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Automated Tracing of Neurites from Light Microscopy Stacks of Images

机译:从光学显微镜图像堆栈自动追踪神经突

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Automating the process of neural circuit reconstruction on a large-scale is one of the foremost challenges in the field of neuroscience. In this study we examine the methodology for circuit reconstruction from three-dimensional light microscopy (LM) stacks of images. We show how the minimal error-rate of an ideal reconstruction procedure depends on the density of labeled neurites, giving rise to the fundamental limitation of an LM based approach for neural circuit research. Circuit reconstruction procedures typically involve steps related to neuron labeling and imaging, and subsequent image pre-processing and tracing of neurites. In this study, we focus on the last step-detection of traces of neurites from already pre-processed stacks of images. Our automated tracing algorithm, implemented as part of the Neural Circuit Tracer software package, consists of the following main steps. First, image stack is filtered to enhance labeled neurites. Second, centerline of the neurites is detected and optimized. Finally, individual branches of the optimal trace are merged into trees based on a cost minimization approach. The cost function accounts for branch,orientations, distances between their end-points, curvature of the merged structure, and its intensity. The algorithm is capable of connecting branches which appear broken due to imperfect labeling and can resolve situations where branches appear to be fused due the limited resolution of light microscopy. The Neural Circuit Tracer software is designed to automatically incorporate ImageJ plug-ins and functions written in MatLab and provides roughly a 10-fold increases in speed in comparison to manual tracing.
机译:大规模自动化神经回路重建过程是神经科学领域的首要挑战之一。在这项研究中,我们研究了从三维光学显微镜(LM)图像堆叠中重建电路的方法。我们展示了理想重建程序的最小错误率如何取决于标记神经突的密度,从而引起了基于LM的神经回路研究方法的基本局限性。电路重建程序通常涉及与神经元标记和成像有关的步骤,以及后续的神经突像预处理和跟踪。在这项研究中,我们专注于从已经预处理过的图像堆栈中检测神经突痕迹的最后一步。作为神经电路跟踪程序软件包的一部分实现的我们的自动跟踪算法,包括以下主要步骤。首先,对图像堆栈进行过滤以增强标记的神经突。其次,检测并优化神经突的中心线。最后,基于成本最小化方法,将最佳迹线的各个分支合并到树中。成本函数考虑分支,方向,端点之间的距离,合并结构的曲率及其强度。该算法能够连接由于标记不完善而显得折断的分支,并且可以解决由于光学显微镜分辨率有限而导致分支融合的情况。 Neural Circuit Tracer软件旨在自动合并ImageJ插件和用MatLab编写的功能,与手动跟踪相比,其速度提高了大约10倍。

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