Transfer Entropy Reconstruction and Labeling of Neuronal Connections from Simulated Calcium Imaging

2014 | journal article. A publication with affiliation to the University of Göttingen.

Jump to: Cite & Linked | Documents & Media | Details | Version history

Cite this publication

​Transfer Entropy Reconstruction and Labeling of Neuronal Connections from Simulated Calcium Imaging​
Orlandi, J. G.; Stetter, O.; Soriano, J.; Geisel, T. & Battaglia, D.​ (2014) 
PLoS ONE9(6) art. e98842​.​ DOI: https://doi.org/10.1371/journal.pone.0098842 

Documents & Media

journal.pone.0098842.pdf959.71 kBAdobe PDF

License

Published Version

Attribution 4.0 CC BY 4.0

Details

Authors
Orlandi, Javier G.; Stetter, Olav; Soriano, Jordi; Geisel, Theo; Battaglia, Demian
Abstract
Neuronal dynamics are fundamentally constrained by the underlying structural network architecture, yet much of the details of this synaptic connectivity are still unknown even in neuronal cultures in vitro. Here we extend a previous approach based on information theory, the Generalized Transfer Entropy, to the reconstruction of connectivity of simulated neuronal networks of both excitatory and inhibitory neurons. We show that, due to the model-free nature of the developed measure, both kinds of connections can be reliably inferred if the average firing rate between synchronous burst events exceeds a small minimum frequency. Furthermore, we suggest, based on systematic simulations, that even lower spontaneous inter-burst rates could be raised to meet the requirements of our reconstruction algorithm by applying a weak spatially homogeneous stimulation to the entire network. By combining multiple recordings of the same in silico network before and after pharmacologically blocking inhibitory synaptic transmission, we show then how it becomes possible to infer with high confidence the excitatory or inhibitory nature of each individual neuron.
Issue Date
2014
Status
published
Publisher
Public Library Science
Journal
PLoS ONE 
Project
info:eu-repo/grantAgreement/EC/FP7/330792/EU//DYNVIB
Organization
Fakultät für Physik 
ISSN
1932-6203

Reference

Citations


Social Media