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Using Convolutional Neural Networks to Automatically Detect Eye-Blink Artifacts in Magnetoencephalography Without Resorting to Electrooculography

机译:使用卷积神经网络自动检测磁脑图检查中的眨眼伪像而无需借助眼动描记法

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摘要

Magnetoencephelography (MEG) is a functional neuroimaging tool that records the magnetic fields induced by neuronal activity; however, signal from muscle activity often corrupts the data. Eye-blinks are one of the most common types of muscle artifact. They can be recorded by affixing eye proximal electrodes, as in electrooculography (EOG), however this complicates patient preparation and decreases comfort. Moreover, it can induce further muscular artifacts from facial twitching. We propose an EOG free, data driven approach. We begin with Independent Component Analysis (ICA), a well-known preprocessing approach that factors observed signal into statistically independent components. When applied to MEG, ICA can help separate neuronal components from non-neuronal ones, however, the components are randomly ordered. Thus, we develop a method to assign one of two labels, non-eye-blink or eye-blink, to each component.Our contributions are two-fold. First, we develop a 10-layer Convolutional Neural Network (CNN), which directly labels eye-blink artifacts. Second, we visualize the learned spatial features using attention mapping, to reveal what it has learned and bolster confidence in the method’s ability to generalize to unseen data. We acquired 8-min, eyes open, resting state MEG from 44 subjects. We trained our method on the spatial maps from ICA of 14 subjects selected randomly with expertly labeled ground truth. We then tested on the remaining 30 subjects. Our approach achieves a test classification accuracy of 99.67%, sensitivity: 97.62%, specificity: 99.77%, and ROC AUC: 98.69%. We also show the learned spatial features correspond to those human experts typically use which corroborates our model’s validity. This work (1) facilitates creation of fully automated processing pipelines in MEG that need to remove motion artifacts related to eye blinks, and (2) potentially obviates the use of additional EOG electrodes for the recording of eye-blinks in MEG studies.
机译:磁脑电图(MEG)是一种功能性的神经影像工具,可记录由神经元活动引起的磁场。但是,肌肉活动产生的信号通常会破坏数据。眨眼是肌肉伪像的最常见类型之一。如在眼电位描记术(EOG)中一样,可以通过贴近眼电极来记录它们,但是这会使患者的准备工作复杂化,并降低了舒适度。此外,它还可以从面部抽搐中诱发出更多的肌肉假象。我们提出了一种无EOG,数据驱动的方法。我们从独立成分分析(ICA)开始,这是一种众所周知的预处理方法,它将观察到的信号分解为统计上独立的成分。当应用于MEG时,ICA可以帮助将神经元组件与非神经元组件分开,但是,这些组件是随机排列的。因此,我们开发了一种为每个组件分配两个标签(非眨眼或眨眼)之一的方法。我们的贡献是双重的。首先,我们开发了一个10层的卷积神经网络(CNN),它直接标记了眨眼的伪影。其次,我们使用注意力映射图对学习到的空间特征进行可视化,以揭示其学到的知识,并增强对该方法归纳为看不见数据的能力的信心。我们从44位受试者中获得了8分钟,睁眼,静止状态的MEG。我们在来自ICA的14位受试者的空间地图上训练了我们的方法,这些受试者随机选择了经过专业标记的地面真相。然后,我们对其余30个主题进行了测试。我们的方法可实现99.67%的测试分类准确性,灵敏度:97.62%,特异性:99.77%和ROC AUC:98.69%。我们还显示了所学的空间特征与人类专家通常使用的特征相符,从而证实了我们模型的有效性。这项工作(1)有助于在MEG中创建需要消除与眨眼有关的运动伪影的全自动处理管道,并且(2)可能避免在MEG研究中使用额外的EOG电极来记录眨眼。

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