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100 1 _ |a Hänisch, Benjamin
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245 _ _ |a Cerebral chemoarchitecture shares organizational traits with brain structure and function
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520 _ _ |a Chemoarchitecture, the heterogeneous distribution of neurotransmitter transporter and receptor molecules, is a relevant component of structure–function relationships in the human brain. Here, we studied the organization of the receptome, a measure of interareal chemoarchitectural similarity, derived from positron-emission tomography imaging studies of 19 different neurotransmitter transporters and receptors. Nonlinear dimensionality reduction revealed three main spatial gradients of cortical chemoarchitectural similarity – a centro-temporal gradient, an occipito-frontal gradient, and a temporo-occipital gradient. In subcortical nuclei, chemoarchitectural similarity distinguished functional communities and delineated a striato-thalamic axis. Overall, the cortical receptome shared key organizational traits with functional and structural brain anatomy, with node-level correspondence to functional, microstructural, and diffusion MRI-based measures decreasing along a primary-to-transmodal axis. Relative to primary and paralimbic regions, unimodal and heteromodal regions showed higher receptomic diversification, possibly supporting functional flexibility.
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700 1 _ |a Hansen, Justine Y
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700 1 _ |a Bernhardt, Boris C
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700 1 _ |a Eickhoff, Simon B
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700 1 _ |a Dukart, Juergen
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700 1 _ |a Misic, Bratislav
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700 1 _ |a Valk, Sofie Louise
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