利用瞬态效应特异性神经反应对脑机接口进行门解码。

Brian M Dekleva, Jennifer L Collinger
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引用次数: 0

摘要

现实世界中连续控制设备的脑机接口(BCI)的实现应该理想地依赖于完全异步解码方法。也就是说,解码算法应该通过从实时神经活动中估计用户的预期动作来不断更新其输出,而不需要与外部线索进行任何时间对齐。这种开放式的时间灵活性对于实现自然和直观的控制是必要的,但也提出了一个挑战:我们如何知道什么时候对任何东西进行解码是合适的?运动皮层的活动是动态的,并随着许多不同类型的动作(近端手臂控制、手部控制、言语等)而调节,这些动作可能相互干扰。此外,任何给定动作类型的“可解码性”(神经活动中存在的相关信息的数量)会根据运动意图和内在网络动态而随时间波动。在这里,我们提出了一种简化连续解码问题的方法,该方法使用瞬态,末端效应器特定的神经反应来识别效应器参与的时期。例如,我们已经观察到与手相关的动作开始和抵消时独特的神经特征。只有在检测到接触时间后,我们才能解码特定的动作特征(例如手指运动或力量)。通过使用这种门控方法,解码模型可以更简单(由于局部线性),并且对交叉效应干扰(如联合伸手和抓握动作)的干扰不太敏感。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using transient, effector-specific neural responses to gate decoding for brain-computer interfaces.

Objective.Real-world implementation of brain-computer interfaces (BCIs) for continuous control of devices should ideally rely on fully asynchronous decoding approaches. That is, the decoding algorithm should continuously update its output by estimating the user's intended actions from real-time neural activity, without the need for any temporal alignment to an external cue. This kind of open-ended temporal flexibility is necessary to achieve naturalistic and intuitive control. However, the relation between cortical activity and behavior is not stationary: neural responses that appear related to a certain aspect of behavior (e.g. grasp force) in one context will exhibit a relationship to something else in another context (e.g. reach speed). This presents a challenge for generalizable decoding, since the applicability of a decoder for a given parameter changes over time.Approach.We developed a method to simplify the problem of continuous decoding that uses transient, end effector-specific neural responses to identify periods of relevant effector engagement. Specifically, we use transient responses in the population response observed at the onset and offset of all hand-related actions to signal the applicability of hand-related feature decoders (e.g. digit movement or force). By using this transient-based gating approach, specific feature decoding models can be simpler (owing to local linearities) and are less sensitive to interference from cross-effector interference such as combined reaching and grasping actions.Main results.The transient-based decoding approach enabled high-quality online decoding of grasp force and individual finger control in multiple behavioral paradigms. The benefits of the gated approach are most evident in tasks that require both hand and arm control, for which standard continuous decoding approaches exhibit high output variability.Significance.The approach proposed here addresses the challenge of decoder generalization across contexts. By limiting decoding to identified periods of effector engagement, this approach can support reliable BCI control in real-world applications.Clinical Trial ID: NCT01894802.

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