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The Wisdom of a Crowd of Brains: A Universal Brain Encoder

About

Image-to-fMRI encoding is important for both neuroscience research and practical applications. However, such "Brain-Encoders" have been typically trained per-subject and per fMRI-dataset, thus restricted to very limited training data. In this paper we propose a Universal Brain-Encoder, which can be trained jointly on data from many different subjects/datasets/machines. What makes this possible is our new voxel-centric Encoder architecture, which learns a unique "voxel-embedding" per brain-voxel. Our Encoder trains to predict the response of each brain-voxel on every image, by directly computing the cross-attention between the brain-voxel embedding and multi-level deep image features. This voxel-centric architecture allows the functional role of each brain-voxel to naturally emerge from the voxel-image cross-attention. We show the power of this approach to (i) combine data from multiple different subjects (a "Crowd of Brains") to improve each individual brain-encoding, (ii) quick & effective Transfer-Learning across subjects, datasets, and machines (e.g., 3-Tesla, 7-Tesla), with few training examples, and (iii) use the learned voxel-embeddings as a powerful tool to explore brain functionality (e.g., what is encoded where in the brain).

Roman Beliy, Navve Wasserman, Amit Zalcher, Michal Irani• 2024

Related benchmarks

TaskDatasetResultRank
fMRI Brain EncodingNatural Scenes Dataset (NSD) 7T (test)
Subject 1 Score69
5
fMRI encodingNatural Scenes Dataset (NSD) subjects 1, 2, 5, 7 (avg) 7T (test)
Pearson Correlation0.392
5
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