Poster + Paper
2 April 2024 Leveraging sinusoidal representation networks to predict fMRI signals from EEG
Yamin Li, Ange Lou, Ziyuan Xu, Shiyu Wang, Catie Chang
Author Affiliations +
Conference Poster
Abstract
In modern neuroscience, functional magnetic resonance imaging (fMRI) has been a crucial and irreplaceable tool that provides a non-invasive window into the dynamics of whole-brain activity. Nevertheless, fMRI is limited by hemodynamic blurring as well as high cost, immobility, and incompatibility with metal implants. Electroencephalography (EEG) is complementary to fMRI and can directly record the cortical electrical activity at high temporal resolution, but has more limited spatial resolution and is unable to recover information about deep subcortical brain structures. The ability to obtain fMRI information from EEG would enable cost-effective, naturalistic imaging across a wider set of brain regions. Further, beyond augmenting the capabilities of EEG, cross-modality models would facilitate the interpretation of fMRI signals. However, as both EEG and fMRI are high-dimensional and prone to noise and artifacts, it is currently challenging to model fMRI from EEG. Indeed, although correlations between these two modalities have been widely investigated, few studies have successfully used EEG to directly reconstruct fMRI time series. To address this challenge, we propose a novel architecture that can predict fMRI signals directly from multi-channel EEG without explicit feature engineering. Our model achieves this by implementing a Sinusoidal Representation Network (SIREN) to learn frequency information in brain dynamics from EEG, which serves as the input to a subsequent encoder-decoder to effectively reconstruct the fMRI signal in a specific brain region. We evaluate our model using a simultaneous EEG-fMRI dataset with 8 subjects and investigate its potential for predicting subcortical fMRI signals. The present results reveal that our model outperforms a recent state-of-the-art model and indicate the potential of leveraging periodic activation functions in deep neural networks to model functional neuroimaging data.
© (2024) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Yamin Li, Ange Lou, Ziyuan Xu, Shiyu Wang, and Catie Chang "Leveraging sinusoidal representation networks to predict fMRI signals from EEG", Proc. SPIE 12926, Medical Imaging 2024: Image Processing, 129263A (2 April 2024); https://doi.org/10.1117/12.3007677
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KEYWORDS
Functional magnetic resonance imaging

Electroencephalography

Data modeling

Brain

Deep learning

Machine learning

Neuroimaging

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