Zhang Yongxu, Mitelut Catalin, Arpin David J, Vaillancourt David, Murphy Timothy, Saxena Shreya
IEEE Trans Neural Syst Rehabil Eng. 2025;33:2638-2649. doi: 10.1109/TNSRE.2025.3586175.
Shifts in data distribution across time can strongly affect early classification of time-series data. When decoding behavior from neural activity, early detection of behavior may help in devising corrective neural stimulation before the onset of behavior. Recurrent neural networks are common models for sequence data. However, standard recurrent neural networks are not able to handle data with temporal distributional shifts to guarantee robust classification across time. To enable the network to utilize all temporal features of the neural input data, and to enhance the memory of recurrent neural networks, this paper proposes a novel approach: recurrent neural networks with time-varying weights, here termed Time-varying recurrent neural networks. These models are able to not only predict the class of the time-sequence correctly, but also lead to accurate classification earlier in the sequence than standard recurrent neural networks, while also stabilizing gradient dynamics. This paper focuses on early sequential classification of spatially distributed neural activity across time using Time-varying recurrent neural networks applied to a variety of neural data from mice and humans, as subjects perform motor tasks. Time-varying recurrent neural networks detect self-initiated lever-pull behavior up to 6 seconds before behavior onset-3 seconds earlier than standard recurrent neural networks. Finally, this paper explored the contribution of different brain regions on behavior classification using SHapley Additive exPlanation value, and found that the somatosensory and premotor regions play a large role in behavioral classification.
数据分布随时间的变化会强烈影响时间序列数据的早期分类。从神经活动中解码行为时,行为的早期检测可能有助于在行为开始之前设计纠正性神经刺激。循环神经网络是序列数据的常用模型。然而,标准循环神经网络无法处理具有时间分布变化的数据,以确保跨时间的稳健分类。为了使网络能够利用神经输入数据的所有时间特征,并增强循环神经网络的记忆,本文提出了一种新方法:具有时变权重的循环神经网络,这里称为时变循环神经网络。这些模型不仅能够正确预测时间序列的类别,而且与标准循环神经网络相比,能够在序列中更早地实现准确分类,同时还能稳定梯度动态。本文重点研究了时变循环神经网络在小鼠和人类执行运动任务时,对跨时间空间分布的神经活动进行早期序列分类的应用。时变循环神经网络能够在行为开始前6秒检测到自我发起的杠杆拉动行为,比标准循环神经网络提前3秒。最后,本文使用夏普利值探索了不同脑区对行为分类的贡献,发现体感区和运动前区在行为分类中起很大作用。