Schalk G, Brunner P, Gerhardt L A, Bischof H, Wolpaw J R
Brain-Computer Interface Research and Development Program, Wadsworth Center, New York State Department of Health, Albany, NY, USA.
J Neurosci Methods. 2008 Jan 15;167(1):51-62. doi: 10.1016/j.jneumeth.2007.08.010. Epub 2007 Aug 21.
Many studies over the past two decades have shown that people can use brain signals to convey their intent to a computer through brain-computer interfaces (BCIs). These devices operate by recording signals from the brain and translating these signals into device commands. They can be used by people who are severely paralyzed to communicate without any use of muscle activity. One of the major impediments in translating this novel technology into clinical applications is the current requirement for preliminary analyses to identify the brain signal features best suited for communication. This paper introduces and validates signal detection, which does not require such analysis procedures, as a new concept in BCI signal processing. This detection concept is realized with Gaussian mixture models (GMMs) that are used to model resting brain activity so that any change in relevant brain signals can be detected. It is implemented in a package called SIGFRIED (SIGnal modeling For Real-time Identification and Event Detection). The results indicate that SIGFRIED produces results that are within the range of those achieved using a common analysis strategy that requires preliminary identification of signal features. They indicate that such laborious analysis procedures could be replaced by merely recording brain signals during rest. In summary, this paper demonstrates how SIGFRIED could be used to overcome one of the present impediments to translation of laboratory BCI demonstrations into clinically practical applications.
过去二十年来的许多研究表明,人们可以通过脑机接口(BCI)利用脑信号向计算机传达自己的意图。这些设备通过记录大脑信号并将这些信号转化为设备指令来运行。它们可供严重瘫痪者使用,无需任何肌肉活动就能进行交流。将这项新技术转化为临床应用的主要障碍之一是目前需要进行初步分析,以识别最适合交流的脑信号特征。本文介绍并验证了信号检测,它作为BCI信号处理中的一个新概念,不需要此类分析程序。这种检测概念通过高斯混合模型(GMM)实现,该模型用于对静息脑活动进行建模,以便能够检测相关脑信号的任何变化。它在一个名为SIGFRIED(用于实时识别和事件检测的信号建模)的软件包中实现。结果表明,SIGFRIED产生的结果与使用需要初步识别信号特征的常见分析策略所取得的结果范围相当。结果表明,这种费力的分析程序可以通过仅在静息状态下记录脑信号来取代。总之,本文展示了SIGFRIED如何能够用于克服目前将实验室BCI演示转化为临床实际应用的障碍之一。