Software for Brain Network Simulations: A Comparative Study

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Date

2017

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Volume Title

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Frontiers Media Sa

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GOLD

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Yes

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1

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Abstract

Numerical simulations of brain networks are a critical part of our efforts in understanding brain functions under pathological and normal conditions. For several decades, the community has developed many software packages and simulators to accelerate research in computational neuroscience. In this article, we select the three most popular simulators, as determined by the number of models in the ModelDB database, such as NEURON, GENESIS, and BRIAN, and perform an independent evaluation of these simulators. In addition, we study NEST, one of the lead simulators of the Human Brain Project. First, we study them based on one of the most important characteristics, the range of supported models. Our investigation reveals that brain network simulators may be biased toward supporting a specific set of models. However, all simulators tend to expand the supported range of models by providing a universal environment for the computational study of individual neurons and brain networks. Next, our investigations on the characteristics of computational architecture and efficiency indicate that all simulators compile the most computationally intensive procedures into binary code, with the aim of maximizing their computational performance. However, not all simulators provide the simplest method for module development and/or guarantee efficient binary code. Third, a study of their amenability for high-performance computing reveals that NEST can almost transparently map an existing model on a cluster or multicore computer, while NEURON requires code modification if the model developed for a single computer has to be mapped on a computational cluster. Interestingly, parallelization is the weakest characteristic of BRIAN, which provides no support for cluster computations and limited support for multicore computers. Fourth, we identify the level of user support and frequency of usage for all simulators. Finally, we carry out an evaluation using two case studies: a large network with simplified neural and synaptic models and a small network with detailed models. These two case studies allow us to avoid any bias toward a particular software package. The results indicate that BRIAN provides the most concise language for both cases considered. Furthermore, as expected, NEST mostly favors large network models, while NEURON is better suited for detailed models. Overall, the case studies reinforce our general observation that simulators have a bias in the computational performance toward specific types of the brain network models.

Description

Keywords

computational neuroscience, brain network simulators, spiking neural networks, comparative study, phenomenological model, conductance-based model, Spiking neural networks, brain network simulators, Phenomenological model, Conductance-based model, Neurosciences. Biological psychiatry. Neuropsychiatry, conductance-based model, Brain network simulators, phenomenological model, Computational neuroscience, spiking neural networks, Comparative study, comparative study, computational neuroscience, RC321-571, Neuroscience

Turkish CoHE Thesis Center URL

Fields of Science

0301 basic medicine, 03 medical and health sciences, 0302 clinical medicine

Citation

WoS Q

Q2

Scopus Q

Q2
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OpenCitations Citation Count
48

Source

Frontiers in Neuroinformatics

Volume

11

Issue

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End Page

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Citations

CrossRef : 8

Scopus : 46

PubMed : 25

Captures

Mendeley Readers : 150

SCOPUS™ Citations

46

checked on Feb 01, 2026

Web of Science™ Citations

44

checked on Feb 01, 2026

Page Views

3

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