A Composable Channel-Adaptive Architecture for Seizure Classification
Francesco Carzaniga, Michael Hersche, Kaspar Schindler, Abbas Rahimi

TL;DR
This paper introduces a channel-adaptive architecture for seizure classification in multi-channel iEEG data, improving personalization and temporal context handling, leading to better performance with less training data.
Contribution
The novel CA-architecture enables seamless processing of variable-channel iEEG data and efficient personalization, outperforming existing models in seizure detection tasks.
Findings
Outperforms baseline models in median F1-score (0.78 vs 0.76)
Requires less training data and time for personalization
Addresses heterogeneity across subjects effectively
Abstract
Objective: We develop a channel-adaptive (CA) architecture that seamlessly processes multi-variate time-series with an arbitrary number of channels, and in particular intracranial electroencephalography (iEEG) recordings. Methods: Our CA architecture first processes the iEEG signal using state-of-the-art models applied to each single channel independently. The resulting features are then fused using a vector-symbolic algorithm which reconstructs the spatial relationship using a trainable scalar per channel. Finally, the fused features are accumulated in a long-term memory of up to 2 minutes to perform the classification. Each CA-model can then be pre-trained on a large corpus of iEEG recordings from multiple heterogeneous subjects. The pre-trained model is personalized to each subject via a quick fine-tuning routine, which uses equal or lower amounts of data compared to existing…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Epilepsy research and treatment · Functional Brain Connectivity Studies
