Frontiers in Neuroinformatics (Mar 2013)

Accelerating compartmental modeling on a graphical processing unit

  • Roy eBen-Shalom,
  • Roy eBen-Shalom,
  • Gilad eLiberman,
  • Alon eKorngreen,
  • Alon eKorngreen

DOI
https://doi.org/10.3389/fninf.2013.00004
Journal volume & issue
Vol. 7

Abstract

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Compartmental modeling is a widely used tool in neurophysiology but the detail and scope of such models is frequently limited by lack of computational resources. Here we implement compartmental modeling on low cost Graphical Processing Units (GPUs). We use NVIDIA’s CUDA, which significantly increases simulation speed compared to NEURON. Testing two methods for solving the current diffusion equation system revealed which method is more useful for specific neuron morphologies. Regions of applicability were investigated using a range of simulations from a single membrane potential trace simulated in a simple fork morphology to multiple traces on multiple realistic cells. A runtime peak 150-fold faster than NEURON was achieved. This application can be used for statistical analysis and data fitting optimizations of compartmental models and may be used for simultaneously simulating large populations of neurons. Since GPUs are forging ahead and proving to be more cost effective than CPUs, this may significantly decrease the cost of computation power and open new computational possibilities for laboratories with limited budgets.

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