Towards a versatile brain-machine interface: Neural decoding of multiple behavioral variables and delivering sensory feedback versatile brain-machine interface

M. Lebedev
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引用次数: 3

Abstract

While brain-machine interfaces (BMIs) strive to provide neural prosthetic solutions to people with sensory, motor and cognitive disabilities, they have been typically tested in strictly controlled laboratory settings. Making BMIs versatile and applicable to real life situations is a significant challenge. For example, in real life we can flexibly and independently control multiple behavioral variables, such as programming motor goals, orienting attention in space, fixating objects with the eyes, and remembering relevant information. Several neurophysiological experiments, conducted in monkeys, manipulated multiple behavioral variables in a controlled way; these multiple variables were decoded from the activity of same neuronal ensembles. Additionally, in the other monkey experiments, multiple motor variables were extracted from cortical ensembles in real time, such as controlling two virtual arms using a BMI. The next improvement has been achieved using brain-machine-brain interfaces (BMBIs) that simultaneously extract motor intentions from brain activity and generate artificial sensations using intracortical microstimulation (ICMS). For example, a BMBI can perform active tactile exploration of virtual objects. Such versatile BMIs bring us closer to the development of clinical neural prostheses for restoration and rehabilitation of neural function.
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迈向多功能脑机接口:多种行为变量的神经解码和传递感官反馈的多功能脑机接口
虽然脑机接口(bmi)努力为有感觉、运动和认知障碍的人提供神经假肢解决方案,但它们通常在严格控制的实验室环境中进行测试。使bmi具有通用性并适用于现实生活是一项重大挑战。例如,在现实生活中,我们可以灵活独立地控制多个行为变量,如编程运动目标、空间注意力定向、眼睛注视物体、记忆相关信息等。几个在猴子身上进行的神经生理学实验,以一种可控的方式操纵了多个行为变量;这些多重变量是从相同神经元群的活动中解码出来的。此外,在其他猴子实验中,从皮质集合中实时提取多个运动变量,例如使用BMI控制两个虚拟手臂。下一个改进是通过脑机脑接口(BMBIs)实现的,该接口可以同时从大脑活动中提取运动意图,并通过皮质内微刺激(ICMS)产生人工感觉。例如,BMBI可以对虚拟物体进行主动触觉探索。这种多功能的bmi指数使我们更接近于临床神经假体的发展,用于神经功能的恢复和康复。
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