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无核内核机:用于认知神经假肢的尖峰序列变换建模。

Binless Kernel Machine: Modeling Spike Train Transformation for Cognitive Neural Prostheses.

机构信息

College of Computer Science, Zhejiang University, Hangzhou 310027, P.R.C., and Department of Electronic and Computer Engineering, Hong Kong University of Science and Technology, Kowloon, Hong Kong SAR 99077, P.R.C.

College of Computer Science, Zhejiang University, Hangzhou 310027, P.R.C.

出版信息

Neural Comput. 2020 Oct;32(10):1863-1900. doi: 10.1162/neco_a_01306. Epub 2020 Aug 14.

Abstract

Modeling spike train transformation among brain regions helps in designing a cognitive neural prosthesis that restores lost cognitive functions. Various methods analyze the nonlinear dynamic spike train transformation between two cortical areas with low computational eficiency. The application of a real-time neural prosthesis requires computational eficiency, performance stability, and better interpretation of the neural firing patterns that modulate target spike generation. We propose the binless kernel machine in the point-process framework to describe nonlinear dynamic spike train transformations. Our approach embeds the binless kernel to eficiently capture the feedforward dynamics of spike trains and maps the input spike timings into reproducing kernel Hilbert space (RKHS). An inhomogeneous Bernoulli process is designed to combine with a kernel logistic regression that operates on the binless kernel to generate an output spike train as a point process. Weights of the proposed model are estimated by maximizing the log likelihood of output spike trains in RKHS, which allows a global-optimal solution. To reduce computational complexity, we design a streaming-based clustering algorithm to extract typical and important spike train features. The cluster centers and their weights enable the visualization of the important input spike train patterns that motivate or inhibit output neuron firing. We test the proposed model on both synthetic data and real spike train data recorded from the dorsal premotor cortex and the primary motor cortex of a monkey performing a center-out task. Performances are evaluated by discrete-time rescaling Kolmogorov-Smirnov tests. Our model outperforms the existing methods with higher stability regardless of weight initialization and demonstrates higher eficiency in analyzing neural patterns from spike timing with less historical input (50%). Meanwhile, the typical spike train patterns selected according to weights are validated to encode output spike from the spike train of single-input neuron and the interaction of two input neurons.

摘要

对大脑区域之间的尖峰时间序列转换进行建模有助于设计一种认知神经假体,从而恢复失去的认知功能。各种方法分析两个皮质区域之间具有低计算效率的非线性动态尖峰时间序列转换。实时神经假体的应用需要计算效率、性能稳定性和更好地解释调节目标尖峰产生的神经发射模式。我们在点过程框架中提出了无 bin 核机器,以描述非线性动态尖峰时间序列转换。我们的方法嵌入了无 bin 核,以有效地捕获尖峰序列的前馈动力学,并将输入尖峰时间映射到再生核希尔伯特空间(RKHS)。设计了一个非齐次伯努利过程,与在无 bin 核上操作的核逻辑回归相结合,以生成作为点过程的输出尖峰序列。通过最大化 RKHS 中输出尖峰序列的对数似然来估计模型的权重,这允许全局最优解。为了降低计算复杂度,我们设计了一种基于流的聚类算法来提取典型和重要的尖峰序列特征。聚类中心及其权重使能够可视化激励或抑制输出神经元发射的重要输入尖峰序列模式。我们在合成数据和猴子执行中心到外围任务时从背侧运动前皮质和初级运动皮质记录的真实尖峰时间序列数据上测试了所提出的模型。通过离散时间重缩放柯尔莫哥洛夫-斯米尔诺夫检验来评估性能。我们的模型表现优于现有的方法,具有更高的稳定性,无论权重初始化如何,并在分析具有较少历史输入(50%)的神经模式时表现出更高的效率。同时,根据权重选择的典型尖峰序列模式被验证为从单输入神经元的尖峰时间序列和两个输入神经元的相互作用中编码输出尖峰。

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