Mattout Jérémie, Perrin Margaux, Bertrand Olivier, Maby Emmanuel
Brain Dynamics and Cognition Team, Lyon Neuroscience Research Center, INSERM U1028-CNRS, UMR5292, 69000 Lyon, France; University Lyon 1, 69000 Lyon, France.
Brain Dynamics and Cognition Team, Lyon Neuroscience Research Center, INSERM U1028-CNRS, UMR5292, 69000 Lyon, France; University Lyon 1, 69000 Lyon, France.
Ann Phys Rehabil Med. 2015 Feb;58(1):23-28. doi: 10.1016/j.rehab.2014.10.006. Epub 2015 Jan 8.
A well-known neurophysiological marker that can easily be captured with electroencephalography (EEG) is the so-called P300: a positive signal deflection occurring at about 300 ms after a relevant stimulus. This brain response is particularly salient when the target stimulus is rare among a series of distracting stimuli, whatever the type of sensory input. Therefore, it has been proposed and extensively studied as a possible feature for direct brain-computer communication. The most advanced non-invasive BCI application based on this principle is the P300-speller. However, it is still a matter of debate whether this application will prove relevant to any population of patients. In a series of recent theoretical and empirical studies, we have been using this P300-based paradigm to push forward the performance of non-invasive BCI. This paper summarizes the proposed improvements and obtained results. Importantly, those could be generalized to many kinds of BCI, beyond this particular application. Indeed, they relate to most of the key components of a closed-loop BCI, namely: improving the accuracy of the system by trying to detect and correct for errors automatically; optimizing the computer's speed-accuracy trade-off by endowing it with adaptive behavior; but also simplifying the hardware and time for set-up in the aim of routine use in patients. Our results emphasize the importance of the closed-loop interaction and of the ensuing co-adaptation between the user and the machine whenever possible. Most of our evaluations have been conducted in healthy subjects. We conclude with perspectives for clinical applications.
一种可用脑电图(EEG)轻松捕捉的著名神经生理标志物是所谓的P300:在相关刺激后约300毫秒出现的正向信号偏转。无论感觉输入的类型如何,当目标刺激在一系列干扰刺激中很少见时,这种大脑反应尤为显著。因此,它已被提出并广泛研究,作为直接脑机通信的一种可能特征。基于这一原理的最先进的非侵入性脑机接口应用是P300拼写器。然而,这种应用是否对任何患者群体都有相关性仍存在争议。在最近的一系列理论和实证研究中,我们一直在使用这种基于P300的范式来提高非侵入性脑机接口的性能。本文总结了所提出的改进措施和取得的结果。重要的是,这些改进措施可以推广到许多种脑机接口,而不仅仅是这种特定应用。事实上,它们涉及闭环脑机接口的大多数关键组件,即:通过尝试自动检测和纠正错误来提高系统的准确性;通过赋予计算机自适应行为来优化其速度-准确性权衡;还包括简化硬件和设置时间,以便在患者中进行常规使用。我们的结果强调了闭环交互以及用户与机器之间随之而来的共同适应在可能情况下的重要性。我们的大多数评估是在健康受试者中进行的。我们最后展望了临床应用前景。