论文标题

基于网络的大脑计算机接口:原理和应用

Network-based brain computer interfaces: principles and applications

论文作者

Gonzalez-Astudillo, Juliana, Cattai, Tiziana, Bassignana, Giulia, Corsi, Marie-Constance, Fallani, Fabrizio De Vico

论文摘要

大脑计算机界面(BCIS)通过解码个人的心理意图与外部环境相互作用。因此,BCI可用于解决基本的神经科学问题,但也可以解锁从外骨骼控制到神经反馈(NFB)康复的各种应用。通常,BCI可用性在很大程度上取决于能够全面表征大脑功能并正确识别用户的精神状态的能力。为此,许多努力都集中在考虑局部大脑活动作为输入功能的情况下,改善分类算法。尽管BCI的性能有了显着改善,但事实上,当前功能代表了大脑功能的过度简单描述符。在过去的十年中,越来越多的证据表明,大脑是由多个专业和空间分布的区域组成的网络系统,这些系统会动态整合信息。虽然更复杂,但研究远程大脑区域的功能相互作用如何代表了更好地描述大脑功能的基础替代方案。由于网络科学的最新进展,即借鉴图理论,统计力学,数据挖掘和推论建模的现代领域,科学家现在拥有强大的手段来表征从神经成像数据中得出的复杂大脑网络。值得注意的是,可以从这些网络中提取摘要特征,以定量测量各种拓扑尺度的特定组织特性。在这篇局部审查中,我们旨在提供支持网络理论方法发展的最先进,作为理解BCI和提高可用性的有前途的工具。

Brain-computer interfaces (BCIs) make possible to interact with the external environment by decoding the mental intention of individuals. BCIs can therefore be used to address basic neuroscience questions but also to unlock a variety of applications from exoskeleton control to neurofeedback (NFB) rehabilitation. In general, BCI usability critically depends on the ability to comprehensively characterize brain functioning and correctly identify the user s mental state. To this end, much of the efforts have focused on improving the classification algorithms taking into account localized brain activities as input features. Despite considerable improvement BCI performance is still unstable and, as a matter of fact, current features represent oversimplified descriptors of brain functioning. In the last decade, growing evidence has shown that the brain works as a networked system composed of multiple specialized and spatially distributed areas that dynamically integrate information. While more complex, looking at how remote brain regions functionally interact represents a grounded alternative to better describe brain functioning. Thanks to recent advances in network science, i.e. a modern field that draws on graph theory, statistical mechanics, data mining and inferential modelling, scientists have now powerful means to characterize complex brain networks derived from neuroimaging data. Notably, summary features can be extracted from these networks to quantitatively measure specific organizational properties across a variety of topological scales. In this topical review, we aim to provide the state-of-the-art supporting the development of a network theoretic approach as a promising tool for understanding BCIs and improve usability.

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