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首页> 外文期刊>Current Opinion in Neurobiology >Towards neural co-processors for the brain: combining decoding and encoding in brain-computer interfaces
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Towards neural co-processors for the brain: combining decoding and encoding in brain-computer interfaces

机译:对大脑的神经协处理器:脑 - 计算机接口中的解码和编码组合

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The field of brain-computer interfaces is poised to advance from the traditional goal of controlling prosthetic devices using brain signals to combining neural decoding and encoding within a single neuroprosthetic device. Such a device acts as a "co-processor" for the brain, with applications ranging from inducing Hebbian plasticity for rehabilitation after brain injury to reanimating paralyzed limbs and enhancing memory. We review recent progress in simultaneous decoding and encoding for closed-loop control and plasticity induction. To address the challenge of multi-channel decoding and encoding, we introduce a unifying framework for developing brain co-processors based on artificial neural networks and deep learning. These 'neural co-processors' can be used to jointly optimize cost functions with the nervous system to achieve desired behaviors ranging from targeted neuro-rehabilitation to augmentation of brain function.
机译:脑电脑接口的领域预先从使用脑信号控制假肢装置的传统目标,以将神经解码和编码组合在单个神经调节装置内。 这种装置用作大脑的“协处理器”,其中应用范围从脑损伤后诱导Hebbian可塑性进行恢复以恢复瘫痪的四肢和增强记忆。 我们审查了闭环控制和塑性诱导同时解码和编码的最近进展。 为解决多通道解码和编码的挑战,我们向基于人工神经网络和深度学习开发大脑共处理器的统一框架。 这些“神经协处理器”可用于共同优化具有神经系统的成本功能,以实现从有针对性的神经康复到增强脑功能的所需行为。

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