Adaptive graph learning with SEEG data for improved seizure localization: Considerations of generalization and simplicity

IF 4.9 2区 医学 Q1 ENGINEERING, BIOMEDICAL Biomedical Signal Processing and Control Pub Date : 2024-11-15 DOI:10.1016/j.bspc.2024.107148
Jinjie Guo , Tao Feng , Penghu Wei , Jinguo Huang , Yanfeng Yang , Yiping Wang , Gongpeng Cao , Yuda Huang , Guixia Kang , Guoguang Zhao
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Abstract

Accurate localization of seizure onset zones (SOZs) in patients with drug-resistant epilepsy is essential for improving prognostic outcomes. This process can be significantly enhanced through effective network representation and analysis of functional dependencies among brain regions. However, traditional network construction methods often lack generalizability due to individual variability. Furthermore, the independent design of the network construction and analysis modules restricts the overall optimization of localization frameworks. In this study, we propose a novel deep learning framework that integrates graph building and analysis modules for seizure localization. The graph building block adaptively generates customized network representations from Stereo-Electroencephalography (SEEG) data of individual patients by extracting feature vectors of each channel and calculating functional connectivity weights among channels with these vectors. While the GCN-and-LSTM-based graph analysis block identifies abnormal nodes corresponding to SOZs by aggregating spatial and temporal information in the network representations. The graph analysis block is trained alongside the graph building block via the seizure prediction task. Attention weights assigned to each channel are utilized to characterize epileptogenicity, facilitating precise localization of the SOZ. Our method demonstrates superior performance, surpassing baseline and state-of-the-art approaches in 9 of 13 patients from a public dataset and 11 of 14 patients from a clinical dataset. Visualization of the identified brain regions aligns well with labeled SOZs. Furthermore, the adaptive functional brain network reveals that the connectivity density among SOZ channels is greater than that of other brain regions, corroborating existing clinical findings and further confirming the model’s reliability and interpretability.
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利用 SEEG 数据进行自适应图形学习以改进癫痫发作定位:考虑通用性和简便性
准确定位耐药性癫痫患者的发作起始区(SOZ)对改善预后结果至关重要。通过有效的网络表示和分析脑区之间的功能依赖关系,可以大大提高这一过程的效率。然而,由于个体差异,传统的网络构建方法往往缺乏普适性。此外,网络构建和分析模块的独立设计也限制了定位框架的整体优化。在本研究中,我们提出了一种新颖的深度学习框架,该框架集成了用于癫痫定位的图构建和分析模块。图构建模块通过提取每个通道的特征向量,并利用这些向量计算通道间的功能连接权重,自适应地从单个患者的立体脑电图(SEEG)数据中生成定制的网络表示。而基于 GCN 和 LSTM 的图分析模块则通过聚合网络表征中的空间和时间信息来识别与 SOZ 相对应的异常节点。图分析模块通过癫痫发作预测任务与图构建模块一起进行训练。分配给每个通道的注意力权重被用来描述致痫性,从而促进 SOZ 的精确定位。我们的方法表现出卓越的性能,在公共数据集的 13 名患者中的 9 名患者和临床数据集的 14 名患者中的 11 名患者身上超越了基线方法和最先进的方法。识别出的大脑区域的可视化与标记的 SOZ 非常吻合。此外,自适应脑功能网络显示,SOZ 通道之间的连接密度高于其他脑区,这与现有的临床发现相吻合,进一步证实了该模型的可靠性和可解释性。
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来源期刊
Biomedical Signal Processing and Control
Biomedical Signal Processing and Control 工程技术-工程:生物医学
CiteScore
9.80
自引率
13.70%
发文量
822
审稿时长
4 months
期刊介绍: Biomedical Signal Processing and Control aims to provide a cross-disciplinary international forum for the interchange of information on research in the measurement and analysis of signals and images in clinical medicine and the biological sciences. Emphasis is placed on contributions dealing with the practical, applications-led research on the use of methods and devices in clinical diagnosis, patient monitoring and management. Biomedical Signal Processing and Control reflects the main areas in which these methods are being used and developed at the interface of both engineering and clinical science. The scope of the journal is defined to include relevant review papers, technical notes, short communications and letters. Tutorial papers and special issues will also be published.
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