Brain Feature Extraction With an Artifact-Tolerant Multiplexed Time-Encoding Neural Frontend for True Real-Time Closed-Loop Neuromodulation

Marco Francesco Carlino;Georges Gielen
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Abstract

Closed-loop neuromodulation is emerging as a more effective and targeted solution for the treatment of neurological symptoms compared to traditional open-loop stimulation. The majority of the present designs lack the ability to continuously record brain activity during electrical stimulation; hence they cannot fully monitor the treatment's effectiveness. This is due to the large stimulation artifacts that can saturate the sensitive readout circuits. To overcome this challenge, this work presents a rapid-artifact-recovery time-multiplexed neural readout frontend in combination with backend linear interpolation to reconstruct the artifact-corrupted local field potentials' (LFP) features. Our hybrid technique is an alternative approach to avoid power-hungry large-dynamic-range readout architectures or large and complex artifact template subtraction circuits. We discuss the design and measurements of a prototype implementation of the proposed readout frontend in 180-nm CMOS. It combines time multiplexing and time-domain conversion in a novel 13-bit incremental ADC, requiring only 0.0018 mm 2 /channel of readout area despite the large 180-nm CMOS process used, while consuming only 4.51 $\mu$ W/channel. This is the smallest reported area for stimulation-voltage-compatible technologies (i.e. $\ge$ 65 nm). The frontend also yields a best-in-class peak total harmonic distortion of −72.6 dB @2.5-mVpp input, thanks to its implicit DAC mismatch-error shaping property. We employ the chip to measure brain LFP signals corrupted with artifacts, then perform linear interpolation and feature extraction on the measured signals and evaluate the reconstruction quality, using a set of sixteen commonly used features and three stimulation scenarios. The results show relative accuracies above 95% with respect to the situation without artifacts. This work is an ideal candidate for integration in high-channel-count true closed-loop neuromodulation systems.
利用容错多路复用时间编码神经前端提取大脑特征,实现真正的实时闭环神经调制。
与传统的开环刺激疗法相比,闭环神经调控疗法正在成为一种更有效、更有针对性的神经症状治疗方案。目前的大多数设计都无法在电刺激过程中持续记录大脑活动,因此无法全面监测治疗效果。这是由于大量的刺激伪影会使灵敏的读出电路饱和。为了克服这一挑战,这项研究提出了一种快速伪影恢复时间多路复用神经读出前端,并结合后端线性插值来重建被伪影破坏的局部场电位(LFP)特征。我们的混合技术是避免高功耗大动态范围读出架构或大型复杂伪影模板减法电路的另一种方法。我们讨论了在 180-nm CMOS 上实现的读出前端原型的设计和测量。它在一个新颖的 13 位增量 ADC 中结合了时间多路复用和时域转换,尽管使用的是大型 180 纳米 CMOS 工艺,但只需要 0.0018 平方毫米/通道的读出面积,而功耗仅为 4.51 微瓦/通道。据报道,这是刺激电压兼容技术(即≥ 65 nm)中最小的面积。得益于其隐含的 DAC 失配误差整形特性,该前端在 2.5 mVpp 输入时的总谐波失真峰值达到了同类最佳的 -72.6 dB。我们使用该芯片测量被伪影干扰的大脑 LFP 信号,然后对测量信号进行线性插值和特征提取,并使用一组 16 个常用特征和三种刺激场景评估重建质量。结果显示,与无伪影情况相比,相对准确率超过 95%。这项工作是集成到高通道数真正闭环神经调控系统的理想候选方案。
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