Brain-Computer Interfacing and Neural Engineering Laboratory, School of Computer Science and Electronic Engineering, University of Essex, Colchester, United Kingdom.
J Neural Eng. 2021 Apr 27;18(4). doi: 10.1088/1741-2552/abf2e5.
Semantic decoding refers to the identification of semantic concepts from recordings of an individual's brain activity. It has been previously reported in functional magnetic resonance imaging and electroencephalography. We investigate whether semantic decoding is possible with functional near-infrared spectroscopy (fNIRS). Specifically, we attempt to differentiate between the semantic categories of animals and tools. We also identify suitable mental tasks for potential brain-computer interface (BCI) applications.We explore the feasibility of a silent naming task, for the first time in fNIRS, and propose three novel intuitive mental tasks based on imagining concepts using three sensory modalities: visual, auditory, and tactile. Participants are asked to visualize an object in their minds, imagine the sounds made by the object, and imagine the feeling of touching the object. A general linear model is used to extract hemodynamic responses that are then classified via logistic regression in a univariate and multivariate manner.We successfully classify all tasks with mean accuracies of 76.2% for the silent naming task, 80.9% for the visual imagery task, 72.8% for the auditory imagery task, and 70.4% for the tactile imagery task. Furthermore, we show that consistent neural representations of semantic categories exist by applying classifiers across tasks.These findings show that semantic decoding is possible in fNIRS. The study is the first step toward the use of semantic decoding for intuitive BCI applications for communication.
语义解码是指从个体大脑活动的记录中识别语义概念。以前在功能磁共振成像和脑电图中已有报道。我们研究了功能近红外光谱(fNIRS)是否可以进行语义解码。具体来说,我们试图区分动物和工具的语义类别。我们还确定了适合潜在脑机接口(BCI)应用的心理任务。我们首次在 fNIRS 中探索了静默命名任务的可行性,并提出了三种基于使用三种感觉模式(视觉、听觉和触觉)想象概念的新颖直观心理任务:想象、听觉和触觉。要求参与者在脑海中想象一个物体,想象物体发出的声音,并想象触摸物体的感觉。使用广义线性模型提取血液动力学响应,然后通过逻辑回归以单变量和多变量方式进行分类。我们成功地对所有任务进行了分类,静默命名任务的平均准确率为 76.2%,视觉想象任务为 80.9%,听觉想象任务为 72.8%,触觉想象任务为 70.4%。此外,我们通过在任务之间应用分类器,证明了语义类别存在一致的神经表示。这些发现表明,fNIRS 中可以进行语义解码。该研究是朝着使用语义解码进行直观 BCI 应用以实现通信迈出的第一步。