Nonlocal operator learning for fMRI encoding and decoding tasks
Andreas Kramer, Saugat Acharya, Alice Giola, Emanuele Zappala

TL;DR
This paper explores neural integral-operator models for fMRI encoding and decoding, emphasizing the importance of nonlocal spatiotemporal context to improve prediction and representation learning.
Contribution
It introduces a latent neural integral operator framework that captures nonlocal brain dynamics, demonstrating benefits of longer temporal windows in fMRI tasks.
Findings
Longer temporal windows improve decoding and encoding performance.
Latent space representations often show clearer class separation than raw data.
Larger spatiotemporal context yields more structured learned representations.
Abstract
Functional MRI data exhibit high-dimensional spatiotemporal structure, making both prediction and decoding challenging. In this work, we investigate neural integral-operator-based models for encoding and decoding tasks in fMRI, with particular emphasis on the role of nonlocal spatiotemporal context. We implement a latent neural integral operator framework that performs fixed point iterations in an auxiliary space from which classification and stimuli prediction is performed via a decoder. We evaluate our model on two open-source fMRI datasets. Our experiments examine both decoding of stimuli from fMRI recordings and encoding of fMRI dynamics from stimulus representations. A main focus is the effect of spatiotemporal context: we systematically compare short and long temporal windows, as well as the use of visual cortex vs whole brain recordings, and analyze their influence on…
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