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Paired MEG data set source localization using recursively applied and projected (RAP) MUSIC

机译:使用递归应用和投影(RAP)MUSIC的成对MEG数据集源定位

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An important class of experiments in functional brain mapping involves collecting pairs of data corresponding to separate "Task" and "Control" conditions. The data are then analyzed to determine what activity occurs during the Task experiment but not in the Control. Here the authors describe a new method for processing paired magnetoencephalographic (MEG) data sets using the authors' recursively applied and projected multiple signal classification (RAP-MUSIC) algorithm. In this method the signal subspace of the Task data is projected against the orthogonal complement of the Control data signal subspace to obtain a subspace which describes spatial activity unique to the Task. A RAP-MUSIC localization search is then performed on this projected data to localize the sources which are active in the Task but not in the Control data. In addition to dipolar sources, effective blocking of more complex sources, e.g., multiple synchronously activated dipoles or synchronously activated distributed source activity, is possible since these topographies are well-described by the Control data signal subspace. Unlike previously published methods, the proposed method is shown to be effective in situations where the time series associated with Control and Task activity possess significant cross correlation. The method also allows for straightforward determination of the estimated time series of the localized target sources. A multiepoch MEG simulation and a phantom experiment are presented to demonstrate the ability of this method to successfully identify sources and their time series in the Task data.
机译:功能性大脑映射中的一类重要的实验涉及收集分别对应于“任务”和“控制”条件的数据对。然后分析数据以确定在Task实验期间发生了什么活动,但在Control中没有发生。在这里,作者描述了一种使用作者的递归应用和投影多信号分类(RAP-MUSIC)算法处理配对磁脑电图(MEG)数据集的新方法。在这种方法中,将任务数据的信号子空间投影到控制数据信号子空间的正交补码上,以获得描述该任务独有的空间活动的子空间。然后,在此投影数据上执行RAP-MUSIC本地化搜索,以本地化在Task中有效但在Control数据中无效的源。除了偶极源之外,还可以有效阻止更复杂的源,例如多个同步激活的偶极子或同步激活的分布式源活动,因为这些形貌由控制数据信号子空间很好地描述了。与以前发布的方法不同,在与“控制”和“任务”活动相关的时间序列具有显着的互相关的情况下,该方法被证明是有效的。该方法还允许直接确定本地化目标源的估计时间序列。提出了多时期的MEG模拟和幻像实验,以证明该方法能够成功识别Task数据中的来源及其时间序列。

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