基于连接特征的可解释人工智能的脑电图发作检测深度模型

Hmayag Partamian, Fouad Khnaisser, Mohamad Mansour, Reem A. Mahmoud, H.M. Hajj, F. Karameh
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引用次数: 1

摘要

在癫痫发作期间,大脑不同部位之间的不同类型的交流被许多最先进的连接测量所表征。我们建议使用一组无向(谱矩阵,谱矩阵的逆,相干性,部分相干性和锁相值)和有向特征(有向相干性,部分有向相干性)来使用深度神经网络检测癫痫发作。将我们的数据作为十个子窗口的序列,设计了一个使用注意力、CNN、BiLstm和全连接神经网络的最优深度序列学习架构,以输出检测标签和特征的相关性。使用模型在特定层的接受野激活值中的权重来计算相关性。使用平衡的MIT-BIH数据子集,最佳模型的准确率为97.03%。最后,对特征的相关性进行了分析。
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A Deep Model for EEG Seizure Detection with Explainable AI using Connectivity Features
During seizures, different types of communication between different parts of the brain are characterized by many state of the art connectivity measures. We propose to employ a set of undirected (spectral matrix, the inverse of the spectral matrix, coherence, partial coherence, and phase-locking value) and directed features (directed coherence, the partial directed coherence) to detect seizures using a deep neural network. Taking our data as a sequence of ten sub-windows, an optimal deep sequence learning architecture using attention, CNN, BiLstm, and fully connected neural networks is designed to output the detection label and the relevance of the features. The relevance is computed using the weights of the model in the activation values of the receptive fields at a particular layer. The best model resulted in 97.03% accuracy using balanced MIT-BIH data subset. Finally, an analysis of the relevance of the features is reported.
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