Optimizing Channel Selection for Seizure Detection
Vinit Shah, Meysam Golmohammadi, Saeedeh Ziyabari, Eva Von Weltin,, Iyad Obeid, Joseph Picone

TL;DR
This study evaluates how reducing EEG channels affects artifact detection accuracy using CNN-LSTM, highlighting the importance of referential channels for maintaining performance in seizure detection.
Contribution
It investigates the impact of channel reduction on artifact detection performance and emphasizes the significance of referential channels in EEG analysis.
Findings
Reduced channels lower sensitivity and increase false alarms.
Fewer than 20 channels significantly impair artifact detection.
Referential channels are crucial for maintaining detection accuracy.
Abstract
Interpretation of electroencephalogram (EEG) signals can be complicated by obfuscating artifacts. Artifact detection plays an important role in the observation and analysis of EEG signals. Spatial information contained in the placement of the electrodes can be exploited to accurately detect artifacts. However, when fewer electrodes are used, less spatial information is available, making it harder to detect artifacts. In this study, we investigate the performance of a deep learning algorithm, CNN-LSTM, on several channel configurations. Each configuration was designed to minimize the amount of spatial information lost compared to a standard 22-channel EEG. Systems using a reduced number of channels ranging from 8 to 20 achieved sensitivities between 33% and 37% with false alarms in the range of [38, 50] per 24 hours. False alarms increased dramatically (e.g., over 300 per 24 hours) when…
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