AUTHOR=Jiman Ahmad A. , Attar Eyad Talal TITLE=Unsupervised clustering of pre-ictal EEG in children: a reproducible and lightweight CPU-based workflow JOURNAL=Frontiers in Neurology VOLUME=Volume 16 - 2025 YEAR=2025 URL=https://www.frontiersin.org/journals/neurology/articles/10.3389/fneur.2025.1665008 DOI=10.3389/fneur.2025.1665008 ISSN=1664-2295 ABSTRACT=BackgroundEarly identification of seizures in children is important for safety, intervention success, and quality of life improvement, because many children are unable to reliably communicate sensed pre-ictal warning features. Recognition of pre-ictal EEG microstates is a path toward wearable and bedside monitors that may deliver actionable alerts to caregivers. However, most existing approaches remain constrained by manual labels, expert calibration, or computationally expensive models with limited clinical utility.MethodsThe study developed an unsupervised clustering pipeline for pediatric pre-ictal EEG using PCA, UMAP, and K-Means, without the need for manual annotations or GPU resources. The CPU-based and open-source design makes the workflow accessible and potentially adaptable for future real-time neurodiagnostic applications.ResultsPCA retained >95% variance, confirming stable feature extraction. ICA reduced blink and line-noise artifacts by 85 and 34%, respectively, improving signal quality. Optimal cluster number (k = 4) was identified via Elbow and Silhouette methods, revealing distinct and physiologically meaningful EEG microstates preceding seizure onset. UMAP embeddings showed well-separated clusters with a high initial Silhouette Score (0.779), indicating robust internal structure. Noise removal improved interpretability without compromising cluster validity.ConclusionThe unsupervised nature of the study approach provides experimental evidence for the demarcation of a number of distinct pre-ictal states. These are associated with changes in cortical excitability and network synchrony, consistent with the predicted dynamics of a model of epilepsy. This study should be regarded as a proof-of-concept that advances methodological aspects of unsupervised EEG clustering within this specific dataset. The findings are hypothesis-generating rather than conclusive, providing a preliminary platform for exploring automatic pre-ictal state monitoring without expert input.