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Deep Learning Approach for Epileptic Focus Localization

机译:癫痫焦点定位的深度学习方法

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摘要

The task of epileptic focus localization receives great attention due to its role in an effective epileptic surgery. The clinicians highly depend on the intracranial EEG data to make a surgical decision related to epileptic subjects suffering from uncontrollable seizures. This surgery usually aims to remove the epileptogenic region which requires precise characterization of that area using the EEG recordings. In this paper, we propose two methods based on deep learning targeting accurate automatic epileptic focus localization using the non-stationary EEG recordings. Our first proposed method is based on semi-supervised learning, in which a deep convolutional autoencoder is trained and then the pre-trained encoder is used with multi-layer perceptron as a classifier. The goal is to determine the location of the EEG signal that is responsible for the epileptic activity. In the second proposed method, unsupervised learning scheme is implemented by merging deep convolutional variational autoencoder and K-means algorithm for clustering the iEEG signals into two distinct clusters based on the seizure source. The proposed methods automate and integrate the features extraction and classification processes instead of manually extracting the features as done in the previous studies. Dimensionality reduction is achieved using the autoencoder, while the important spatio-temporal features are extracted from the EEG recordings using the convolutional layers. Moreover, we implemented the inference network of the semi-supervised model on FPGA. The results of our experiments demonstrate high classification accuracy and clustering performance in localizing the epileptic focus compared with the state of the art.
机译:由于其在有效的癫痫手术中的作用,癫痫聚焦定位的任务受到极大的关注。临床医生高度依赖于颅内EEG数据,使与患有无法控制的癫痫发作的癫痫受试者进行手术决定。这种手术通常旨在去除癫痫区域,该区域需要使用EEG录音来精确表征该区域。在本文中,我们提出了一种基于深度学习的两种方法,该方法使用非静止eeg录音来瞄准精确的自动癫痫聚焦定位。我们的第一个提出的方法是基于半监督学习,其中训练了深度卷积的AutoEncoder,然后将预先接受的编码器与多层的Perceptron一起使用,作为分类器。目标是确定负责癫痫活动的EEG信号的位置。在第二所提出的方法中,通过利用深度卷积变分性AutoEncoder和K-Means算法将IEEG信号集聚到基于癫痫源的两个不同群集来实现无监督的学习方案。所提出的方法自动化和集成特征提取和分类过程,而不是手动提取在先前研究中完成的功能。使用AutoEncoder实现维数减少,而使用卷积层从EEG记录中提取重要的时空特征。此外,我们在FPGA上实现了半监督模型的推理网络。我们的实验结果表明,与现有技术相比,本地化癫痫重点的高分类准确性和聚类性能。

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