Spike-Weighted Spiking Neural Network with Spiking Long Short-Term Memory: A Biomimetic Approach to Decoding Brain Signals

Algorithms Pub Date : 2024-04-12 DOI:10.3390/a17040156
Kyle McMillan, R. So, Camilo Libedinsky, Kai Keng Ang, Brian Premchand
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Abstract

Background. Brain–machine interfaces (BMIs) offer users the ability to directly communicate with digital devices through neural signals decoded with machine learning (ML)-based algorithms. Spiking Neural Networks (SNNs) are a type of Artificial Neural Network (ANN) that operate on neural spikes instead of continuous scalar outputs. Compared to traditional ANNs, SNNs perform fewer computations, use less memory, and mimic biological neurons better. However, SNNs only retain information for short durations, limiting their ability to capture long-term dependencies in time-variant data. Here, we propose a novel spike-weighted SNN with spiking long short-term memory (swSNN-SLSTM) for a regression problem. Spike-weighting captures neuronal firing rate instead of membrane potential, and the SLSTM layer captures long-term dependencies. Methods. We compared the performance of various ML algorithms during decoding directional movements, using a dataset of microelectrode recordings from a macaque during a directional joystick task, and also an open-source dataset. We thus quantified how swSNN-SLSTM performed compared to existing ML models: an unscented Kalman filter, LSTM-based ANN, and membrane-based SNN techniques. Result. The proposed swSNN-SLSTM outperforms both the unscented Kalman filter, the LSTM-based ANN, and the membrane based SNN technique. This shows that incorporating SLSTM can better capture long-term dependencies within neural data. Also, our proposed swSNN-SLSTM algorithm shows promise in reducing power consumption and lowering heat dissipation in implanted BMIs.
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具有尖峰长短期记忆的尖峰加权神经网络:解码大脑信号的仿生方法
背景。脑机接口(BMI)通过基于机器学习(ML)算法解码的神经信号,为用户提供与数字设备直接通信的能力。尖峰神经网络(SNN)是人工神经网络(ANN)的一种,它通过神经尖峰而非连续标量输出来运行。与传统的人工神经网络相比,SNN 的计算量更少,使用的内存更少,而且能更好地模拟生物神经元。然而,SNN 只在短时间内保留信息,限制了其捕捉时变数据中长期依赖关系的能力。在这里,我们针对回归问题提出了一种具有尖峰长短期记忆的新型尖峰加权 SNN(swSNN-SLSTM)。尖峰加权捕捉神经元发射率而不是膜电位,SLSTM 层捕捉长期依赖性。方法我们使用猕猴在定向操纵杆任务中的微电极记录数据集和一个开源数据集,比较了各种 ML 算法在解码定向运动时的性能。因此,我们量化了 swSNN-SLSTM 与现有 ML 模型(无香味卡尔曼滤波器、基于 LSTM 的 ANN 和基于膜的 SNN 技术)相比的表现。结果所提出的 swSNN-SLSTM 优于无香味卡尔曼滤波器、基于 LSTM 的 ANN 和基于膜的 SNN 技术。这表明,SLSTM 可以更好地捕捉神经数据中的长期依赖关系。此外,我们提出的 swSNN-SLSTM 算法有望降低植入式 BMI 的功耗和散热。
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