School of Science and Technology, Nottingham Trent University, Nottingham, United Kingdom.
Department of Clinical Neuroscience, King's College London, London, United Kingdom.
J Neural Eng. 2021 Dec 24;18(6). doi: 10.1088/1741-2552/ac3cc4.
Interictal epileptiform discharges (IEDs) occur between two seizures onsets. IEDs are mainly captured by intracranial recordings and are often invisible over the scalp. This study proposes a model based on tensor factorization to map the time-frequency (TF) features of scalp EEG (sEEG) to the TF features of intracranial EEG (iEEG) in order to detect IEDs from over the scalp with high sensitivity.Continuous wavelet transform is employed to extract the TF features. Time, frequency, and channel modes of IED segments from iEEG recordings are concatenated into a four-way tensor. Tucker and CANDECOMP/PARAFAC decomposition techniques are employed to decompose the tensor into temporal, spectral, spatial, and segmental factors. Finally, TF features of both IED and non-IED segments from scalp recordings are projected onto the temporal components for classification.The model performance is obtained in two different approaches: within- and between-subject classification approaches. Our proposed method is compared with four other methods, namely a tensor-based spatial component analysis method, TF-based method, linear regression mapping model, and asymmetric-symmetric autoencoder mapping model followed by convolutional neural networks. Our proposed method outperforms all these methods in both within- and between-subject classification approaches by respectively achieving 84.2% and 72.6% accuracy values.The findings show that mapping sEEG to iEEG improves the performance of the scalp-based IED detection model. Furthermore, the tensor-based mapping model outperforms the autoencoder- and regression-based mapping models.
发作间期癫痫样放电 (IEDs) 发生在两次发作之间。IEDs 主要通过颅内记录捕获,并且经常在头皮上不可见。本研究提出了一种基于张量分解的模型,用于将头皮 EEG (sEEG) 的时频 (TF) 特征映射到颅内 EEG (iEEG) 的 TF 特征,以便以高灵敏度从头皮上检测 IEDs。连续小波变换用于提取 TF 特征。将 iEEG 记录中 IED 段的时间、频率和通道模式串联成一个四向张量。采用 Tucker 和 CANDECOMP/PARAFAC 分解技术将张量分解为时间、谱、空间和分段因子。最后,将头皮记录中 IED 和非 IED 段的 TF 特征投影到时间分量上进行分类。在两种不同的方法中获得模型性能:受试者内和受试者间分类方法。我们的方法与其他四种方法进行了比较,即基于张量的空间成分分析方法、基于 TF 的方法、线性回归映射模型和非对称-对称自动编码器映射模型后接卷积神经网络。我们的方法在受试者内和受试者间分类方法中均优于所有这些方法,分别达到 84.2%和 72.6%的准确率。研究结果表明,将 sEEG 映射到 iEEG 可提高基于头皮的 IED 检测模型的性能。此外,基于张量的映射模型优于基于自动编码器和回归的映射模型。