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GALA: group analysis leads to accuracy a novel approach for solving the inverse problem in exploratory analysis of group MEG recordings

机译:GALA:小组分析可提高准确性这是一种解决小组MEG录音探索性分析中反问题的新方法

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摘要

Although MEG/EEG signals are highly variable between subjects, they allow characterizing systematic changes of cortical activity in both space and time. Traditionally a two-step procedure is used. The first step is a transition from sensor to source space by the means of solving an ill-posed inverse problem for each subject individually. The second is mapping of cortical regions consistently active across subjects. In practice the first step often leads to a set of active cortical regions whose location and timecourses display a great amount of interindividual variability hindering the subsequent group analysis. We propose Group Analysis Leads to Accuracy (GALA)—a solution that combines the two steps into one. GALA takes advantage of individual variations of cortical geometry and sensor locations. It exploits the ensuing variability in electromagnetic forward model as a source of additional information. We assume that for different subjects functionally identical cortical regions are located in close proximity and partially overlap and their timecourses are correlated. This relaxed similarity constraint on the inverse solution can be expressed within a probabilistic framework, allowing for an iterative algorithm solving the inverse problem jointly for all subjects. A systematic simulation study showed that GALA, as compared with the standard min-norm approach, improves accuracy of true activity recovery, when accuracy is assessed both in terms of spatial proximity of the estimated and true activations and correct specification of spatial extent of the activated regions. This improvement obtained without using any noise normalization techniques for both solutions, preserved for a wide range of between-subject variations in both spatial and temporal features of regional activation. The corresponding activation timecourses exhibit significantly higher similarity across subjects. Similar results were obtained for a real MEG dataset of face-specific evoked responses.
机译:尽管MEG / EEG信号在受试者之间变化很大,但它们可以表征皮层活动在空间和时间上的系统变化。传统上,使用两步过程。第一步是通过为每个对象分别解决不适定的逆问题,从传感器空间过渡到源空间。第二个是绘制跨受试者一致活跃的皮质区域的图。在实践中,第一步通常会导致一组活动的皮质区域,其位置和时程显示出很大的个体差异,从而阻碍了后续的组分析。我们提出了“群体分析导致准确性(GALA)”解决方案,该解决方案将两个步骤结合在一起。 GALA利用皮质几何形状和传感器位置的个体变化。它利用电磁正向模型中随之而来的可变性作为附加信息的来源。我们假设,对于不同的受试者,功能相同的皮质区域位于紧邻且部分重叠且它们的时程相关。可以在概率框架内表达对逆解的这种宽松相似性约束,从而允许使用迭代算法共同解决所有主题的逆问题。一项系统的模拟研究表明,与标准的最小范数方法相比,GALA可以提高真实活动恢复的准确性,同时根据估计和真实激活的空间接近性以及被激活的空间范围的正确规范来评估准确性地区。对于这两种解决方案,都没有使用任何噪声归一化技术就获得了这种改进,并保留了区域激活的空间和时间特征在主体间的广泛差异。相应的激活时间过程在受试者之间表现出明显更高的相似性。对于脸部特定诱发反应的真实MEG数据集,获得了相似的结果。

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