IEEE Trans Biomed Circuits Syst. 2024 Jun;18(3):691-701. doi: 10.1109/TBCAS.2024.3359994. Epub 2024 May 28.
Conventional in vivo neural signal processing involves extracting spiking activity within the recorded signals from an ensemble of neurons and transmitting only spike counts over an adequate interval. However, for brain-computer interface (BCI) applications utilizing continuous local field potentials (LFPs) for cognitive decoding, the volume of neural data to be transmitted to a computer imposes relatively high data rate requirements. This is particularly true for BCIs employing high-density intracortical recordings with hundreds or thousands of electrodes. This article introduces the first autoencoder-based compression digital circuit for the efficient transmission of LFP neural signals. Various algorithmic and architectural-level optimizations are implemented to significantly reduce the computational complexity and memory requirements of the designed in vivo compression circuit. This circuit employs an autoencoder-based neural network, providing a robust signal reconstruction. The application-specific integrated circuit (ASIC) of the in vivo compression logic occupies the smallest silicon area and consumes the lowest power among the reported state-of-the-art compression ASICs. Additionally, it offers a higher compression rate and a superior signal-to-noise and distortion ratio.
传统的体内神经信号处理包括从神经元集合中提取记录信号中的尖峰活动,并仅在足够的时间间隔内传输尖峰计数。然而,对于利用连续局部场电位 (LFPs) 进行认知解码的脑机接口 (BCI) 应用,需要传输到计算机的神经数据量会带来相对较高的数据速率要求。对于使用数百或数千个电极的高密度皮层内记录的 BCI 来说尤其如此。本文介绍了第一个基于自动编码器的压缩数字电路,用于高效传输 LFPs 神经信号。实现了各种算法和体系结构级别的优化,以显著降低设计的体内压缩电路的计算复杂性和内存需求。该电路采用基于自动编码器的神经网络,提供稳健的信号重建。与报告的最先进的压缩 ASIC 相比,体内压缩逻辑的专用集成电路 (ASIC) 占据了最小的硅面积并消耗了最低的功率。此外,它还提供了更高的压缩率以及更好的信噪比和失真比。