Faculty Opinions recommendation of Pattern separation in the human hippocampal CA3 and dentate gyrus.

Author(s):  
David P Wolfer
Science ◽  
2008 ◽  
Vol 319 (5870) ◽  
pp. 1640-1642 ◽  
Author(s):  
A. Bakker ◽  
C. B. Kirwan ◽  
M. Miller ◽  
C. E. L. Stark

Hippocampus ◽  
2010 ◽  
pp. n/a-n/a ◽  
Author(s):  
Michael A. Yassa ◽  
Joyce W. Lacy ◽  
Shauna M. Stark ◽  
Marilyn S. Albert ◽  
Michela Gallagher ◽  
...  

2019 ◽  
Author(s):  
Segundo Jose Guzman ◽  
Alois Schlögl ◽  
Claudia Espinoza ◽  
Xiaomin Zhang ◽  
Ben Suter ◽  
...  

ABSTRACTPattern separation is a fundamental brain computation that converts small differences in synaptic input patterns into large differences in action potential (AP) output patterns. Pattern separation plays a key role in the dentate gyrus, enabling the efficient storage and recall of memories in downstream hippocampal CA3 networks. Several mechanisms for pattern separation have been proposed, including expansion of coding space, sparsification of neuronal activity, and simple thresholding mechanisms. Alternatively, a winner-takes-all mechanism, in which the most excited cells inhibit all less-excited cells by lateral inhibition, might be involved. Although such a mechanism is computationally powerful, it remains unclear whether it operates in biological networks. Here, we develop a full-scale network model of the dentate gyrus, comprised of granule cells (GCs) and parvalbumin+ (PV+) inhibitory interneurons, based on experimentally determined biophysical cellular properties and synaptic connectivity rules. Our results demonstrate that a biologically realistic principal neuron–interneuron (PN–IN) network model is a highly efficient pattern separator. Mechanistic dissection in the model revealed that a winner-takes-all mechanism by lateral inhibition plays a crucial role in pattern separation. Furthermore, both fast signaling properties of PV+ interneurons and focal GC–interneuron connectivity are essential for efficient pattern separation. Thus, PV+ interneurons are not only involved in basic microcircuit functions, but also contribute to higher-order computations in neuronal networks, such as pattern separation.


2015 ◽  
Vol 25 ◽  
pp. S330-S331
Author(s):  
I. Lange ◽  
L. Goossens ◽  
S. Lissek ◽  
T. Van Amelsvoort ◽  
K. Schruers

2018 ◽  
Author(s):  
John J. Sakon ◽  
Wendy A. Suzuki

AbstractThe CA3 and dentate gyrus (DG) regions of the hippocampus are considered key for disambiguating sensory inputs from similar experiences in memory, a process termed pattern separation. The neural mechanisms underlying pattern separation, however, have been difficult to compare across species: rodents offer robust recording methods with less human-centric tasks while humans provide complex behavior with less recording potential. To overcome these limitations, we trained monkeys to perform a visual pattern separation task similar to those used in humans while recording activity from single CA3/DG neurons. We find that when animals discriminate recently seen novel images from similar (lure) images, behavior indicative of pattern separation, CA3/DG neurons respond to lure images more like novel than repeat images. Using a population of these neurons, we are able to classify novel, lure, and repeat images from each other using this pattern of firing rates. Notably, one subpopulation of these neurons is more responsible for distinguishing lures and repeats—the key discrimination indicative of pattern separation.


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