论文标题

基于连接特征的脑电图癫痫发作检测的可解释模型

An Explainable Model for EEG Seizure Detection based on Connectivity Features

论文作者

Mansour, Mohammad, Khnaisser, Fouad, Partamian, Hmayag

论文摘要

通过记录大脑的电活动,使用脑电图信号研究了以癫痫发作为特征的癫痫。大脑不同部分之间的不同类型的通信的特征是许多最先进的连通性措施,可以指导和无方向性。我们建议采用一组无向的(光谱矩阵,光谱矩阵的倒数,相干性,部分连贯性和浮力值价值)和定向特征(定向连贯性,部分指向连贯性)来学习深层神经网络,以检测到特定数据窗口是否属于seizure seize seiz seiz seiz seiz seiz seiz seiz seiz seiz seiz seiz seiz seiz seiz seiz seiz seiz seiz seiz sekiz seiz seiz seiz sekiz seiz sekiz seiz seciz seiz sekiz sekiz sekiz sekiz sepiz sekiz sear s seeiz。我们将数据作为十个子窗口的顺序,旨在使用注意力,CNN,Bilstm和完全连接的层来设计最佳的深度学习模型。我们还基于特定层的接受场的激活值,使用学习模型的权重计算相关性。我们最佳的模型体系结构使用平衡的MITBIH数据子集获得了97.03%的精度。另外,我们能够解释所有患者的每个功能的相关性。我们能够通过研究激活对决策的贡献的影响来实验验证有关癫痫发作的一些科学事实。

Epilepsy which is characterized by seizures is studied using EEG signals by recording the electrical activity of the brain. Different types of communication between different parts of the brain are characterized by many state of the art connectivity measures which can be directed and undirected. We propose to employ a set of undirected (spectral matrix, the inverse of the spectral matrix, coherence, partial coherence, and phaselocking value) and directed features (directed coherence, the partial directed coherence) to learn a deep neural network that detects whether a particular data window belongs to a seizure or not, which is a new approach to standard seizure classification. Taking our data as a sequence of ten sub-windows, we aim at designing an optimal deep learning model using attention, CNN, BiLstm, and fully connected layers. We also compute the relevance using the weights of the learned model based on the activation values of the receptive fields at a particular layer. Our best model architecture resulted in 97.03% accuracy using balanced MITBIH data subset. Also, we were able to explain the relevance of each feature across all patients. We were able to experimentally validate some of the scientific facts concerning seizures by studying the impact of the contributions of the activations on the decision.

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