An Efficient Brain-Switch for Asynchronous Brain-Computer Interfaces

Daniel Valencia;Patrick P. Mercier;Amir Alimohammad
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Abstract

Intracortical brain computer interfaces (iBCIs) utilizing extracellular recordings mainly employ in vivo signal processing application-specific integrated circuits (ASICs) to detect action potentials (spikes). Conventionally, “brain-switches” based on spiking activity have been employed to realize asynchronous (self-paced) iBCIs, estimating when the user involves in the underlying BCI task. Several studies have demonstrated that local field potentials (LFPs) can effectively replace action potentials, drastically reducing the power consumption and processing requirements of in vivo ASICs. This article presents the first LFP-based brain-switch design and implementation using gated recurrent neural networks (RNNs). Compared to the previously reported brain-switches, our design requires no exhaustive learning phase for the estimation of optimal recording channels or frequency band selection, making it more applicable to practical asynchronous iBCIs. The synthesized ASIC of the designed in vivo LFP-based feature extraction unit, in a standard 180-nm CMOS process, occupies only 0.09 mm${}^{2}$ of silicon area, and the post place-and-route synthesis results indicate that it consumes 91.87 nW of power while operating at 2 kHz. Compared to the previously published ASICs, the proposed LFP-based brain-switch consumes the least power for in vivo digital signal processing and achieves comparable state estimation performance to that of spike-based brain-switches.
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用于异步脑机接口的高效脑开关
利用细胞外记录的皮质内脑机接口(ibci)主要采用体内信号处理专用集成电路(asic)来检测动作电位(尖峰)。传统上,基于尖峰活动的“大脑开关”已被用于实现异步(自定节奏)脑机接口,估计用户何时参与底层脑机接口任务。一些研究表明,局部场电位(LFPs)可以有效地取代动作电位,大大降低体内asic的功耗和处理要求。本文介绍了第一个基于lfp的脑开关设计和实现,使用门控递归神经网络(rnn)。与先前报道的脑开关相比,我们的设计不需要详尽的学习阶段来估计最佳记录通道或频带选择,使其更适用于实际的异步ibci。所设计的基于lfp的活体特征提取单元的合成ASIC,在标准的180 nm CMOS工艺下,仅占用0.09 mm${}^{2}$的硅面积,后置布线合成结果表明,在2 kHz工作时,其功耗为91.87 nW。与先前发表的asic相比,本文提出的基于lfp的脑开关在体内数字信号处理中消耗的功率最小,并且达到了与基于尖峰的脑开关相当的状态估计性能。
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