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CLEF: EEG Foundation Model for Learning Clinical Semantics

About

Clinical EEG interpretation requires reasoning over full EEG sessions and integrating signal patterns with clinical context. Existing EEG foundation models are largely designed for short-window decoding and do not incorporate clinical context. We introduce CLEF, a clinically grounded long-context EEG foundation model. CLEF represents EEG sessions as 3D multitaper spectrogram tokens, enabling tractable Transformer modeling at session scale, and aligns embeddings with neurologist reports and structured EHR data through contrastive objectives. We evaluate CLEF on a new 234-task benchmark spanning disease phenotypes, medication exposures, and EEG findings, with more than 260k EEG sessions from over 108k patients. CLEF outperforms prior EEG foundation models on 229 of 234 tasks, improving mean AUROC from 0.65 to 0.74. Reconstruction-only pretraining surpasses prior EEG foundation models, while report and EHR alignment yields further gains. Held-out concept and external-cohort experiments suggest that these representations transfer beyond observed alignment targets. These results support session-scale, clinically grounded representation learning as a promising foundation-model paradigm for clinical EEG.

Peng Cao, Ali Mirzazadeh, Jong Woo Lee, Aleksandar Videnovic, Dina Katabi• 2026

Related benchmarks

TaskDatasetResultRank
Binary classification of normal versus abnormal EEG signalsTUAB
Balanced Accuracy85.1
113
EEG Clinical Concept PredictionCurated EEG-EHR Benchmark
AUROC (Features)83.3
7
Cognitive ImpairmentHSP
AUROC68.9
6
EpilepsyTUEP
AUROC96
6
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