Attend and Decode: 4D fMRI Task State Decoding Using Attention Models
- URL: http://arxiv.org/abs/2004.05234v2
- Date: Tue, 19 Jan 2021 06:35:49 GMT
- Title: Attend and Decode: 4D fMRI Task State Decoding Using Attention Models
- Authors: Sam Nguyen, Brenda Ng, Alan D. Kaplan and Priyadip Ray
- Abstract summary: We present a novel architecture called Brain Attend and Decode (BAnD)
BAnD uses residual convolutional neural networks for spatial feature extraction and self-attention mechanisms temporal modeling.
We achieve significant performance gain compared to previous works on a 7-task benchmark from the Human Connectome Project-Young Adult dataset.
- Score: 2.6954666679827137
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Functional magnetic resonance imaging (fMRI) is a neuroimaging modality that
captures the blood oxygen level in a subject's brain while the subject either
rests or performs a variety of functional tasks under different conditions.
Given fMRI data, the problem of inferring the task, known as task state
decoding, is challenging due to the high dimensionality (hundreds of million
sampling points per datum) and complex spatio-temporal blood flow patterns
inherent in the data. In this work, we propose to tackle the fMRI task state
decoding problem by casting it as a 4D spatio-temporal classification problem.
We present a novel architecture called Brain Attend and Decode (BAnD), that
uses residual convolutional neural networks for spatial feature extraction and
self-attention mechanisms for temporal modeling. We achieve significant
performance gain compared to previous works on a 7-task benchmark from the
large-scale Human Connectome Project-Young Adult (HCP-YA) dataset. We also
investigate the transferability of BAnD's extracted features on unseen HCP
tasks, either by freezing the spatial feature extraction layers and retraining
the temporal model, or finetuning the entire model. The pre-trained features
from BAnD are useful on similar tasks while finetuning them yields competitive
results on unseen tasks/conditions.
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