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Transcript
Temporal Convergence of Dynamic
Cell Assemblies in the
Striato-Pallidal Network
Avital Adler, Shiran Katabi,1 Inna Finkes, Zvi
Israel, Yifat Prut, and Hagai Bergman
The Hebrew University-Hadassah Medical
Schoo
Journal of Neuroscience, 2012
Abstract
•
•
•
The basal ganglia (BG) have been hypothesized to implement a reinforcement learning algorithm.
However, it is not clear how information is processed along this network, thus enabling it to
perform its functional role. Here we present three different encoding schemes of visual cues
associated with rewarding, neutral, and aversive outcomes by BG neuronal populations.
We studied the response profile and dynamical behavior of two populations of projection
neurons [striatal medium spiny neurons (MSNs), and neurons in the external segment of the
globus pallidus (GPe)], and one neuromodulator group [striatal tonically active neurons (TANs)]
from behaving monkeys. MSNs and GPe neurons displayed sustained average activity to cue
presentation. The population average response of MSNs was composed of three distinct response
groups that were temporally differentiated and fired in serial episodes along the trial. In the GPe,
the average sustained response was composed of two response groups that were primarily
differentiated by their immediate change in firing rate direction. However, unlike MSNs, neurons
in both GPe response groups displayed prolonged and temporally overlapping persistent activity.
The putamen TANs stereotyped response was characterized by a single transient response group.
Finally, theMSNand GPe response groups reorganized at the outcome epoch, as different task
events were reflected in different response groups.
Our results strengthen the functional separation between BG neuromodulators and main axis
neurons. Furthermore, they reveal dynamically changing cell assemblies in the striatal network of
behaving primates. Finally, they support the functional convergence of the MSN response groups
onto GPe cells.
How does the BG work?
• The actor-critic architecture
• The actor component stores and updates
stimulus–response associations.
• The critic component generates a temporal
difference prediction error signal when there
is a discrepancy between predictions and
actual reinforcements.
Structure of the BG
• The the BG main axis: Cortex (stimulates)
→ Striatum (inhibits) → "SNr-GPi"
complex (less inhibition of thalamus)
→ Thalamus (stimulates)
→Cortex (stimulates) → Muscles, etc. →
(hyperkinetic state)
• The neuromodulators: Midbrain
dopaminergic neurons and striatal
cholinergic interneurons
Target of this study
• Main axis: Striatum (inhibits) → GPe
Striatal medium spiny
neurons (MSNs)
GPe Neurons
• The neuromodulators: Striatal cholinergic
interneurons
Striatal tonically active
neurons (TANs)
Method
Two monkeys were used as subjects.
Results
MSNs
GPe
TNAs
Conclusion
• They presented three different encoding schemes by MSNs,
GPe neurons, and TANs. Their results strengthen the
functional separation between BG neuromodulators and
the main axis by showing that MSNs display an average
sustained response as expected by their functional role in
associative learning.
• Furthermore, these results point to the strong functional
convergence of MSNs onto GPe cells, leading to the average
sustained response of single GPe neurons.
• Finally, the MSNs display a response profile and dynamic
behavior that incorporates the elements required for
information processing in a dynamic network of cell
assemblies.