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1.
Nature ; 626(8001): 1066-1072, 2024 Feb.
Article in English | MEDLINE | ID: mdl-38326610

ABSTRACT

Animals can learn about sources of danger while minimizing their own risk by observing how others respond to threats. However, the distinct neural mechanisms by which threats are learned through social observation (known as observational fear learning1-4 (OFL)) to generate behavioural responses specific to such threats remain poorly understood. The dorsomedial prefrontal cortex (dmPFC) performs several key functions that may underlie OFL, including processing of social information and disambiguation of threat cues5-11. Here we show that dmPFC is recruited and required for OFL in mice. Using cellular-resolution microendoscopic calcium imaging, we demonstrate that dmPFC neurons code for observational fear and do so in a manner that is distinct from direct experience. We find that dmPFC neuronal activity predicts upcoming switches between freezing and moving state elicited by threat. By combining neuronal circuit mapping, calcium imaging, electrophysiological recordings and optogenetics, we show that dmPFC projections to the midbrain periaqueductal grey (PAG) constrain observer freezing, and that amygdalar and hippocampal inputs to dmPFC opposingly modulate observer freezing. Together our findings reveal that dmPFC neurons compute a distinct code for observational fear and coordinate long-range neural circuits to select behavioural responses.


Subject(s)
Cues , Fear , Neural Pathways , Prefrontal Cortex , Social Learning , Animals , Mice , Amygdala/physiology , Calcium/metabolism , Electrophysiology , Fear/physiology , Hippocampus/physiology , Neural Pathways/physiology , Neurons/physiology , Optogenetics , Periaqueductal Gray/cytology , Periaqueductal Gray/physiology , Photic Stimulation , Prefrontal Cortex/cytology , Prefrontal Cortex/physiology , Social Learning/physiology , Freezing Reaction, Cataleptic/physiology
2.
Science ; 367(6484)2020 03 20.
Article in English | MEDLINE | ID: mdl-32193296

ABSTRACT

The cerebral cortex underlies our complex cognitive capabilities, yet little is known about the specific genetic loci that influence human cortical structure. To identify genetic variants that affect cortical structure, we conducted a genome-wide association meta-analysis of brain magnetic resonance imaging data from 51,665 individuals. We analyzed the surface area and average thickness of the whole cortex and 34 regions with known functional specializations. We identified 199 significant loci and found significant enrichment for loci influencing total surface area within regulatory elements that are active during prenatal cortical development, supporting the radial unit hypothesis. Loci that affect regional surface area cluster near genes in Wnt signaling pathways, which influence progenitor expansion and areal identity. Variation in cortical structure is genetically correlated with cognitive function, Parkinson's disease, insomnia, depression, neuroticism, and attention deficit hyperactivity disorder.


Subject(s)
Cerebral Cortex/anatomy & histology , Genetic Variation , Attention Deficit Disorder with Hyperactivity/genetics , Brain Mapping , Cognition , Genetic Loci , Genome-Wide Association Study , Humans , Magnetic Resonance Imaging , Organ Size/genetics , Parkinson Disease/genetics
3.
Proc IEEE Int Symp Biomed Imaging ; 2018: 527-530, 2018 Apr.
Article in English | MEDLINE | ID: mdl-30364770

ABSTRACT

In recent years there have been many studies indicating that multiple cortical features, extracted at each surface vertex, are promising in the detection of various neurodevelopmental and neurodegenerative diseases. However, with limited datasets, it is challenging to train stable classifiers with such high-dimensional surface data. This necessitates a feature reduction that is commonly accomplished via regional volumetric morphometry from standard brain atlases. However, current regional summaries are not specific to the given age or pathology that is studied, which runs the risk of losing relevant information that can be critical in the classification process. To solve this issue, this paper proposes a novel data-driven approach by extending convolutional neural networks (CNN) for use on non-Euclidean manifolds such as cortical surfaces. The proposed network learns the most powerful features and brain regions from the extracted large dimensional feature space; thus creating a new feature space in which the dimensionality is reduced and feature distributions are better separated. We demonstrate the usability of the proposed surface-CNN framework in an example study classifying Alzheimers disease patients versus normal controls. The high performance in the cross-validation diagnostic results shows the potential of our proposed prediction system.

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