A learning-based approach to artificial sensory feedback

Philip N. Sabes, Maria C. Dadarlat, J. E. O’Doherty
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引用次数: 4

Abstract

The planning and control of even simple movements, such as reaching for an object, rely on somatosensory feedback of the state of the limb. Such feedback will be equally important for naturalistic control of neuro-prosthetic devices. For this reason, there has been considerable interest in the development of systems for artificial somatosensory feedback, in particular using electrical microstimulation of the brain. Much of this work has focused on creating “biomimetic” patterns of neural activation, i.e., trying replicate natural sensory-drive activity, however the challenges for this approach remain significant. We have developed a complementary approach, focusing instead on the brain's natural ability to to learn. In particular, we learn to combine somatosensory and visual feedback of the limb in a statistically optimal fashion and to recalibrate the two senses when they come out of alignment. Moreover, computational work from our lab shows that these learning processes can be achieved by simple algorithms, driven only by spatiotemporal correlations between the two sensory signals. We have tested this idea in a demonstration of a novel, learning-based approach to artificial motor feedback. Animals were trained to perform a reaching task under the guidance of visual feedback. They were then exposed to a novel, artificial feedback signal in the form of a non-biomimetic pattern of multielectrode intracortical microstimulation (ICMS). After training with correlated visual and ICMS feedback, the animals were able to perform precise movements with the artificial signal alone. Furthermore, they combine the ICMS signal with vision in a statistically optimal fashion, as would be done for two natural stimuli. This result serves as a proof-of-concept for a learning-based approach to artificial feedback with brain-machine interfaces.
基于学习的人工感官反馈方法
即使是简单动作的计划和控制,比如伸手去拿东西,也依赖于肢体状态的体感反馈。这种反馈对于神经假体装置的自然控制同样重要。由于这个原因,人们对人工体感反馈系统的发展非常感兴趣,特别是使用脑电微刺激。这方面的工作主要集中在创造神经激活的“仿生”模式,即试图复制自然的感觉驱动活动,然而这种方法的挑战仍然很大。我们已经开发了一种互补的方法,转而关注大脑的自然学习能力。特别是,我们学会以统计上最优的方式结合肢体的体感和视觉反馈,并在两种感觉不一致时重新校准。此外,我们实验室的计算工作表明,这些学习过程可以通过简单的算法实现,仅由两个感官信号之间的时空相关性驱动。我们已经在一种新颖的、基于学习的人工运动反馈方法的演示中测试了这个想法。研究人员训练动物在视觉反馈的指导下完成伸手的任务。然后,他们暴露于一种新颖的人工反馈信号,其形式是多电极皮质微刺激(ICMS)的非仿生模式。经过相关视觉和ICMS反馈的训练后,动物能够在单独的人工信号下进行精确的运动。此外,他们以统计上最优的方式将ICMS信号与视觉结合起来,就像对两种自然刺激所做的那样。这一结果为基于学习的脑机接口人工反馈方法提供了概念验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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