论文标题
ECOG数据的可解释的可视化和降低尺寸的较高尺寸
Interpretable Visualization and Higher-Order Dimension Reduction for ECoG Data
论文作者
论文摘要
电皮质学(ECOG)技术通过在神经外科手术期间直接放置在皮质表面上的电极来测量人脑中的电活动。通过其以快速的时间分辨率记录活动的能力,ECOG实验使科学家可以更好地了解人脑的处理方式。从本质上讲,ECOG数据对于神经科学家而言很难直接解释,原因有两个。首先,随着每个单独的实验可产生多个千兆字节的数据,ECOG数据的大小往往很大。其次,ECOG数据具有复杂的高阶性质。信号处理后,这种类型的数据可以作为四向张量的组织,其尺寸代表试验,电极,频率和时间。在本文中,我们开发了一种可解释的缩小方法,称为正规化高阶主成分分析,并扩展到正规化的高阶部分最小二乘,这使神经科学家可以探索和可视化ECOG数据。我们的方法采用稀疏且功能性的candecomp-parafac(CP)分解,将稀疏性纳入选择相关的电极和频带,以及随时间和频率的平滑度,从而产生可解释的因素。我们通过有关人类语音的音频和视觉处理的ECOG案例研究来证明我们方法的性能和解释性。
ElectroCOrticoGraphy (ECoG) technology measures electrical activity in the human brain via electrodes placed directly on the cortical surface during neurosurgery. Through its capability to record activity at a fast temporal resolution, ECoG experiments have allowed scientists to better understand how the human brain processes speech. By its nature, ECoG data is difficult for neuroscientists to directly interpret for two major reasons. Firstly, ECoG data tends to be large in size, as each individual experiment yields data up to several gigabytes. Secondly, ECoG data has a complex, higher-order nature. After signal processing, this type of data may be organized as a 4-way tensor with dimensions representing trials, electrodes, frequency, and time. In this paper, we develop an interpretable dimension reduction approach called Regularized Higher Order Principal Components Analysis, as well as an extension to Regularized Higher Order Partial Least Squares, that allows neuroscientists to explore and visualize ECoG data. Our approach employs a sparse and functional Candecomp-Parafac (CP) decomposition that incorporates sparsity to select relevant electrodes and frequency bands, as well as smoothness over time and frequency, yielding directly interpretable factors. We demonstrate the performance and interpretability of our method with an ECoG case study on audio and visual processing of human speech.