Abdellah Marwan, Hernando Juan, Antille Nicolas, Eilemann Stefan, Markram Henry, Schürmann Felix
Blue Brain Project (BBP), École Polytechnique Fédérale de Lausanne (EPFL), Biotech Campus, Chemin des Mines 9, Geneva, 1202, Switzerland.
BMC Bioinformatics. 2017 Sep 13;18(Suppl 10):402. doi: 10.1186/s12859-017-1788-4.
We present a software workflow capable of building large scale, highly detailed and realistic volumetric models of neocortical circuits from the morphological skeletons of their digitally reconstructed neurons. The limitations of the existing approaches for creating those models are explained, and then, a multi-stage pipeline is discussed to overcome those limitations. Starting from the neuronal morphologies, we create smooth piecewise watertight polygonal models that can be efficiently utilized to synthesize continuous and plausible volumetric models of the neurons with solid voxelization. The somata of the neurons are reconstructed on a physically-plausible basis relying on the physics engine in Blender.
Our pipeline is applied to create 55 exemplar neurons representing the various morphological types that are reconstructed from the somatsensory cortex of a juvenile rat. The pipeline is then used to reconstruct a volumetric slice of a cortical circuit model that contains ∼210,000 neurons. The applicability of our pipeline to create highly realistic volumetric models of neocortical circuits is demonstrated with an in silico imaging experiment that simulates tissue visualization with brightfield microscopy. The results were evaluated with a group of domain experts to address their demands and also to extend the workflow based on their feedback.
A systematic workflow is presented to create large scale synthetic tissue models of the neocortical circuitry. This workflow is fundamental to enlarge the scale of in silico neuroscientific optical experiments from several tens of cubic micrometers to a few cubic millimeters.
Modelling and Simulation.
我们提出了一种软件工作流程,该流程能够从数字重建神经元的形态骨架构建大规模、高度详细且逼真的新皮层回路体积模型。解释了创建这些模型的现有方法的局限性,然后讨论了一个多阶段管道来克服这些局限性。从神经元形态开始,我们创建光滑的分段水密多边形模型,这些模型可通过实体体素化有效地用于合成连续且合理的神经元体积模型。神经元的胞体在Blender中的物理引擎基础上进行物理上合理的重建。
我们的管道被应用于创建55个代表从幼年大鼠体感皮层重建的各种形态类型的示例神经元。然后,该管道用于重建包含约210,000个神经元的皮层回路模型的体积切片。通过模拟明场显微镜组织可视化的计算机成像实验,证明了我们的管道在创建高度逼真的新皮层回路体积模型方面的适用性。结果由一组领域专家进行评估,以满足他们的需求,并根据他们的反馈扩展工作流程。
提出了一种系统的工作流程来创建新皮层回路的大规模合成组织模型。该工作流程对于将计算机神经科学光学实验的规模从几十立方微米扩大到几立方毫米至关重要。
建模与仿真。