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📄 Abstract
Abstract: Access to clinical multi-channel EEG remains limited in many regions
worldwide. We present NEUROSKY-EPI, the first open dataset of single-channel,
consumer-grade EEG for epilepsy, collected in a South Asian clinical setting
along with rich contextual metadata. To explore its utility, we introduce
EmbedCluster, a patient-stratification pipeline that transfers representations
from EEGNet models trained on clinical data and enriches them with contextual
autoencoder embeddings, followed by unsupervised clustering of patients based
on EEG patterns. Results show that low-cost, single-channel data can support
meaningful stratification. Beyond algorithmic performance, we emphasize
human-centered concerns such as deployability in resource-constrained
environments, interpretability for non-specialists, and safeguards for privacy,
inclusivity, and bias. By releasing the dataset and code, we aim to catalyze
interdisciplinary research across health technology, human-computer
interaction, and machine learning, advancing the goal of affordable and
actionable EEG-based epilepsy care.
Key Contributions
Presents NEUROSKY-EPI, the first open dataset of single-channel, consumer-grade EEG for epilepsy, collected in a resource-constrained setting. Introduces the EmbedCluster pipeline, demonstrating that low-cost EEG data can support meaningful patient stratification, while emphasizing human-centered concerns like deployability and privacy.
Business Value
Enables more accessible and affordable epilepsy diagnosis and patient management, particularly in underserved regions. This can improve patient outcomes and reduce healthcare costs.