An Event-based Neural Compressive Telemetry with >11× Loss-less Data Reduction for High-bandwidth Intracortical Brain Computer Interfaces.

Yuming He, Stan van der Ven, Hua-Peng Liaw, Chengyao Shi, Pietro Russo, Marios Gourdouparis, Mario Konijnenburg, Stefano Traferro, Martijn Timmermans, Carolina Mora Lopez, Pieter Harpe, Eugenio Cantatore, Elisabetta Chicca, Yao-Hong Liu
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Abstract

Intracortical brain-computer interfaces offer superior spatial and temporal resolutions, but face challenges as the increasing number of recording channels introduces high amounts of data to be transferred. This requires power-hungry data serialization and telemetry, leading to potential tissue damage risks. To address this challenge, this paper introduces an event-based neural compressive telemetry (NCT) consisting of 8 channel-rotating Δ-ADCs, an event-driven serializer supporting a proposed ternary address event representation protocol, and an event-based LVDS driver. Leveraging a high sparsity of extracellular spikes and high spatial correlation of the high-density recordings, the proposed NCT achieves a compression ratio of >11.4×, while consumes only 1 μW per channel, which is 127× more efficient than state of the art. The NCT well preserves the spike waveform fidelity, and has a low normalized RMS error <23% even with a spike amplitude down to only 31 μV.

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一种基于事件的神经压缩遥测技术,可为高带宽皮层内脑计算机接口提供大于 11 倍的无损数据减少。
皮层内脑机接口具有卓越的空间和时间分辨率,但也面临着挑战,因为记录通道的数量不断增加,需要传输大量数据。这需要耗电的数据串行化和遥测,导致潜在的组织损伤风险。为应对这一挑战,本文介绍了基于事件的神经压缩遥测技术(NCT),该技术由 8 个旋转通道 Δ-ADC、支持拟议三元地址事件表示协议的事件驱动串行器和基于事件的 LVDS 驱动器组成。利用细胞外尖峰的高稀疏性和高密度记录的高空间相关性,拟议的 NCT 实现了大于 11.4 倍的压缩比,而每个通道的功耗仅为 1 μW,比现有技术的效率高 127 倍。NCT 很好地保留了尖峰波形的保真度,归一化均方根误差也很低。
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