DANCE: Detect and Classify Events in EEG
About
Event identification in continuous neural recordings is a critical task in neuroscience. Decoding in EEG is dominated by classifying windows aligned to known event onsets. However, while available in controlled experiments, such onsets are absent in continuous real-world monitoring. Here, we introduce DANCE, a deep learning pipeline that frames neural decoding as a set-prediction problem and jointly detects and classifies events directly from raw, unaligned signals. Evaluated separately on ten datasets curated from the literature with a wide variety of event types (ranging from milliseconds to minutes in duration), our model outperforms existing methods on a broad range of cognitive, clinical and BCI tasks. This single architecture establishes a new state of the art in the competitive task of seizure monitoring and matches the accuracy of onset-informed models for BCI tasks. Overall, our method marks a step towards end-to-end asynchronous neural decoding models
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Biosignal Decoding | Average across 10 Heterogeneous Datasets (including TUSZ, BNCI2014, BNCI2015) (Mean across all subjects) | Runtime (h)3.51 | 6 | |
| EEG Event Detection and Localization | BNCI 2014 | F1 Detection90.9 | 4 | |
| EEG Event Detection and Localization | BNCI 2015 | F1 Detection Score84.3 | 2 | |
| EEG Event Detection and Localization | SparrKULee | F1det41.1 | 2 | |
| EEG Event Detection and Localization | Broderick | F1 Detection44.6 | 2 | |
| EEG Event Detection and Localization | Pinet | F1det35.4 | 2 | |
| EEG Event Detection and Localization | TUAR | F1det18.8 | 2 | |
| EEG Event Detection and Localization | BI 2013 | F1 Detection63.9 | 2 | |
| EEG Event Detection and Localization | BI 2014b | F1 Detection52.9 | 2 | |
| EEG Event Detection and Localization | TUSZ | F1 Detection35.3 | 2 |