Functional Magnetic Resonance Imaging (fMRI) provides spatio-temporal maps of brain activity; however, extracting the rich information they contain is challenging. Traditional approaches use only summary statistics, losing details that might be hidden in the complex temporal dynamics. Deep neural networks are emerging as an apt solution in this context, given their ability to handle vast amounts of structured data. In this paper, we consider two widely studied fMRI datasets: the Human Connectome Project for connectome fingerprinting, and ABIDE for autism classification. We aim to understand how handling the temporal and spatial dimensions could influence the performance of the models and their interpretability. Specifically, we compare neural network models with architectural biases toward temporal, spatial, or combined spatio-temporal features. The results of our analysis show that existing methods exploiting the spatial dimension, or spatio-temporal hybrids, are not competitive with simpler ones considering the temporal dimension only, such as LSTM. Additionally, we propose a contrastive learning approach for connectome fingerprinting, enabling robust individual identification without requiring access to all subjects during training. Our findings suggest that explicit graph modeling of the interaction between brain regions introduces complexity without improving performance, thereby challenging current trends.
On the application of neural networks for structured domains to fMRI data
Donghi, Giovanni;Pasa, Luca;Testolin, Alberto;Zorzi, Marco;Sperduti, Alessandro;
2026
Abstract
Functional Magnetic Resonance Imaging (fMRI) provides spatio-temporal maps of brain activity; however, extracting the rich information they contain is challenging. Traditional approaches use only summary statistics, losing details that might be hidden in the complex temporal dynamics. Deep neural networks are emerging as an apt solution in this context, given their ability to handle vast amounts of structured data. In this paper, we consider two widely studied fMRI datasets: the Human Connectome Project for connectome fingerprinting, and ABIDE for autism classification. We aim to understand how handling the temporal and spatial dimensions could influence the performance of the models and their interpretability. Specifically, we compare neural network models with architectural biases toward temporal, spatial, or combined spatio-temporal features. The results of our analysis show that existing methods exploiting the spatial dimension, or spatio-temporal hybrids, are not competitive with simpler ones considering the temporal dimension only, such as LSTM. Additionally, we propose a contrastive learning approach for connectome fingerprinting, enabling robust individual identification without requiring access to all subjects during training. Our findings suggest that explicit graph modeling of the interaction between brain regions introduces complexity without improving performance, thereby challenging current trends.Pubblicazioni consigliate
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