J

Jimeng Sun

Total Citations
63
h-index
4
Papers
2

Publications

#1 2602.23285v1 Feb 26, 2026

ODEBrain: Continuous-Time EEG Graph for Modeling Dynamic Brain Networks

Modeling neural population dynamics is crucial for foundational neuroscientific research and various clinical applications. Conventional latent variable methods typically model continuous brain dynamics through discretizing time with recurrent architecture, which necessarily results in compounded cumulative prediction errors and failure of capturing instantaneous, nonlinear characteristics of EEGs. We propose ODEBRAIN, a Neural ODE latent dynamic forecasting framework to overcome these challenges by integrating spatio-temporal-frequency features into spectral graph nodes, followed by a Neural ODE modeling the continuous latent dynamics. Our design ensures that latent representations can capture stochastic variations of complex brain states at any given time point. Extensive experiments verify that ODEBRAIN can improve significantly over existing methods in forecasting EEG dynamics with enhanced robustness and generalization capabilities.

Zheng Chen Yasuko Matsubara Yasushi Sakurai Jathurshan Pradeepkumar Haohui Jia +4
2 Citations
#2 2601.22197v2 Jan 29, 2026

Neural Signals Generate Clinical Notes in the Wild

Generating clinical reports that summarize abnormal patterns, diagnostic findings, and clinical interpretations from long-term EEG recordings remains labor-intensive. We curate a large-scale clinical EEG dataset with $9{,}922$ reports paired with approximately $11{,}000$ hours of EEG recordings from $9{,}048$ patients. We therefore develop CELM, the first clinical EEG-to-Language foundation model capable of summarizing long-duration, variable-length EEG recordings and performing end-to-end clinical report generation at multiple scales, including recording description, background activity, epileptiform abnormalities, events/seizures, and impressions. Experimental results show that, with patient history supervision, our method achieves $70\%$-$95\%$ average relative improvements in standard generation metrics (e.g., ROUGE-1 and METEOR) from $0.2$-$0.3$ to $0.4$-$0.6$. In the zero-shot setting without patient history, CELM attains generation scores in the range of $0.43$-$0.52$, compared to baselines of $0.17$-$0.26$. CELM integrates pretrained EEG foundation models with language models to enable scalable multimodal learning. We release our model and benchmark construction pipeline at https://github.com/Jathurshan0330/CELM.

Jathurshan Pradeepkumar Jimeng Sun Zheng Chen
2 Citations