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Investigating information content from different brain areas for single trial MEG decoding

机译:研究来自不同大脑区域的信息内容以进行单次MEG解码

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Magnetoencephalography (MEG) is a quite over-looked imaging modality within the field of brain-computer-interface (BCI) research, but due to its promising signal quality and non-invasive character it offers a variety of unexplored possibilities for paradigm design in electrocorticography (ECoG). In this study we investigate MEG data from a visual paradigm with motor responses for the influence of brain signals from different brain regions on the achievable decoding accuracies. Across data sets from all four subjects, our results consistently match reasonable expectations. This holds true not only for achievable decoding accuracies, but also for the spatial distrubition of brain regions that contribute most valuable information to the classifier. Therefore, our findings are a step further towards estimations of ECoG outcomes in various grid positions based on a fully non-invasive modality.
机译:磁脑电图(MEG)在脑机接口(BCI)研究领域中是一种被忽视的成像方式,但是由于其具有前景的信号质量和非侵入性特性,它为电皮层成像的范式设计提供了多种未开发的可能性(ECoG)。在这项研究中,我们研究了来自视觉范式的MEG数据与运动响应,以了解来自不同大脑区域的大脑信号对可实现的解码精度的影响。在所有四个主题的数据集中,我们的结果始终符合合理的预期。这不仅适用于可实现的解码精度,而且适用于对分类器贡献最大价值信息的大脑区域的空间分布。因此,我们的发现是向基于完全非侵入性方式的各种网格位置的ECoG结果评估迈出的一步。

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