left inferior parietal region was active during both action execution and action observation. Our findings provide new insights into the neural correlates of AON which are more fine-tuned than the results from each individual EEG or fNIRS analysis and validate the use of ssmCCA to fuse EEG and fNIRS datasets.
动作观察网络(AON)是一个涉及特定动作执行和观察的脑区网络。在人类中,主要使用脑电图(EEG)和功能磁共振成像(fMRI)对AON进行了研究,但由于缺乏生态有效神经成像测量方法,动作观察和动作执行的共享神经关联仍不明确。在本研究中,我们使用同步脑电图和功能近红外光谱(fNIRS),在真人动作观察和执行范式中检查AON。我们开发了结构化稀疏多集典型相关分析(ssmCCA)来进行EEG-fNIRS数据融合。MCCA是CCA对两组以上变量的推广,常用于医学多模态数据融合。然而,mCCA存在多重共线性、高维性、单峰特征选择以及在解释结果时空间信息丢失的问题。参与者数量有限(小样本量)是mCCA中的另一个问题,这会导致模型过度拟合。在这里,我们对mCCA采用图引导(结构化)融合最小绝对收缩和选择算子(LASSO)惩罚来进行特征选择,纳入变量(即脑区)之间的结构信息。受益于脑血流动力学和电生理反应的同步记录,所提出的ssmCCA找到了每个模态的线性变换,使得它们投影之间的相关性最大化。我们对21名右利手参与者的分析表明,左下顶叶区域在动作执行和动作观察期间均活跃。我们的研究结果为AON的神经关联提供了新见解,这些见解比每个单独的EEG或fNIRS分析结果更精细,并验证了使用ssmCCA融合EEG和fNIRS数据集的有效性。