Ballistocardiogram artifact reduction in simultaneous EEG-fMRI using deep learning
J. R. McIntosh, J. Yao, Linbi Hong, J. Faller, P. Sajda

TL;DR
This paper introduces a deep learning method using recurrent neural networks to effectively reduce ballistocardiogram artifacts in EEG-fMRI recordings, outperforming traditional linear methods and enabling improved neural signal analysis.
Contribution
The study presents a novel RNN-based approach for non-linear BCG artifact suppression in EEG-fMRI, demonstrating superior performance and potential for real-time application.
Findings
Enhanced BCG artifact reduction at critical frequencies
Improved task-related EEG classification accuracy
Outperforms traditional linear decomposition methods
Abstract
Objective: The concurrent recording of electroencephalography (EEG) and functional magnetic resonance imaging (fMRI) is a technique that has received much attention due to its potential for combined high temporal and spatial resolution. However, the ballistocardiogram (BCG), a large-amplitude artifact caused by cardiac induced movement contaminates the EEG during EEG-fMRI recordings. Removal of BCG in software has generally made use of linear decompositions of the corrupted EEG. This is not ideal as the BCG signal is non-stationary and propagates in a manner which is non-linearly dependent on the electrocardiogram (ECG). In this paper, we present a novel method for BCG artifact suppression using recurrent neural networks (RNNs). Methods: EEG signals were recovered by training RNNs on the nonlinear mappings between ECG and the BCG corrupted EEG. We evaluated our model's performance…
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