Wolpaw Jonathan R
Laboratory of Neural Injury and Repair, Wadsworth Center, New York State Department of Health, Albany, NY 12201-0509, USA.
J Mot Behav. 2010 Nov;42(6):351-3. doi: 10.1080/00222895.2010.526471.
Brain-computer interfaces (BCIs) could provide important new communication and control options for people with severe motor disabilities. Most BCI research to date has been based on 4 assumptions that: (a) intended actions are fully represented in the cerebral cortex; (b) neuronal action potentials can provide the best picture of an intended action; (c) the best BCI is one that records action potentials and decodes them; and (d) ongoing mutual adaptation by the BCI user and the BCI system is not very important. In reality, none of these assumptions is presently defensible. Intended actions are the products of many areas, from the cortex to the spinal cord, and the contributions of each area change continually as the CNS adapts to optimize performance. BCIs must track and guide these adaptations if they are to achieve and maintain good performance. Furthermore, it is not yet clear which category of brain signals will prove most effective for BCI applications. In human studies to date, low-resolution electroencephalography-based BCIs perform as well as high-resolution cortical neuron-based BCIs. In sum, BCIs allow their users to develop new skills in which the users control brain signals rather than muscles. Thus, the central task of BCI research is to determine which brain signals users can best control, to maximize that control, and to translate it accurately and reliably into actions that accomplish the users' intentions.
脑机接口(BCIs)可以为严重运动障碍患者提供重要的新通信和控制选项。迄今为止,大多数脑机接口研究都基于4个假设:(a)预期动作在大脑皮层中得到充分体现;(b)神经元动作电位能够提供预期动作的最佳图景;(c)最佳的脑机接口是记录动作电位并对其进行解码的接口;(d)脑机接口用户与脑机接口系统之间持续的相互适应不是很重要。实际上,目前这些假设中没有一个是站得住脚的。预期动作是从大脑皮层到脊髓等许多区域的产物,并且随着中枢神经系统(CNS)为优化性能而进行适应,每个区域的贡献会不断变化。如果脑机接口要实现并保持良好性能,就必须跟踪并引导这些适应过程。此外,目前尚不清楚哪类脑信号对脑机接口应用最为有效。在迄今为止的人体研究中,基于低分辨率脑电图的脑机接口与基于高分辨率皮层神经元的脑机接口表现相当。总之,脑机接口使用户能够开发新技能,即用户控制脑信号而非肌肉。因此,脑机接口研究的核心任务是确定用户能够最佳控制的脑信号,最大化这种控制,并将其准确可靠地转化为实现用户意图的动作。