Schmitt Stephan, Evers Jan Felix, Duch Carsten, Scholz Michael, Obermayer Klaus
Department of Electrical Engineering and Computer Science, Berlin University of Technology, FR 2-1, D-10587 Berlin, Germany.
Neuroimage. 2004 Dec;23(4):1283-98. doi: 10.1016/j.neuroimage.2004.06.047.
Exact geometrical reconstructions of neuronal architecture are indispensable for the investigation of neuronal function. Neuronal shape is important for the wiring of networks, and dendritic architecture strongly affects neuronal integration and firing properties as demonstrated by modeling approaches. Confocal microscopy allows to scan neurons with submicron resolution. However, it is still a tedious task to reconstruct complex dendritic trees with fine structures just above voxel resolution. We present a framework assisting the reconstruction. User time investment is strongly reduced by automatic methods, which fit a skeleton and a surface to the data, while the user can interact and thus keeps full control to ensure a high quality reconstruction. The reconstruction process composes a successive gain of metric parameters. First, a structural description of the neuron is built, including the topology and the exact dendritic lengths and diameters. We use generalized cylinders with circular cross sections. The user provides a rough initialization by marking the branching points. The axes and radii are fitted to the data by minimizing an energy functional, which is regularized by a smoothness constraint. The investigation of proximity to other structures throughout dendritic trees requires a precise surface reconstruction. In order to achieve accuracy of 0.1 microm and below, we additionally implemented a segmentation algorithm based on geodesic active contours that allow for arbitrary cross sections and uses locally adapted thresholds. In summary, this new reconstruction tool saves time and increases quality as compared to other methods, which have previously been applied to real neurons.
对神经元结构进行精确的几何重建对于研究神经元功能而言不可或缺。神经元的形状对于神经网络的连接至关重要,并且正如建模方法所表明的那样,树突结构强烈影响神经元的整合和放电特性。共聚焦显微镜能够以亚微米分辨率对神经元进行扫描。然而,要重建具有仅略高于体素分辨率的精细结构的复杂树突树仍然是一项繁琐的任务。我们提出了一个辅助重建的框架。自动方法极大地减少了用户的时间投入,这些方法将骨架和表面拟合到数据上,同时用户可以进行交互,从而始终保持完全控制权以确保高质量的重建。重建过程包括连续获取度量参数。首先,构建神经元的结构描述,包括拓扑结构以及精确的树突长度和直径。我们使用具有圆形横截面的广义圆柱体。用户通过标记分支点提供一个粗略的初始化。通过最小化一个能量泛函将轴和半径拟合到数据上,该能量泛函通过平滑约束进行正则化。在整个树突树中研究与其他结构的接近程度需要精确的表面重建。为了达到0.1微米及以下的精度,我们额外实现了一种基于测地线活动轮廓的分割算法,该算法允许任意横截面并使用局部适应的阈值。总之,与之前应用于真实神经元的其他方法相比,这个新的重建工具节省了时间并提高了质量。