4.7 Article

Finding Distributed Needles in Neural Haystacks

Journal

JOURNAL OF NEUROSCIENCE
Volume 41, Issue 5, Pages 1019-1032

Publisher

SOC NEUROSCIENCE
DOI: 10.1523/JNEUROSCI.0904-20.2020

Keywords

face representation; fMRI; multivariate pattern analysis; neural network models; structured sparsity

Categories

Funding

  1. Medical Research Council Program [MR/J004146/1]
  2. European Research Council [GAP: 670428 -BRAIN2MIND_NEUROCOMP]
  3. UW-Madison
  4. Advanced Computing Initiative
  5. Wisconsin Alumni Research Foundation
  6. Wisconsin Institutes for Discovery
  7. National Science Foundation

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The human cortex encodes information in complex networks, with different statistical methods having blind spots in discovering this information. A new multivariate approach introduced can find network-distributed information and provide more comprehensive results in simulations. This approach can detect both widely distributed and localized representational structures, offering an unbiased method for testing claims of functional localization.
Y The human cortex encodes information in complex networks that can be anatomically dispersed and variable in their microstructure across individuals. Using simulations with neural network models, we show that contemporary statistical methods for functional brain imaging-including univariate contrast, searchlight multivariate pattern classification, and whole-brain decoding with L1 or L2 regularization-each have critical and complementary blind spots under these conditions. We then introduce the sparse-overlapping-sets (SOS) LASSO-a whole-brain multivariate approach that exploits structured sparsity to find network-distributed information-and show in simulation that it captures the advantages of other approaches while avoiding their limitations. When applied to fMRI data to find neural responses that discriminate visually presented faces from other visual stimuli, each method yields a different result, but existing approaches all support the canonical view that face perception engages localized areas in posterior occipital and temporal regions. In contrast, SOS LASSO uncovers a network spanning all four lobes of the brain. The result cannot reflect spurious selection of out-of-system areas because decoding accuracy remains exceedingly high even when canonical face and place systems are removed from the dataset. When used to discriminate visual scenes from other stimuli, the same approach reveals a localized signal consistent with other methods-illustrating that SOS LASSO can detect both widely distributed and localized representational structure. Thus, structured sparsity can provide an unbiased method for testing claims of functional localization. For faces and possibly other domains, such decoding may reveal representations more widely distributed than previously suspected.

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