在模拟肌动蛋白网络断层图中追踪随机定向细丝

Salim Sazzed, P. Scheible, Jing He, W. Wriggers
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引用次数: 0

摘要

distyostelium disideum filopodia中肌动蛋白网络的无序性质使得在噪声低温电子断层扫描中识别细丝极具挑战性。在这项工作中,我们提出了一个基于计算效率的动态规划框架,用于跟踪任意定向的肌动蛋白丝。从局部确定的种子点开始,它沿着特定长度的路径在三个笛卡尔坐标轴的45°范围内积累密度。这种新颖的方法涵盖了所有可能的方向,因此不需要像以前的工作那样假设一个主导方向。对于每个种子点,选择密度值最高的路径,作为候选灯丝段(CFS),当其路径密度值较高时,可能成为灯丝的一部分。随后的阶段包括通过分组和合并来识别具有高路径密度的CFSs组。合并步骤考虑cfs的相对方向和距离来连接它们。此外,还对CFSs进行了扩展,在一定程度上填补了噪声引起的间隙。在目前的原型软件中,我们专注于概念的证明,使用具有已知地面真理的噪声模拟层析成像,密切模仿实验地图的外观。我们获得了近乎完美的精度分数0.999,但这一成功是以较低的召回分数0.462为代价的,这是由于假阴性。我们讨论了依赖关系以及当前灯丝合并需要克服的限制,以在未来实现更高的召回分数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tracing Randomly Oriented Filaments in a Simulated Actin Network Tomogram
The disordered nature of the actin network in Dictyostelium discoideum filopodia makes identifying filaments within noisy cryo-electron tomograms extremely challenging. In this work, we present a computationally efficient dynamic programming-based framework for tracing arbitrarily oriented actin filaments. Starting from locally determined seed points, it accumulates densities along paths of a particular length within 45° of the three Cartesian coordinate axes. This novel approach covers all possible orientations, so there is no need to assume a dominant direction as in earlier work. For each seed point, the path with the highest density value is selected, and it acts as a candidate filament segment (CFS) that is likely to form a part of a filament when it has a high path density value. The subsequent stages involve identifying groups of CFSs with high path densities by binning and merging them. The merging step considers the relative orientations and distances of CFSs to connect them. In addition, the CFSs are extended to fill the noise-induced gaps to some extent. In the current prototype software, we focused on the proof of the concept, using a noisy simulated tomogram with a known ground truth that closely mimics the appearance of an experimental map. We achieved an almost perfect precision score of 0.999, but this success came at the expense of a lower recall score 0.462 due to false negatives. We discuss the dependencies as well as the limitations of the current filament merging that need to be overcome to achieve a higher recall score in the future.
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