Spatial spreading of representational geometry through source estimation of magnetoencephalography signals

Masashi Sato, Y. Miyawaki
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引用次数: 2

Abstract

To clarify where and when information is represented in the human brain, close investigation of brain activity at high spatiotemporal resolution is important. However, no current neuroimaging method is able to achieve such high spatiotemporal resolution. One attempt to extract necessary information from measured data under the limitation is combination of magnetoencephalography (MEG) source estimation and multivariate pattern analysis (MVPA). This combination may allow accurate localization of informative brain areas in fine time steps. However, because MEG source estimation is underdetermined, the source cortical current from a particular brain area can spread to other brain areas. In addition, information represented by the source cortical current may spread, too. Therefore, we should evaluate the accuracy of the localization of informative brain areas when combining MEG source estimation and MVPA. In this study, we used representational similarity analysis (RSA) as one of major methods of MVPA to investigate whether its result was influenced by the spreading of the cortical current through MEG source estimation. We found that relationship of the distance between brain activity patterns for multiple experimental conditions, or representational geometry, spread to brain areas where information about the experimental conditions was not represented as difference in brain activity patterns. These results suggest that we should be aware of the spreading of representational geometry through MEG source estimation, which may yield false positive interpretation about the localization of informative brain areas. Finally, we demonstrated that the possibility of mislocalization of informative brain areas can be reduced by weighting results of RSA with the reliability of the representational dissimilarity matrices.
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通过脑磁图信号源估计表征几何的空间扩展
为了弄清信息在人脑中的位置和时间,在高时空分辨率下密切研究大脑活动是很重要的。然而,目前还没有一种神经成像方法能够达到如此高的时空分辨率。脑磁图(MEG)源估计与多变量模式分析(multivariate pattern analysis, MVPA)相结合是在有限条件下从测量数据中提取必要信息的一种尝试。这种组合可以在精确的时间步骤中精确定位信息丰富的大脑区域。然而,由于脑磁图源估计是不确定的,来自特定脑区的源皮质电流可以扩散到其他脑区。此外,源皮质电流所代表的信息也可能传播。因此,在将脑磁图源估计与MVPA相结合时,我们需要评估信息脑区定位的准确性。在本研究中,我们采用表征相似性分析(RSA)作为MVPA的主要方法之一,通过脑磁图源估计来研究其结果是否受到皮层电流扩散的影响。我们发现,在多个实验条件下,大脑活动模式之间的距离关系,或代表性几何,会扩散到有关实验条件的信息没有表现为大脑活动模式差异的大脑区域。这些结果表明,我们应该通过MEG源估计意识到表征几何的传播,这可能会对信息脑区域的定位产生假阳性解释。最后,我们证明了信息脑区错误定位的可能性可以通过加权RSA结果与表征不相似矩阵的可靠性来降低。
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