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Global and Multiplexed Dendritic Computations under In Vivo-like Conditions
Ujfalussy, B.B. ✉ [Ujfalussy, Balázs Benedek (Idegtudományok), author] Laboratory of Neuronal Signaling (IEM / DCNN); Theoretical neoroscience and complex system res... (RMI / KTO)
;
Makara, J.K. [Makara, Judit (Neurobiológia), author] Laboratory of Neuronal Signaling (IEM / DCNN)
;
Lengyel, M.
;
Branco, T.
English Article (Journal Article) Scientific
Published:
NEURON 0896-6273 1097-4199
100
(3)
pp. 579-592
2018
SJR Scopus - Neuroscience (miscellaneous): D1
Identifiers
MTMT: 30317318
DOI:
10.1016/j.neuron.2018.08.032
WoS:
000449564600012
Scopus:
85055908808
PubMed:
30408443
Google scholar:
1908215544906120277
Fundings:
Wellcome Trust International Senior Research Fellowship(090915/Z/09/Z)
International Research Scholar Program of the Howard Hughes Medical Institute(55008740)
Wellcome Trust/Royal Society Henry Dale Fellowship(098400/Z/12/Z)
Medical Research Council (MRC)(MC-UP-1201/1)
Wellcome Trust New Investigator Award(095621/Z/11/Z)
Subjects:
Basic medicine
Health sciences
Other medical sciences
Dendrites integrate inputs nonlinearly, but it is unclear how these nonlinearities contribute to the overall input-output transformation of single neurons. We developed statistically principled methods using a hierarchical cascade of linear-nonlinear subunits (hLN) to model the dynamically evolving somatic response of neurons receiving complex, in vivo-like spatiotemporal synaptic input patterns. We used the hLN to predict the somatic membrane potential of an in vivo-validated detailed biophysical model of a L2/3 pyramidal cell. Linear input integration with a single global dendritic nonlinearity achieved above 90% prediction accuracy. A novel hLN motif, input multiplexing into parallel processing channels, could improve predictions as much as conventionally used additional layers of local nonlinearities. We obtained similar results in two other cell types. This approach provides a data-driven characterization of a key component of cortical circuit computations: the input-output transformation of neurons during in vivo-like conditions. The input-output transformation of neurons under in vivo conditions is unknown. Ujfalussy et al. use a model-based approach to show that linear integration with a single global dendritic nonlinearity can accurately predict the response of neurons to naturalistic synaptic input patterns. © 2018 The Authors
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2025-04-21 07:23
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