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Dive into the research topics where Maxym Myroshnychenko is active.

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Featured researches published by Maxym Myroshnychenko.


The Journal of Neuroscience | 2016

Rich-Club Organization in Effective Connectivity among Cortical Neurons

Sunny Nigam; Masanori Shimono; Shinya Ito; Fang-Chin Yeh; Nicholas Timme; Maxym Myroshnychenko; Christopher C. Lapish; Zachary Tosi; Pawel Hottowy; Wesley C. Smith; Sotiris C. Masmanidis; Alan M. Litke; Olaf Sporns; John M. Beggs

The performance of complex networks, like the brain, depends on how effectively their elements communicate. Despite the importance of communication, it is virtually unknown how information is transferred in local cortical networks, consisting of hundreds of closely spaced neurons. To address this, it is important to record simultaneously from hundreds of neurons at a spacing that matches typical axonal connection distances, and at a temporal resolution that matches synaptic delays. We used a 512-electrode array (60 μm spacing) to record spontaneous activity at 20 kHz from up to 500 neurons simultaneously in slice cultures of mouse somatosensory cortex for 1 h at a time. We applied a previously validated version of transfer entropy to quantify information transfer. Similar to in vivo reports, we found an approximately lognormal distribution of firing rates. Pairwise information transfer strengths also were nearly lognormally distributed, similar to reports of synaptic strengths. Some neurons transferred and received much more information than others, which is consistent with previous predictions. Neurons with the highest outgoing and incoming information transfer were more strongly connected to each other than chance, thus forming a “rich club.” We found similar results in networks recorded in vivo from rodent cortex, suggesting the generality of these findings. A rich-club structure has been found previously in large-scale human brain networks and is thought to facilitate communication between cortical regions. The discovery of a small, but information-rich, subset of neurons within cortical regions suggests that this population will play a vital role in communication, learning, and memory. SIGNIFICANCE STATEMENT Many studies have focused on communication networks between cortical brain regions. In contrast, very few studies have examined communication networks within a cortical region. This is the first study to combine such a large number of neurons (several hundred at a time) with such high temporal resolution (so we can know the direction of communication between neurons) for mapping networks within cortex. We found that information was not transferred equally through all neurons. Instead, ∼70% of the information passed through only 20% of the neurons. Network models suggest that this highly concentrated pattern of information transfer would be both efficient and robust to damage. Therefore, this work may help in understanding how the cortex processes information and responds to neurodegenerative diseases.


PLOS Computational Biology | 2016

High-Degree Neurons Feed Cortical Computations.

Nicholas Timme; Shinya Ito; Maxym Myroshnychenko; Sunny Nigam; Masanori Shimono; Fang-Chin Yeh; Pawel Hottowy; Alan Litke; John M. Beggs

Recent work has shown that functional connectivity among cortical neurons is highly varied, with a small percentage of neurons having many more connections than others. Also, recent theoretical developments now make it possible to quantify how neurons modify information from the connections they receive. Therefore, it is now possible to investigate how information modification, or computation, depends on the number of connections a neuron receives (in-degree) or sends out (out-degree). To do this, we recorded the simultaneous spiking activity of hundreds of neurons in cortico-hippocampal slice cultures using a high-density 512-electrode array. This preparation and recording method combination produced large numbers of neurons recorded at temporal and spatial resolutions that are not currently available in any in vivo recording system. We utilized transfer entropy (a well-established method for detecting linear and nonlinear interactions in time series) and the partial information decomposition (a powerful, recently developed tool for dissecting multivariate information processing into distinct parts) to quantify computation between neurons where information flows converged. We found that computations did not occur equally in all neurons throughout the networks. Surprisingly, neurons that computed large amounts of information tended to receive connections from high out-degree neurons. However, the in-degree of a neuron was not related to the amount of information it computed. To gain insight into these findings, we developed a simple feedforward network model. We found that a degree-modified Hebbian wiring rule best reproduced the pattern of computation and degree correlation results seen in the real data. Interestingly, this rule also maximized signal propagation in the presence of network-wide correlations, suggesting a mechanism by which cortex could deal with common random background input. These are the first results to show that the extent to which a neuron modifies incoming information streams depends on its topological location in the surrounding functional network.


