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首页> 外文期刊>Frontiers in Neuroscience >A New Generation of Brain-Computer Interfaces Driven by Discovery of Latent EEG-fMRI Linkages Using Tensor Decomposition
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A New Generation of Brain-Computer Interfaces Driven by Discovery of Latent EEG-fMRI Linkages Using Tensor Decomposition

机译:利用张量分解发现潜在的脑电图功能磁共振成像联动驱动的新一代脑机接口

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A Brain-Computer Interface (BCI) is a setup permitting the control of external devices by decoding brain activity. Electroencephalography (EEG) has been extensively used for decoding brain activity since it is non-invasive, cheap, portable, and has high temporal resolution to allow real-time operation. Due to its poor spatial specificity, BCIs based on EEG can require extensive training and multiple trials to decode brain activity (consequently slowing down the operation of the BCI). On the other hand, BCIs based on functional magnetic resonance imaging (fMRI) are more accurate owing to its superior spatial resolution and sensitivity to underlying neuronal processes which are functionally localized. However, due to its relatively low temporal resolution, high cost, and lack of portability, fMRI is unlikely to be used for routine BCI. We propose a new approach for transferring the capabilities of fMRI to EEG, which includes simultaneous EEG/fMRI sessions for finding a mapping from EEG to fMRI, followed by a BCI run from only EEG data, but driven by fMRI-like features obtained from the mapping identified previously. Our novel data-driven method is likely to discover latent linkages between electrical and hemodynamic signatures of neural activity hitherto unexplored using model-driven methods, and is likely to serve as a template for a novel multi-modal strategy wherein cross-modal EEG-fMRI interactions are exploited for the operation of a unimodal EEG system, leading to a new generation of EEG-based BCIs.
机译:脑机接口(BCI)是通过解码大脑活动来允许控制外部设备的设置。脑电图(EEG)已被广泛用于解码大脑活动,因为它是非侵入性的,廉价的,可移植的,并且具有较高的时间分辨率以允许实时操作。由于其较差的空间特异性,基于EEG的BCI可能需要进行大量培训和多次试验才能解码大脑活动(因此会减慢BCI的运行速度)。另一方面,基于功能磁共振成像(fMRI)的BCI由于其卓越的空间分辨率和对功能定位的基础神经元过程的敏感性而更加精确。但是,由于其相对较低的时间分辨率,较高的成本以及缺乏便携性,fMRI不太可能用于常规BCI。我们提出了一种将fMRI的功能转移到EEG的新方法,其中包括同时进行EEG / fMRI会话以查找从EEG到fMRI的映射,然后仅从EEG数据运行BCI,但由从先前确定的映射。我们的新型数据驱动方法可能会发现迄今尚未使用模型驱动方法进行探索的神经活动的电信号和血液动力学信号之间的潜在联系,并且有可能作为新型多模式策略的模板,其中跨模式EEG-fMRI交互作用被用于单峰EEG系统的操作,从而导致了新一代基于EEG的BCI。

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