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自动编码器在脑电信号模板频谱图中的学习。

Autoencoders for learning template spectrograms in electrocorticographic signals.

机构信息

Department of Electrical and Computer Engineering, University of California- San Diego, San Diego, CA, United States of America.

出版信息

J Neural Eng. 2019 Feb;16(1):016025. doi: 10.1088/1741-2552/aaf13f. Epub 2018 Nov 15.

Abstract

OBJECTIVE

Electrocorticography (ECoG) based studies generally analyze features from specific frequency bands selected by manual evaluation of spectral power. However, the definition of these features can vary across subjects, cortical areas, tasks and across time for a given subject. We propose an autoencoder based approach for summarizing ECoG data with 'template spectrograms', i.e. informative time-frequency (t-f) patterns, and demonstrate their efficacy in two contexts: brain-computer interfaces (BCIs) and functional brain mapping.

APPROACH

We use a publicly available dataset wherein subjects perform a finger flexion task in response to a visual cue. We train autoencoders to learn t-f patterns and use them in a deep neural network to decode finger flexions. Additionally, we propose and evaluate an unsupervised method for clustering electrode channels based on their aggregated activity.

MAIN RESULTS

We show that the learnt t-f patterns can be used to classify individual finger movements with consisentently higher accuracy than with traditional spectral features. Furthermore, electrodes within automatically generated clusters tend to demonstrate functionally similar activity.

SIGNIFICANCE

With increasing interest in and active development towards higher spatial resolution ECoG, along with the availability of large scale datasets from epilepsy monitoring units, there is an opportunity to develop automated and scalable unsupervised methods to learn effective summaries of spatial, temporal and frequency patterns in these data. The proposed methods reduce the effort required by neural engineers to develop effective features for BCI decoders. The clustering approach has applications in functional mapping studies for identifying brain regions associated with behavioral changes.

摘要

目的

基于脑电描记术(ECoG)的研究通常通过手动评估谱功率来分析特定频带的特征。然而,这些特征的定义在不同的个体、皮质区域、任务和同一个体的不同时间可能会有所不同。我们提出了一种基于自动编码器的方法,用“模板频谱图”来总结 ECoG 数据,即信息时频(t-f)模式,并在两个背景下证明了其有效性:脑机接口(BCIs)和功能脑图。

方法

我们使用一个公开的数据集,其中个体根据视觉提示进行手指弯曲任务。我们训练自动编码器来学习 t-f 模式,并将其用于深度神经网络以解码手指弯曲。此外,我们提出并评估了一种基于电极通道聚合活动的无监督聚类方法。

主要结果

我们表明,学习到的 t-f 模式可以用于以比传统谱特征更高的一致性来分类个体手指运动。此外,在自动生成的集群中,电极的活动往往表现出功能上相似的模式。

意义

随着对高空间分辨率 ECoG 的兴趣日益增加和积极发展,以及来自癫痫监测单元的大规模数据集的可用性,有机会开发自动化和可扩展的无监督方法,以学习这些数据中空间、时间和频率模式的有效总结。所提出的方法减少了神经工程师为 BCI 解码器开发有效特征所需的工作量。聚类方法在功能映射研究中具有识别与行为变化相关的脑区的应用。

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