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一种基于类不平衡感知和可解释的时空图注意力网络的新生儿癫痫检测方法。

A Class-Imbalance Aware and Explainable Spatio-Temporal Graph Attention Network for Neonatal Seizure Detection.

机构信息

Department of Neuroscience, Imaging and Clinical Sciences, Universita Gabriele d'Annunzio, Chieti 66100, Italy.

Department of Neuroscience, Imaging and Clinical Sciences-Behavioral Imaging and Neural Dynamics Center, Universita Gabriele d'Annunzio, Chieti 66100, Italy.

出版信息

Int J Neural Syst. 2023 Sep;33(9):2350046. doi: 10.1142/S0129065723500466. Epub 2023 Jul 28.

DOI:10.1142/S0129065723500466
PMID:37497802
Abstract

Seizures are the most prevalent clinical indication of neurological disorders in neonates. In this study, a class-imbalance aware and explainable deep learning approach based on Convolutional Neural Networks (CNNs) and Graph Attention Networks (GATs) is proposed for the accurate automated detection of neonatal seizures. The proposed model integrates the temporal information of EEG signals with the spatial information on the EEG channels through the graph representation of the multi-channel EEG segments. One-dimensional CNNs are used to automatically develop a feature set that accurately represents the differences between seizure and nonseizure epochs in the time domain. By employing GAT, the attention mechanism is utilized to emphasize the critical channel pairs and information flow among brain regions. GAT coefficients were then used to empirically visualize the important regions during the seizure and nonseizure epochs, which can provide valuable insight into the location of seizures in the neonatal brain. Additionally, to tackle the severe class imbalance in the neonatal seizure dataset using under-sampling and focal loss techniques are used. Overall, the final Spatio-Temporal Graph Attention Network (ST-GAT) outperformed previous benchmarked methods with a mean AUC of 96.6% and Kappa of 0.88, demonstrating its high accuracy and potential for clinical applications.

摘要

癫痫发作是新生儿神经障碍最常见的临床指征。在这项研究中,提出了一种基于卷积神经网络 (CNNs) 和图注意网络 (GATs) 的具有类别不平衡感知和可解释性的深度学习方法,用于准确自动检测新生儿癫痫发作。所提出的模型通过多通道 EEG 段的图形表示将 EEG 信号的时间信息与 EEG 通道的空间信息集成在一起。一维 CNN 用于自动开发特征集,该特征集在时域中准确表示癫痫发作和非癫痫发作期间的差异。通过使用 GAT,利用注意力机制强调关键的通道对和大脑区域之间的信息流。然后使用 GAT 系数经验性地可视化癫痫发作和非癫痫发作期间的重要区域,这可以为新生儿大脑中癫痫发作的位置提供有价值的见解。此外,为了解决新生儿癫痫数据集严重的类别不平衡问题,使用了欠采样和焦点损失技术。总体而言,最终的时空图注意网络 (ST-GAT) 的平均 AUC 为 96.6%,Kappa 为 0.88,优于以前的基准方法,表明其具有很高的准确性和临床应用潜力。

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Sci Rep. 2025 Jun 4;15(1):19552. doi: 10.1038/s41598-025-01882-7.
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Scaling convolutional neural networks achieves expert level seizure detection in neonatal EEG.扩展卷积神经网络可实现新生儿脑电图中癫痫发作的专家级检测。
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Analysis of the impact of deep learning know-how and data in modelling neonatal EEG.
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TATPat based explainable EEG model for neonatal seizure detection.基于 TATPat 的新生儿癫痫发作检测可解释 EEG 模型。
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