Automated point-neuron simplification of data-driven microcircuit models
Christian R\"ossert, Christian Pozzorini, Giuseppe Chindemi, Andrew P., Davison, Csaba Eroe, James King, Taylor H. Newton, Max Nolte, Srikanth, Ramaswamy, Michael W. Reimann, Willem Wybo, Marc-Oliver Gewaltig, Wulfram, Gerstner, Henry Markram, Idan Segev, Eilif Muller

TL;DR
This paper introduces an automated method to simplify detailed microcircuit models into point-neuron models, maintaining accuracy around a specified operating point and enabling efficient updates and broader applicability.
Contribution
The authors present a modular, automated workflow for reducing morphologically detailed microcircuit models to constrained point-neuron models without manual intervention.
Findings
Simplified network closely matches detailed model results.
The approach is applicable to various neuron and synapse models.
The simplified network is slightly more sub-critical but otherwise accurate.
Abstract
A method is presented for the reduction of morphologically detailed microcircuit models to a point-neuron representation without human intervention. The simplification occurs in a modular workflow, in the neighborhood of a user specified network activity state for the reference model, the "operating point". First, synapses are moved to the soma, correcting for dendritic filtering by low-pass filtering the delivered synaptic current. Filter parameters are computed numerically and independently for inhibitory and excitatory input using a Green's function approach. Next, point-neuron models for each neuron in the microcircuit are fit to their respective morphologically detailed counterparts. Here, generalized integrate-and-fire point neuron models are used, leveraging a recently published fitting toolbox. The fits are constrained by currents and voltages computed in the morphologically…
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Taxonomy
TopicsNeural dynamics and brain function · Advanced Memory and Neural Computing · Neuroscience and Neural Engineering
