Lührs Michael, Sorger Bettina, Goebel Rainer, Esposito Fabrizio
Department of Cognitive Neuroscience, Maastricht University, Maastricht, The Netherlands. Maastricht Brain Imaging Center, 6229 ER Maastricht, The Netherlands.
J Neural Eng. 2017 Feb;14(1):016004. doi: 10.1088/1741-2560/14/1/016004. Epub 2016 Nov 30.
Brain-computer interfaces (BCIs) implemented with real-time functional magnetic resonance imaging (rt-fMRI) use fMRI time-courses from predefined regions of interest (ROIs). To reach best performances, localizer experiments and on-site expert supervision are required for ROI definition. To automate this step, we developed two unsupervised computational techniques based on the general linear model (GLM) and independent component analysis (ICA) of rt-fMRI data, and compared their performances on a communication BCI. Approach. 3 T fMRI data of six volunteers were re-analyzed in simulated real-time. During a localizer run, participants performed three mental tasks following visual cues. During two communication runs, a letter-spelling display guided the subjects to freely encode letters by performing one of the mental tasks with a specific timing. GLM- and ICA-based procedures were used to decode each letter, respectively using compact ROIs and whole-brain distributed spatio-temporal patterns of fMRI activity, automatically defined from subject-specific or group-level maps.
Letter-decoding performances were comparable to supervised methods. In combination with a similarity-based criterion, GLM- and ICA-based approaches successfully decoded more than 80% (average) of the letters. Subject-specific maps yielded optimal performances. Significance. Automated solutions for ROI selection may help accelerating the translation of rt-fMRI BCIs from research to clinical applications.
采用实时功能磁共振成像(rt-fMRI)实现的脑机接口(BCI)利用来自预定义感兴趣区域(ROI)的fMRI时间进程。为了达到最佳性能,ROI定义需要定位实验和现场专家监督。为了使这一步骤自动化,我们基于rt-fMRI数据的一般线性模型(GLM)和独立成分分析(ICA)开发了两种无监督计算技术,并在通信BCI上比较了它们的性能。方法:对六名志愿者的3T fMRI数据进行了模拟实时重新分析。在定位运行期间,参与者根据视觉提示执行三项心理任务。在两次通信运行期间,字母拼写显示引导受试者通过在特定时间执行一项心理任务来自由编码字母。基于GLM和ICA的程序分别用于解码每个字母,分别使用紧凑ROI和fMRI活动的全脑分布式时空模式,这些模式由特定受试者或组水平的图谱自动定义。
字母解码性能与监督方法相当。结合基于相似性的标准,基于GLM和ICA的方法成功解码了超过80%(平均)的字母。特定受试者的图谱产生了最佳性能。意义:用于ROI选择的自动化解决方案可能有助于加速rt-fMRI BCI从研究到临床应用的转化。