How Much Data is Enough? Optimization of Data Collection for Artifact Detection in EEG Recordings
Lu Wang-N\"oth, Philipp Heiler, Hai Huang, Daniel Lichtenstern,, Alexandra Reichenbach, Luis Flacke, Linus Maisch, Helmut Mayer

TL;DR
This paper introduces an optimization method using deep learning to reduce data collection efforts in EEG artifact detection while maintaining cleaning performance, addressing cost and efficiency issues.
Contribution
It proposes a systematic approach to optimize artifact data collection in EEG using neural networks, reducing the number of tasks needed for effective artifact detection.
Findings
Reduced artifact tasks from twelve to three
Decreased repetitions of isometric contraction tasks from ten to three or one
Maintained cleaning efficiency with fewer data collection efforts
Abstract
Objective. Electroencephalography (EEG) is a widely used neuroimaging technique known for its cost-effectiveness and user-friendliness. However, various artifacts, particularly biological artifacts like Electromyography (EMG) signals, lead to a poor signal-to-noise ratio, limiting the precision of analyses and applications. The currently reported EEG data cleaning performance largely depends on the data used for validation, and in the case of machine learning approaches, also on the data used for training. The data are typically gathered either by recruiting subjects to perform specific artifact tasks or by integrating existing datasets. Prevailing approaches, however, tend to rely on intuitive, concept-oriented data collection with minimal justification for the selection of artifacts and their quantities. Given the substantial costs associated with biological data collection and the…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · EEG and Brain-Computer Interfaces · Music and Audio Processing
