6533b7d1fe1ef96bd125ccc6

RESEARCH PRODUCT

Spectral entropy based neuronal network synchronization analysis based on microelectrode array measurements

Fikret Emre KapucuFikret Emre KapucuInkeri VornanenJarno Eelis MikkonenChiara LeoneKerstin LenkJarno M. A. TanskanenJari Hyttinen

subject

0301 basic medicineComputer scienceNeuroscience (miscellaneous)ta3112Radio spectrumSynchronizationlcsh:RC321-571Correlation03 medical and health sciencesCellular and Molecular Neuroscience0302 clinical medicineBiological neural networkMethodsTime domainlcsh:Neurosciences. Biological psychiatry. NeuropsychiatrySimulationEvent (probability theory)rat cortical cellsMEAmicroelectrode array213 Electronic automation and communications engineering electronicsspectral entropyInformation processingCorrectiondeveloping neuronal networksMultielectrode array217 Medical engineering030104 developmental biologycorrelationmouse cortical cellsBiological systemsynchronization030217 neurology & neurosurgeryNeuroscience

description

Synchrony and asynchrony are essential aspects of the functioning of interconnected neuronal cells and networks. New information on neuronal synchronization can be expected to aid in understanding these systems. Synchronization provides insight in the functional connectivity and the spatial distribution of the information processing in the networks. Synchronization is generally studied with time domain analysis of neuronal events, or using direct frequency spectrum analysis, e.g., in specific frequency bands. However, these methods have their pitfalls. Thus, we have previously proposed a method to analyze temporal changes in the complexity of the frequency of signals originating from different network regions. The method is based on the correlation of time varying spectral entropies (SEs). SE assesses the regularity, or complexity, of a time series by quantifying the uniformity of the frequency spectrum distribution. It has been previously employed, e.g., in electroencephalogram analysis. Here, we revisit our correlated spectral entropy method (CorSE), providing evidence of its justification, usability, and benefits. Here, CorSE is assessed with simulations and in vitro microelectrode array (MEA) data. CorSE is first demonstrated with a specifically tailored toy simulation to illustrate how it can identify synchronized populations. To provide a form of validation, the method was tested with simulated data from integrate-and-fire model based computational neuronal networks. To demonstrate the analysis of real data, CorSE was applied on in vitro MEA data measured from rat cortical cell cultures, and the results were compared with three known event based synchronization measures. Finally, we show the usability by tracking the development of networks in dissociated mouse cortical cell cultures. The results show that temporal correlations in frequency spectrum distributions reflect the network relations of neuronal populations. In the simulated data, CorSE unraveled the synchronizations. With the real in vitro MEA data, CorSE produced biologically plausible results. Since CorSE analyses continuous data, it is not affected by possibly poor spike or other event detection quality. We conclude that CorSE can reveal neuronal network synchronization based on in vitro MEA field potential measurements. CorSE is expected to be equally applicable also in the analysis of corresponding in vivo and ex vivo data analysis. publishedVersion Peer reviewed

10.3389/fncom.2016.00112https://doi.org/10.3389/fncom.2016.00112