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Ann M. Graybiel

Researcher at McGovern Institute for Brain Research

Publications -  360
Citations -  53036

Ann M. Graybiel is an academic researcher from McGovern Institute for Brain Research. The author has contributed to research in topics: Striatum & Basal ganglia. The author has an hindex of 121, co-authored 350 publications receiving 49771 citations. Previous affiliations of Ann M. Graybiel include Case Western Reserve University & Tufts University.

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Neurotransmitters and neuromodulators in the basal ganglia

TL;DR: A new view of the basal ganglia is emerging on the basis of this neurochemical heterogeneity, suggesting that dynamic regulation of transmitter expression may be a key to extrapyramidal function.
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The substantia nigra of the human brain. II. Patterns of loss of dopamine-containing neurons in Parkinson's disease.

TL;DR: The spatiotemporal progression of neuronal loss related to disease duration can be drawn in the substantia nigra pars compacta for each Parkinson's disease patient: depletion begins in the main pocket (nigrosome 1) and then spreads to other nigrosomes and the matrix along rostral, medial and dorsal axes of progression.
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Habits, Rituals, and the Evaluative Brain

TL;DR: This review suggests that many of these behaviors could emerge as a result of experience-dependent plasticity in basal ganglia-based circuits that can influence not only overt behaviors but also cognitive activity.
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A family of cAMP-binding proteins that directly activate Rap1.

TL;DR: The findings suggest the need to reformulate concepts of cAMP-mediated signaling to include direct coupling to Ras superfamily signaling.
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The basal ganglia and adaptive motor control

TL;DR: The basal ganglia are neural structures within the motor and cognitive control circuits in the mammalian forebrain and are interconnected with the neocortex by multiple loops that have a distributed modular architecture resembling local expert architectures of computational learning models during sensorimotor learning.