TY - JOUR
T1 - A lognormal recurrent network model for burst generation during hippocampal sharp waves
AU - Omura, Yoshiyuki
AU - Carvalho, Milena M.
AU - Inokuchi, Kaoru
AU - Fukai, Tomoki
N1 - Publisher Copyright:
© 2015 the authors.
PY - 2015/10/28
Y1 - 2015/10/28
N2 - The strength of cortical synapses distributes lognormally, with a long tail of strong synapses. Various properties of neuronal activity, such as the average firing rates of neurons, the rate and magnitude of spike bursts, the magnitude of population synchrony, and the correlations between presynaptic and postsynaptic spikes, also obey lognormal-like distributions reported in the rodenthippocampal CA1 and CA3 areas. Theoretical models have demonstrated how such a firing rate distribution emerges from neural network dynamics. However, how the other properties also display lognormal patterns remain unknown. Because these features are likely to originate from neural dynamics in CA3, we model a recurrent neural network with the weights of recurrent excitatory connections distributed lognormally to explore the underlying mechanisms and their functional implications. Using multi-time scale adaptive threshold neurons, we construct a low-frequency spontaneous firing state of bursty neurons. This state well replicates the observed statistical properties of population synchrony in hippocampal pyramidal cells. Our results show that the lognormal distribution of synaptic weights consistently accounts for the observed long-tailed features of hippocampal activity. Further-more, our model demonstrates that bursts spread over the lognormal network muchmore effectively than single spikes, implying an advantage of spike bursts in information transfer. This efficiency in burst propagation is not found in neural network models with Gaussian-weighted recurrent excitatory synapses. Our model proposes a potential network mechanism to generate sharp waves in CA3 and associated ripples inCA1 because bursts occur in CA3 pyramidal neurons most frequently during sharp waves.
AB - The strength of cortical synapses distributes lognormally, with a long tail of strong synapses. Various properties of neuronal activity, such as the average firing rates of neurons, the rate and magnitude of spike bursts, the magnitude of population synchrony, and the correlations between presynaptic and postsynaptic spikes, also obey lognormal-like distributions reported in the rodenthippocampal CA1 and CA3 areas. Theoretical models have demonstrated how such a firing rate distribution emerges from neural network dynamics. However, how the other properties also display lognormal patterns remain unknown. Because these features are likely to originate from neural dynamics in CA3, we model a recurrent neural network with the weights of recurrent excitatory connections distributed lognormally to explore the underlying mechanisms and their functional implications. Using multi-time scale adaptive threshold neurons, we construct a low-frequency spontaneous firing state of bursty neurons. This state well replicates the observed statistical properties of population synchrony in hippocampal pyramidal cells. Our results show that the lognormal distribution of synaptic weights consistently accounts for the observed long-tailed features of hippocampal activity. Further-more, our model demonstrates that bursts spread over the lognormal network muchmore effectively than single spikes, implying an advantage of spike bursts in information transfer. This efficiency in burst propagation is not found in neural network models with Gaussian-weighted recurrent excitatory synapses. Our model proposes a potential network mechanism to generate sharp waves in CA3 and associated ripples inCA1 because bursts occur in CA3 pyramidal neurons most frequently during sharp waves.
KW - CA3
KW - Spike propagation
KW - Spiking neuron
KW - Spontaneous activity
KW - Synchrony
UR - http://www.scopus.com/inward/record.url?scp=84942344202&partnerID=8YFLogxK
U2 - 10.1523/JNEUROSCI.4944-14.2015
DO - 10.1523/JNEUROSCI.4944-14.2015
M3 - 学術論文
C2 - 26511248
AN - SCOPUS:84942344202
SN - 0270-6474
VL - 35
SP - 14585
EP - 14601
JO - Journal of Neuroscience
JF - Journal of Neuroscience
IS - 43
ER -