LV-CadeNet: A Long-View Feature Convolution-Attention Fusion Encoder-Decoder Network for EEG/MEG Spike Analysis
Kuntao Xiao, Xiongfei Wang, Pengfei Teng, Yi Sun, Yong Zhang, Wanli Yang, Zikang Xu, Liang Zhang, Hanyang Dong, Guoming Luan, and Shurong Sheng

TL;DR
LV-CadeNet is a novel deep learning model that improves EEG/MEG spike detection by capturing long-term contextual features and dipole patterns, outperforming existing methods on public and clinical datasets.
Contribution
The paper introduces LV-CadeNet, a deep learning framework that combines long-view feature representation with hierarchical encoder-decoder architecture for enhanced spike analysis.
Findings
Outperforms six state-of-the-art methods on EEG spike classification.
Achieves 13.58% higher balanced accuracy on clinical MEG data.
Effectively captures extended contextual and dipole pattern features.
Abstract
The analysis of interictal epileptiform discharges (IEDs) in magnetoencephalography (MEG) or electroencephalogram (EEG) recordings represents a critical component in the diagnosis of epilepsy. However, manual analysis of these IEDs, which appear as epileptic spikes, from the large amount of MEG/EEG data is labor intensive and requires high expertise. Although automated methods have been developed to address this challenge, current approaches fail to fully emulate clinical experts' diagnostic intelligence in two key aspects: (1) their analysis on the input signals is limited to short temporal windows matching individual spike durations, missing the extended contextual patterns clinicians use to assess significance; and (2) they fail to adequately capture the dipole patterns with simultaneous positive-negative potential distributions across adjacent sensors that serve as clinicians' key…
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Taxonomy
TopicsInfrared Thermography in Medicine
