Multimodal BCIs: Target Detection, Multidimensional Control, and Awareness Evaluation in Patients With Disorder of Consciousness

Proceedings of the IEEE(2016)

引用 118|浏览109
暂无评分
摘要
Despite rapid advances in the study of brain–computer interfaces (BCIs) in recent decades, two fundamental challenges, namely, improvement of target detection performance and multidimensional control, continue to be major barriers for further development and applications. In this paper, we review the recent progress in multimodal BCIs (also called hybrid BCIs), which may provide potential solutions for addressing these challenges. In particular, improved target detection can be achieved by developing multimodal BCIs that utilize multiple brain patterns, multimodal signals, or multisensory stimuli. Furthermore, multidimensional object control can be accomplished by generating multiple control signals from different brain patterns or signal modalities. Here, we highlight several representative multimodal BCI systems by analyzing their paradigm designs, detection/control methods, and experimental results. To demonstrate their practicality, we report several initial clinical applications of these multimodal BCI systems, including awareness evaluation/detection in patients with disorder of consciousness (DOC). As an evolving research area, the study of multimodal BCIs is increasingly requiring more synergetic efforts from multiple disciplines for the exploration of the underlying brain mechanisms, the design of new effective paradigms and means of neurofeedback, and the expansion of the clinical applications of these systems.
更多
查看译文
关键词
brain-computer interfaces,electroencephalography,medical control systems,medical disorders,medical signal detection,medical signal processing,BCI control method,BCI detection method,BCI paradigm design,awareness evaluation,brain-computer interfaces,disorder of consciousness,hybrid BCI,multidimensional control,multidimensional object control,multimodal BCI,multimodal signals,multiple brain patterns,multiple control signals,multisensory stimuli,neurofeedback,target detection performance,Audiovisual BCI,awareness evaluation,brain switch,cursor control,multimodal brain–computer interface (BCI),multimodal brain???computer interface (BCI)
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要