4.8 Article

A molecular gradient along the longitudinal axis of the human hippocampus informs large-scale behavioral systems

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NATURE COMMUNICATIONS
卷 11, 期 1, 页码 -

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NATURE PUBLISHING GROUP
DOI: 10.1038/s41467-020-14518-3

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资金

  1. Ludmer Centre for Neuroinformatics and Mental Health
  2. Healthy Brains for Healthy Lives initiative
  3. NIA [R01 AG045611, P50 AG23501, P01 AG019724]
  4. Tri-Council Vanier CGS Doctoral Fellowship
  5. Alzheimer's Association Research Fellowship [AARF-16-443577]
  6. CIHR
  7. NSERC
  8. SickKids Foundation
  9. Azrieli Center for Autism Research
  10. Savoy Foundation fellowship

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The functional organization of the hippocampus is distributed as a gradient along its longitudinal axis that explains its differential interaction with diverse brain systems. We show that the location of human tissue samples extracted along the longitudinal axis of the adult human hippocampus can be predicted within 2mm using the expression pattern of less than 100 genes. Futhermore, this model generalizes to an external set of tissue samples from prenatal human hippocampi. We examine variation in this specific gene expression pattern across the whole brain, finding a distinct anterioventral-posteriodorsal gradient. We find frontal and anterior temporal regions involved in social and motivational behaviors, and more functionally connected to the anterior hippocampus, to be clearly differentiated from posterior parieto-occipital regions involved in visuospatial cognition and more functionally connected to the posterior hippocampus. These findings place the human hippocampus at the interface of two major brain systems defined by a single molecular gradient. The human hippocampus plays a role in many different cognitive systems. Here the authors find that a single pattern of brain gene expression can predict how different parts of the hippocampus interact with the rest of the brain.

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