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Multivariate pattern dependence

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2017

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Public Library of Science
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Anzellotti, Stefano, Alfonso Caramazza, and Rebecca Saxe. 2017. “Multivariate pattern dependence.” PLoS Computational Biology 13 (11): e1005799. doi:10.1371/journal.pcbi.1005799. http://dx.doi.org/10.1371/journal.pcbi.1005799.

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Abstract

When we perform a cognitive task, multiple brain regions are engaged. Understanding how these regions interact is a fundamental step to uncover the neural bases of behavior. Most research on the interactions between brain regions has focused on the univariate responses in the regions. However, fine grained patterns of response encode important information, as shown by multivariate pattern analysis. In the present article, we introduce and apply multivariate pattern dependence (MVPD): a technique to study the statistical dependence between brain regions in humans in terms of the multivariate relations between their patterns of responses. MVPD characterizes the responses in each brain region as trajectories in region-specific multidimensional spaces, and models the multivariate relationship between these trajectories. We applied MVPD to the posterior superior temporal sulcus (pSTS) and to the fusiform face area (FFA), using a searchlight approach to reveal interactions between these seed regions and the rest of the brain. Across two different experiments, MVPD identified significant statistical dependence not detected by standard functional connectivity. Additionally, MVPD outperformed univariate connectivity in its ability to explain independent variance in the responses of individual voxels. In the end, MVPD uncovered different connectivity profiles associated with different representational subspaces of FFA: the first principal component of FFA shows differential connectivity with occipital and parietal regions implicated in the processing of low-level properties of faces, while the second and third components show differential connectivity with anterior temporal regions implicated in the processing of invariant representations of face identity.

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Biology and Life Sciences, Neuroscience, Cognitive Science, Cognition, Memory, Face Recognition, Learning and Memory, Cognitive Psychology, Perception, Psychology, Social Sciences, Mathematical and Statistical Techniques, Statistical Methods, Forecasting, Physical Sciences, Mathematics, Statistics (Mathematics), Anatomy, Nervous System, Central Nervous System, Medicine and Health Sciences, Multivariate Analysis, Principal Component Analysis, Brain, Cerebral Cortex, Temporal Lobe, Brain Mapping, Functional Magnetic Resonance Imaging, Diagnostic Medicine, Diagnostic Radiology, Magnetic Resonance Imaging, Imaging Techniques, Radiology and Imaging, Neuroimaging, Regression Analysis, Linear Regression Analysis, Musculoskeletal System, Limbs (Anatomy), Arms, Hands, Fingers

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