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使用复频谱特征对局部场电位进行运动目标的最小最大最优解码。

Minimax-optimal decoding of movement goals from local field potentials using complex spectral features.

机构信息

Department of Electrical and Computer Engineering, Duke University, Durham, NC, United States of America.

出版信息

J Neural Eng. 2019 Aug;16(4):046001. doi: 10.1088/1741-2552/ab1a1f. Epub 2019 Apr 16.

Abstract

OBJECTIVE

We consider the problem of predicting eye movement goals from local field potentials (LFP) recorded through a multielectrode array in the macaque prefrontal cortex. The monkey is tasked with performing memory-guided saccades to one of eight targets during which LFP activity is recorded and used to train a decoder.

APPROACH

Previous reports have mainly relied on the spectral amplitude of the LFPs as decoding feature, while neglecting the phase without proper theoretical justification. This paper formulates the problem of decoding eye movement intentions in a statistically optimal framework and uses Gaussian sequence modeling and Pinsker's theorem to generate minimax-optimal estimates of the LFP signals which are used as decoding features. The approach is shown to act as a low-pass filter and each LFP in the feature space is represented via its complex Fourier coefficients after appropriate shrinking such that higher frequency components are attenuated; this way, the phase information inherently present in the LFP signal is naturally embedded into the feature space.

MAIN RESULTS

We show that the proposed complex spectrum-based decoder achieves prediction accuracy of up to [Formula: see text] at superficial cortical depths near the surface of the prefrontal cortex; this marks a significant performance improvement over conventional power spectrum-based decoders.

SIGNIFICANCE

The presented analyses showcase the promising potential of low-pass filtered LFP signals for highly reliable neural decoding of intended motor actions.

摘要

目的

我们考虑从猕猴前额叶皮层的多电极阵列记录的局部场电位 (LFP) 中预测眼动目标的问题。猴子的任务是在执行记忆引导的扫视期间,将 LFP 活动记录并用于训练解码器。

方法

以前的报告主要依赖于 LFPs 的频谱幅度作为解码特征,而没有适当的理论依据就忽略了相位。本文在统计最优框架中制定了解码眼动意图的问题,并使用高斯序列建模和 Pinsker 定理生成 LFP 信号的最小最大化最优估计,作为解码特征。该方法被证明是一种低通滤波器,并且特征空间中的每个 LFP 都通过其适当收缩后的复傅里叶系数表示,从而衰减了更高频率的分量;这样,LFP 信号中固有的相位信息就自然地嵌入到特征空间中。

主要结果

我们表明,所提出的基于复频谱的解码器在接近前额叶皮层表面的浅层皮层深度上实现了高达[公式:见文本]的预测精度;这标志着传统基于功率谱的解码器的性能有了显著提高。

意义

提出的分析展示了低通滤波 LFP 信号在高度可靠的运动意图神经解码方面的有前途的潜力。

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