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Simulating extracted connectomes

Jonathan Gornet, View ORCID ProfileLouis K. Scheffer
doi: https://doi.org/10.1101/177113
Jonathan Gornet
Howard Hughes Medical Institute
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Louis K. Scheffer
Howard Hughes Medical Institute
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Abstract

Connectomes derived from volume EM imaging of the brain can generate detailed physical models of every neuron, and simulators such as NEURON or GENESIS are designed to work with such models. In principal, combining these technologies, plus transmitter and channel models, should allow detailed and accurate simulation of real neural circuits. Here we experiment with this combination, using a well-studied system (motion detection in Drosophila). Since simulation requires both the physical geometry (which we have) and the models of the synapses (which are not currently available), we built approximate synapses corresponding to their known and estimated function. Once we did so, we reproduced direction selectivity in T4 cells, one of the main functions of this neural circuit. This verified the basic functionality of both extraction and simulations, and provided a biologically relevant computation we could use in further experiments. We then compared models with different degrees of physical realism, from full detailed models down to models consisting of a single node, to examine the tradeoff of simulation resources required versus accuracy achieved.

Our results show that much simpler models may be adequate, at least in the case of medulla neurons in Drosophila. Such models can be easily derived from fully detailed models, and result in simulations that are much smaller, much faster, and accurate enough for many purposes. Biologically, we show that a lumped neuron model reproduces the main motion detector operation, confirming the result of Gruntman[1], that dendritic compution is not required for this function.

Copyright 
The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-NC-ND 4.0 International license.
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Posted August 16, 2017.
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Simulating extracted connectomes
Jonathan Gornet, Louis K. Scheffer
bioRxiv 177113; doi: https://doi.org/10.1101/177113
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Simulating extracted connectomes
Jonathan Gornet, Louis K. Scheffer
bioRxiv 177113; doi: https://doi.org/10.1101/177113

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