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Rapid Reconstruction of 3D Neuronal Morphology from Light Microscopy Images with Augmented Rayburst Sampling

机译:从光学显微镜图像和增强的Rayburst采样快速重建3D神经元形态

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摘要

Digital reconstruction of three-dimensional (3D) neuronal morphology from light microscopy images provides a powerful technique for analysis of neural circuits. It is time-consuming to manually perform this process. Thus, efficient computer-assisted approaches are preferable. In this paper, we present an innovative method for the tracing and reconstruction of 3D neuronal morphology from light microscopy images. The method uses a prediction and refinement strategy that is based on exploration of local neuron structural features. We extended the rayburst sampling algorithm to a marching fashion, which starts from a single or a few seed points and marches recursively forward along neurite branches to trace and reconstruct the whole tree-like structure. A local radius-related but size-independent hemispherical sampling was used to predict the neurite centerline and detect branches. Iterative rayburst sampling was performed in the orthogonal plane, to refine the centerline location and to estimate the local radius. We implemented the method in a cooperative 3D interactive visualization-assisted system named flNeuronTool. The source code in C++ and the binaries are freely available at . We validated and evaluated the proposed method using synthetic data and real datasets from the Digital Reconstruction of Axonal and Dendritic Morphology (DIADEM) challenge. Then, flNeuronTool was applied to mouse brain images acquired with the Micro-Optical Sectioning Tomography (MOST) system, to reconstruct single neurons and local neural circuits. The results showed that the system achieves a reasonable balance between fast speed and acceptable accuracy, which is promising for interactive applications in neuronal image analysis.
机译:从光学显微镜图像对三维(3D)神经元形态进行数字重建,为分析神经回路提供了强大的技术。手动执行此过程非常耗时。因此,有效的计算机辅助方法是可取的。在本文中,我们提出了一种从光学显微镜图像中追踪和重建3D神经元形态的创新方法。该方法使用基于局部神经元结构特征探索的预测和优化策略。我们将rayburst采样算法扩展为一种行军方式,该方式从单个或几个种子点开始,然后沿着神经突分支递归前进,以跟踪和重建整个树状结构。局部半径相关但大小无关的半球采样被用来预测神经突中心线并检测分支。在正交平面中执行迭代射线爆破采样,以精炼中心线位置并估计局部半径。我们在名为flNeuronTool的协作3D交互式可视化辅助系统中实现了该方法。 C ++的源代码和二进制文件可在上免费获得。我们使用轴突和树突形态学数字重建(DIADEM)挑战中的合成数据和真实数据集验证并评估了提出的方法。然后,将flNeuronTool应用于通过微光学断层扫描(MOST)系统获取的小鼠大脑图像,以重建单个神经元和局部神经回路。结果表明,该系统在快速度和可接受的精度之间实现了合理的平衡,这在神经元图像分析的交互式应用中很有希望。

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