Li Dong, Pu Wang, Yi Bin, Jiayan Deng, Y. Li, Leiting Chen, C. Luo, D. Yao
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引用次数: 12
摘要
脑电图(EEG)和功能磁共振成像(fMRI)等神经成像多模式信息的整合已成为研究各种类型癫痫的热门方法。然而,对癫痫患者同时进行EEG-fMRI数据分析也存在一些问题:一是hrf的变化,二是数据的信噪比较低。在这里,我们提出了一种新的多模态无监督方法,称为局部多模态序列分析(LMSA),它可以弥补多模态集成的这些缺陷。通过与直接实现一般线性模型(general linear model, GLM)的传统eeg信息fMRI分析进行对比,验证了LMSA的优越性能。然后,将家族性皮质肌阵挛性震颤和癫痫(FCMTE)的同时EEG- fmri数据应用于LMSA,发现与脑电图放电相关的一些有意义的信息,如小脑和额叶(尤其是额下回)的BOLD变化。这些结果表明,LMSA是一种很有前途的技术,可以探索各种数据,提供综合信息,从而进一步了解脑功能障碍。
Local Multimodal Serial Analysis for Fusing EEG-fMRI: A New Method to Study Familial Cortical Myoclonic Tremor and Epilepsy
Integrating information of neuroimaging multimodalities, such as electroencephalography (EEG) and functional magnetic resonance imaging (fMRI), has become popularly for investigating various types of epilepsy. However, there are also some problems for the analysis of simultaneous EEG-fMRI data in epilepsy: one is the variation of HRFs, and another is low signal-to-noise ratio (SNR) in the data. Here, we propose a new multimodal unsupervised method, termed local multimodal serial analysis (LMSA), which may compensate for these deficiencies in multimodal integration. A simulation study with comparison to the traditional EEG-informed fMRI analysis which directly implemented the general linear model (GLM) was conducted to confirm the superior performance of LMSA. Then, applied to the simultaneous EEG-fMRI data of familial cortical myoclonic tremor and epilepsy (FCMTE), some meaningful information of BOLD changes related to the EEG discharges, such as the cerebellum and frontal lobe (especially in the inferior frontal gyrus), were found using LMSA. These results demonstrate that LMSA is a promising technique for exploring various data to provide integrated information that will further our understanding of brain dysfunction.