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脑机接口提高了大脑信号的信噪比。

Brain-computer interfaces increase whole-brain signal to noise.

机构信息

Department of Neuroscience, Baylor College of Medicine, Houston, TX 77030, USA.

出版信息

Proc Natl Acad Sci U S A. 2013 Aug 13;110(33):13630-5. doi: 10.1073/pnas.1210738110. Epub 2013 Jul 30.

DOI:10.1073/pnas.1210738110
PMID:23901117
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC3746889/
Abstract

Brain-computer interfaces (BCIs) can convert mental states into signals to drive real-world devices, but it is not known if a given covert task is the same when performed with and without BCI-based control. Using a BCI likely involves additional cognitive processes, such as multitasking, attention, and conflict monitoring. In addition, it is challenging to measure the quality of covert task performance. We used whole-brain classifier-based real-time functional MRI to address these issues, because the method provides both classifier-based maps to examine the neural requirements of BCI and classification accuracy to quantify the quality of task performance. Subjects performed a covert counting task at fast and slow rates to control a visual interface. Compared with the same task when viewing but not controlling the interface, we observed that being in control of a BCI improved task classification of fast and slow counting states. Additional BCI control increased subjects' whole-brain signal-to-noise ratio compared with the absence of control. The neural pattern for control consisted of a positive network comprised of dorsal parietal and frontal regions and the anterior insula of the right hemisphere as well as an expansive negative network of regions. These findings suggest that real-time functional MRI can serve as a platform for exploring information processing and frontoparietal and insula network-based regulation of whole-brain task signal-to-noise ratio.

摘要

脑机接口 (BCI) 可以将心理状态转化为信号来驱动现实世界的设备,但尚不清楚在使用和不使用基于 BCI 的控制时,给定的隐蔽任务是否相同。使用 BCI 可能涉及额外的认知过程,例如多任务处理、注意力和冲突监测。此外,衡量隐蔽任务表现的质量具有挑战性。我们使用基于全脑分类器的实时功能磁共振成像来解决这些问题,因为该方法提供了基于分类器的映射来检查 BCI 的神经要求,以及分类准确性来量化任务表现的质量。受试者以快速和慢速的速度执行隐蔽计数任务来控制视觉界面。与观看但不控制界面时执行相同的任务相比,我们观察到控制 BCI 可以提高快速和慢速计数状态的任务分类。与没有控制相比,额外的 BCI 控制增加了受试者的全脑信噪比。控制的神经模式包括由背侧顶叶和额叶区域以及右侧额极的前岛叶组成的正网络,以及由多个区域组成的扩展负网络。这些发现表明,实时功能磁共振成像可以作为探索信息处理以及基于顶叶和岛叶网络的全脑任务信噪比调节的平台。

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