CVLGIVNCSep 27, 2019

Fast shared response model for fMRI data

arXiv:1909.12537v26 citations
Originality Incremental advance
AI Analysis

This incremental improvement enables easier large-scale analysis of fMRI data for researchers studying brain activity during naturalistic stimuli.

The authors tackled the computational inefficiency of the shared response model for fMRI data by introducing FastSRM, which matches original performance while being about 5x faster and 20x to 40x more memory efficient across four datasets.

The shared response model provides a simple but effective framework to analyse fMRI data of subjects exposed to naturalistic stimuli. However when the number of subjects or runs is large, fitting the model requires a large amount of memory and computational power, which limits its use in practice. In this work, we introduce the FastSRM algorithm that relies on an intermediate atlas-based representation. It provides considerable speed-up in time and memory usage, hence it allows easy and fast large-scale analysis of naturalistic-stimulus fMRI data. Using four different datasets, we show that our method matches the performance of the original SRM algorithm while being about 5x faster and 20x to 40x more memory efficient. Based on this contribution, we use FastSRM to predict age from movie watching data on the CamCAN sample. Besides delivering accurate predictions (mean absolute error of 7.5 years), FastSRM extracts topographic patterns that are predictive of age, demonstrating that brain activity during free perception reflects age.

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