The Leslie and Susan Gonda Interdisciplinary Brain Research Center, Bar-Ilan University Ramat Gan, Israel ; The Mina and Everard Goodman Faculty of Life Sciences, Bar-Ilan University Ramat Gan, Israel.
Front Neuroinform. 2013 Mar 18;7:4. doi: 10.3389/fninf.2013.00004. eCollection 2013.
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), 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 the CPU 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.
分室建模是神经生理学中广泛使用的工具,但由于计算资源的缺乏,此类模型的细节和范围经常受到限制。在这里,我们在低成本图形处理单元 (GPU) 上实现了分室建模,与 NEURON 相比,这显著提高了模拟速度。测试了两种求解电流扩散方程系统的方法,揭示了哪种方法对特定神经元形态更有用。使用从单个简单叉形形态的单个膜电位迹线模拟到多个真实细胞上的多个迹线的一系列模拟,研究了适用区域。实现了比 CPU 快 150 倍的峰值运行时间。该应用程序可用于分室模型的统计分析和数据拟合优化,也可用于同时模拟大量神经元。由于 GPU 正在迅速发展并被证明比 CPU 更具成本效益,这可能会显著降低计算能力的成本,并为预算有限的实验室开辟新的计算可能性。