SplitSEE: A Splittable Self-supervised Framework for Single-Channel EEG Representation Learning
While end-to-end multi-channel electroencephalography (EEG) learning approaches have shown significant promise, their applicability is often constrained in neurological diagnostics, such as intracranial EEG resources. When provided with a single-channel EEG, how can we learn representations that are...
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Zusammenfassung: | While end-to-end multi-channel electroencephalography (EEG) learning
approaches have shown significant promise, their applicability is often
constrained in neurological diagnostics, such as intracranial EEG resources.
When provided with a single-channel EEG, how can we learn representations that
are robust to multi-channels and scalable across varied tasks, such as seizure
prediction? In this paper, we present SplitSEE, a structurally splittable
framework designed for effective temporal-frequency representation learning in
single-channel EEG. The key concept of SplitSEE is a self-supervised framework
incorporating a deep clustering task. Given an EEG, we argue that the time and
frequency domains are two distinct perspectives, and hence, learned
representations should share the same cluster assignment. To this end, we first
propose two domain-specific modules that independently learn domain-specific
representation and address the temporal-frequency tradeoff issue in
conventional spectrogram-based methods. Then, we introduce a novel clustering
loss to measure the information similarity. This encourages representations
from both domains to coherently describe the same input by assigning them a
consistent cluster. SplitSEE leverages a pre-training-to-fine-tuning framework
within a splittable architecture and has following properties: (a)
Effectiveness: it learns representations solely from single-channel EEG but has
even outperformed multi-channel baselines. (b) Robustness: it shows the
capacity to adapt across different channels with low performance variance.
Superior performance is also achieved with our collected clinical dataset. (c)
Scalability: With just one fine-tuning epoch, SplitSEE achieves high and stable
performance using partial model layers. |
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DOI: | 10.48550/arxiv.2410.11200 |