Javascript must be enabled to continue!
Homeostatic plasticity and external input shape neural network dynamics
View through CrossRef
In vitro
and
in vivo
spiking activity clearly differ. Whereas networks
in vitro
develop strong bursts separated by periods of very little spiking activity,
in vivo
cortical networks show continuous activity. This is puzzling considering that both networks presumably share similar single-neuron dynamics and plasticity rules. We propose that the defining difference between
in vitro
and
in vivo
dynamics is the strength of external input.
In vitro
, networks are virtually isolated, whereas
in vivo
every brain area receives continuous input. We analyze a model of spiking neurons in which the input strength, mediated by spike rate homeostasis, determines the characteristics of the dynamical state. In more detail, our analytical and numerical results on various network topologies show consistently that under increasing input, homeostatic plasticity generates distinct dynamic states, from bursting, to close-to-critical, reverberating and irregular states. This implies that the dynamic state of a neural network is not fixed but can readily adapt to the input strengths. Indeed, our results match experimental spike recordings
in vitro
and
in vivo
: the
in vitro
bursting behavior is consistent with a state generated by very low network input (< 0.1%), whereas
in vivo
activity suggests that on the order of 1% recorded spikes are input-driven, resulting in reverberating dynamics. Importantly, this predicts that one can abolish the ubiquitous bursts of
in vitro
preparations, and instead impose dynamics comparable to
in vivo
activity by exposing the system to weak long-term stimulation, thereby opening new paths to establish an
in vivo
-like assay
in vitro
for basic as well as neurological studies.
Title: Homeostatic plasticity and external input shape neural network dynamics
Description:
In vitro
and
in vivo
spiking activity clearly differ.
Whereas networks
in vitro
develop strong bursts separated by periods of very little spiking activity,
in vivo
cortical networks show continuous activity.
This is puzzling considering that both networks presumably share similar single-neuron dynamics and plasticity rules.
We propose that the defining difference between
in vitro
and
in vivo
dynamics is the strength of external input.
In vitro
, networks are virtually isolated, whereas
in vivo
every brain area receives continuous input.
We analyze a model of spiking neurons in which the input strength, mediated by spike rate homeostasis, determines the characteristics of the dynamical state.
In more detail, our analytical and numerical results on various network topologies show consistently that under increasing input, homeostatic plasticity generates distinct dynamic states, from bursting, to close-to-critical, reverberating and irregular states.
This implies that the dynamic state of a neural network is not fixed but can readily adapt to the input strengths.
Indeed, our results match experimental spike recordings
in vitro
and
in vivo
: the
in vitro
bursting behavior is consistent with a state generated by very low network input (< 0.
1%), whereas
in vivo
activity suggests that on the order of 1% recorded spikes are input-driven, resulting in reverberating dynamics.
Importantly, this predicts that one can abolish the ubiquitous bursts of
in vitro
preparations, and instead impose dynamics comparable to
in vivo
activity by exposing the system to weak long-term stimulation, thereby opening new paths to establish an
in vivo
-like assay
in vitro
for basic as well as neurological studies.
Related Results
A postsynaptic signaling system for the regulation of homeostatic synaptic plasticity
A postsynaptic signaling system for the regulation of homeostatic synaptic plasticity
<p>Synapses undergo many stresses and plastic changes throughout the life of an organism. Homeostatic mechanisms respond to these stresses and maintain synaptic activity with...
The reversibility and limits of homeostatic synaptic plasticity
The reversibility and limits of homeostatic synaptic plasticity
<p>To experience the world, we depend on the ability of our brains to process information. Problems can occur when communication between neurons is not regulated, and a signi...
Exploring Large Language Models Integration in the Histopathologic Diagnosis of Skin Diseases: A Comparative Study
Exploring Large Language Models Integration in the Histopathologic Diagnosis of Skin Diseases: A Comparative Study
Abstract
Introduction
The exact manner in which large language models (LLMs) will be integrated into pathology is not yet fully comprehended. This study examines the accuracy, bene...
Reproductive plasticity in both sexes interacts to determine mating behaviour and fecundity
Reproductive plasticity in both sexes interacts to determine mating behaviour and fecundity
AbstractOrganisms alter their phenotype in response to variation in their environment by expressing phenotypic plasticity. Both sexes exhibit such plasticity in response to contras...
Mechanisms of GABAergic Homeostatic Plasticity
Mechanisms of GABAergic Homeostatic Plasticity
Homeostatic plasticity ensures that appropriate levels of activity are maintained through compensatory adjustments in synaptic strength and cellular excitability. For instance, exc...
fects of early drought-induced phenotypic plasticity on late plant seedling interactions
fects of early drought-induced phenotypic plasticity on late plant seedling interactions
Abstract
In nature, plants are often exposed to a variety of environments. The study of plant phenotypic plasticity cannot ignore a variety of environmental factors. At pre...
On the role of network dynamics for information processing in artificial and biological neural networks
On the role of network dynamics for information processing in artificial and biological neural networks
Understanding how interactions in complex systems give rise to various collective behaviours has been of interest for researchers across a wide range of fields. However, despite ma...
Non-synaptic plasticity enables memory-dependent local learning
Non-synaptic plasticity enables memory-dependent local learning
Abstract
Synaptic plasticity is essential for memory formation and learning in the brain. In addition, recent results indicate that non-synaptic plasticity processe...

