Saved in:
Bibliographic Details
Main Authors: Wang, Chen, Wang, Yansen, Han, Dongqi, Wang, Zilong, Li, Dongsheng
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.13592
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866909848246943744
author Wang, Chen
Wang, Yansen
Han, Dongqi
Wang, Zilong
Li, Dongsheng
author_facet Wang, Chen
Wang, Yansen
Han, Dongqi
Wang, Zilong
Li, Dongsheng
contents Analyzing stereoelectroencephalography (SEEG) signals is critical for brain-computer interface (BCI) applications and neuroscience research, yet poses significant challenges due to the large number of input channels and their heterogeneous relevance. Traditional channel selection methods struggle to scale or provide meaningful interpretability for SEEG data. In this work, we propose EEGChaT, a novel Transformer-based channel selection module designed to automatically identify the most task-relevant channels in SEEG recordings. EEGChaT introduces Channel Aggregation Tokens (CATs) to aggregate information across channels, and leverages an improved Attention Rollout technique to compute interpretable, quantitative channel importance scores. We evaluate EEGChaT on the DuIN dataset, demonstrating that integrating EEGChaT with existing classification models consistently improves decoding accuracy, achieving up to 17\% absolute gains. Furthermore, the channel weights produced by EEGChaT show substantial overlap with manually selected channels, supporting the interpretability of the approach. Our results suggest that EEGChaT is an effective and generalizable solution for channel selection in high-dimensional SEEG analysis, offering both enhanced performance and insights into neural signal relevance.
format Preprint
id arxiv_https___arxiv_org_abs_2510_13592
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle EEGChaT: A Transformer-Based Modular Channel Selector for SEEG Analysis
Wang, Chen
Wang, Yansen
Han, Dongqi
Wang, Zilong
Li, Dongsheng
Machine Learning
Analyzing stereoelectroencephalography (SEEG) signals is critical for brain-computer interface (BCI) applications and neuroscience research, yet poses significant challenges due to the large number of input channels and their heterogeneous relevance. Traditional channel selection methods struggle to scale or provide meaningful interpretability for SEEG data. In this work, we propose EEGChaT, a novel Transformer-based channel selection module designed to automatically identify the most task-relevant channels in SEEG recordings. EEGChaT introduces Channel Aggregation Tokens (CATs) to aggregate information across channels, and leverages an improved Attention Rollout technique to compute interpretable, quantitative channel importance scores. We evaluate EEGChaT on the DuIN dataset, demonstrating that integrating EEGChaT with existing classification models consistently improves decoding accuracy, achieving up to 17\% absolute gains. Furthermore, the channel weights produced by EEGChaT show substantial overlap with manually selected channels, supporting the interpretability of the approach. Our results suggest that EEGChaT is an effective and generalizable solution for channel selection in high-dimensional SEEG analysis, offering both enhanced performance and insights into neural signal relevance.
title EEGChaT: A Transformer-Based Modular Channel Selector for SEEG Analysis
topic Machine Learning
url https://arxiv.org/abs/2510.13592