AutocleanEEG ICVision: Automated ICA Artifact Classification Using Vision-Language AI
Zag ElSayed, Grace Westerkamp, Gavin Gammoh, Yanchen Liu, Peyton Siekierski, Craig Erickson, Ernest Pedapati

TL;DR
ICVision is an innovative AI system that emulates expert EEG artifact classification by interpreting visual EEG data using multimodal language models, surpassing traditional methods in accuracy and interpretability.
Contribution
This work introduces the first AI-agent that visually interprets EEG ICA components, combining vision and language reasoning for expert-level classification.
Findings
Achieved kappa = 0.677 agreement with experts
Surpassed traditional classifiers like ICLabel
Over 97% outputs rated as interpretable by experts
Abstract
We introduce EEG Autoclean Vision Language AI (ICVision) a first-of-its-kind system that emulates expert-level EEG ICA component classification through AI-agent vision and natural language reasoning. Unlike conventional classifiers such as ICLabel, which rely on handcrafted features, ICVision directly interprets ICA dashboard visualizations topography, time series, power spectra, and ERP plots, using a multimodal large language model (GPT-4 Vision). This allows the AI to see and explain EEG components the way trained neurologists do, making it the first scientific implementation of AI-agent visual cognition in neurophysiology. ICVision classifies each component into one of six canonical categories (brain, eye, heart, muscle, channel noise, and other noise), returning both a confidence score and a human-like explanation. Evaluated on 3,168 ICA components from 124 EEG datasets, ICVision…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Functional Brain Connectivity Studies · Epilepsy research and treatment
