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Spontaneous eye blink rate as predictor of dopamine-related cognitive function—A review
BJ Jongkees, LS Colzato - Neuroscience & Biobehavioral Reviews, 2016 - Elsevier
An extensive body of research suggests the spontaneous eye blink rate (EBR) is a non-
invasive indirect marker of central dopamine (DA) function, with higher EBR predicting …
invasive indirect marker of central dopamine (DA) function, with higher EBR predicting …
Repetitive restricted behaviors in autism spectrum disorder: From mechanism to development of therapeutics
J Tian, X Gao, L Yang - Frontiers in Neuroscience, 2022 - frontiersin.org
Autism spectrum disorder (ASD) is a complex neurodevelopmental disorder characterized
by deficits in social communication, social interaction, and repetitive restricted behaviors …
by deficits in social communication, social interaction, and repetitive restricted behaviors …
Eye movements as a window into decision-making
M Spering - Annual review of vision science, 2022 - annualreviews.org
For over 100 years, eye movements have been studied and used as indicators of human
sensory and cognitive functions. This review evaluates how eye movements contribute to …
sensory and cognitive functions. This review evaluates how eye movements contribute to …
A Pause-then-Cancel model of stop**: evidence from basal ganglia neurophysiology
Many studies have implicated the basal ganglia in the suppression of action impulses
('stop**'). Here, we discuss recent neurophysiological evidence that distinct hypothesized …
('stop**'). Here, we discuss recent neurophysiological evidence that distinct hypothesized …
The microcircuits of striatum in silico
The basal ganglia play an important role in decision making and selection of action primarily
based on input from cortex, thalamus, and the dopamine system. Their main input structure …
based on input from cortex, thalamus, and the dopamine system. Their main input structure …
A review of computational modeling and deep brain stimulation: applications to Parkinson's disease
Y Yu, X Wang, Q Wang, Q Wang - Applied mathematics and mechanics, 2020 - Springer
Biophysical computational models are complementary to experiments and theories,
providing powerful tools for the study of neurological diseases. The focus of this review is the …
providing powerful tools for the study of neurological diseases. The focus of this review is the …
A computational network dynamical modeling for abnormal oscillation and deep brain stimulation control of obsessive–compulsive disorder
L Yin, F Han, Y Yu, Q Wang - Cognitive Neurodynamics, 2023 - Springer
Obsessive–compulsive disorder (OCD) is associated with multi-nodal abnormalities in brain
networks, characterized by recurrent intrusive thoughts (obsessions) and repetitive …
networks, characterized by recurrent intrusive thoughts (obsessions) and repetitive …
Believer-skeptic meets actor-critic: rethinking the role of basal ganglia pathways during decision-making and reinforcement learning
The flexibility of behavioral control is a testament to the brain's capacity for dynamically
resolving uncertainty during goal-directed actions. This ability to select actions and learn …
resolving uncertainty during goal-directed actions. This ability to select actions and learn …
Critical roles of the direct GABAergic pallido-cortical pathway in controlling absence seizures
The basal ganglia (BG), serving as an intermediate bridge between the cerebral cortex and
thalamus, are believed to play crucial roles in controlling absence seizure activities …
thalamus, are believed to play crucial roles in controlling absence seizure activities …
Forgetting in reinforcement learning links sustained dopamine signals to motivation
A Kato, K Morita - PLoS computational biology, 2016 - journals.plos.org
It has been suggested that dopamine (DA) represents reward-prediction-error (RPE) defined
in reinforcement learning and therefore DA responds to unpredicted but not predicted …
in reinforcement learning and therefore DA responds to unpredicted but not predicted …