BMC Neuroscience | 2014

Multiplex networks of cortical and hippocampal neurons revealed at different timescales

Nicholas Timme; Shinya Ito; Maxym Myroshnychenko; Fang-Chin Yeh; Emma M. Hiolski; Alan Litke; John M. Beggs

Recent studies have emphasized the importance of multiplex networks – interdependent networks with shared nodes and different types of connections – in systems primarily outside of neuroscience. Though the multiplex properties of networks are frequently not considered, most networks are actually multiplex networks and the multiplex specific features of networks can greatly affect network behavior (e.g. fault tolerance). Thus, the study of networks of neurons could potentially be greatly enhanced using a multiplex perspective. Given the wide range of temporally dependent rhythms and phenomena present in neural systems, we chose to examine multiplex networks of individual neurons with time scale dependent connections. To study these networks, we used transfer entropy – an information theoretic quantity that can be used to measure linear and nonlinear interactions – to systematically measure the connectivity between individual neurons at different time scales in cortical and hippocampal slice cultures. We recorded the spiking activity of almost 12,000 neurons across 60 tissue samples using a 512-electrode array with 60 micrometer inter-electrode spacing and 50 microsecond temporal resolution. To the best of our knowledge, this preparation and recording method represents a superior combination of number of recorded neurons and temporal and spatial recording resolutions to any currently available in vivo system. We found that highly connected neurons (“hubs”) were localized to certain time scales, which, we hypothesize, increases the fault tolerance of the network. Conversely, a large proportion of non-hub neurons were not localized to certain time scales. In addition, we found that long and short time scale connectivity was uncorrelated. Finally, we found that long time scale networks were significantly less modular and more disassortative than short time scale networks in both tissue types. As far as we are aware, this analysis represents the first systematic study of temporally dependent multiplex networks among individual neurons.


Cerebral Cortex | 2017

Temporal Dynamics of Hippocampal and Medial Prefrontal Cortex Interactions During the Delay Period of a Working Memory-Guided Foraging Task

Maxym Myroshnychenko; Jeremy K. Seamans; Anthony G. Phillips; Christopher C. Lapish

Abstract Connections between the hippocampus (HC) and medial prefrontal cortex (mPFC) are critical for working memory; however, the precise contribution of this pathway is a matter of debate. One suggestion is that it may stabilize retrospective memories of recently encountered task‐relevant information. Alternatively, it may be involved in encoding prospective memories, or the internal representation of future goals. To explore these possibilities, simultaneous extracellular recordings were made from mPFC and HC of rats performing the delayed spatial win‐shift on a radial maze. Each trial consisted of a training‐phase (when 4 randomly chosen arms were open) and test phase (all 8 arms were open but only previously blocked arms contained food) separated by a 60‐s delay. Theta power was highest during the delay, and mPFC units were more likely to become entrained to hippocampal theta as the delay progressed. Training and test phase performance were accurately predicted by a linear classifier, and there was a transition in classification for training‐phase to test‐phase activity patterns throughout the delay on trials where the rats performed well. These data suggest that the HC and mPFC become more strongly synchronized as mPFC circuits preferentially shift from encoding retrospective to prospective information.


PMC | 2016

Rich-Club Organization in Effective Connectivity among Cortical Neurons.

Sunny Nigam; Masanori Shimono; Shinya Ito; Fang-Chin Yeh; Nicholas Timme; Maxym Myroshnychenko; Christopher C. Lapish; Zachary Tosi; Pawel Hottowy; Wesley C. Smith; Sotiris C. Masmanidis; Alan Litke; Olaf Sporns; John M. Beggs


PMC | 2016

Contribution of synchronized GABAergic neurons to dopaminergic neuron firing and bursting

Ekaterina Morozova; Maxym Myroshnychenko; Denis Zakharov; Matteo di Volo; Boris Gutkin; Christopher C. Lapish; Alexey Kuznetsov


PMC | 2015

A role of local VTA GABAergic neurons in mediating dopamine neuron response to nicotine

Ekaterina Morozova; Maxym Myroshnychenko; Marie Rooy; Boris Gutkin; Christopher C. Lapish; Alexey Kuznetsov


BMC Neuroscience | 2015

Prefrontal-hippocampal theta coherence, sharp wave ripples, and bursts of cortical unit activity underlie choices and encoding in the radial arm maze

Maxym Myroshnychenko; Christopher C. Lapish

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John M. Beggs

Indiana University Bloomington

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Nicholas Timme

Indiana University Bloomington

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Alan Litke

University of California

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Masanori Shimono

Indiana University Bloomington

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Sunny Nigam

Indiana University Bloomington

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Fang-Chin Yeh

National University of Singapore

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Pawel Hottowy

AGH University of Science and Technology

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Ekaterina Morozova

Indiana University Bloomington

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Olaf Sporns

Indiana University Bloomington

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