Tracing Filaments in Simulated 3D Cryo-Electron Tomography Maps Using a Fast Dynamic Programming Algorithm.

Salim Sazzed, Peter Scheible, Jing He, Willy Wriggers
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引用次数: 2

Abstract

We propose a fast, dynamic programming-based framework for tracing actin filaments in 3D maps of subcellular components in cryo-electron tomography. The approach can identify high-density filament segments in various orientations, but it takes advantage of the arrangement of actin filaments within cells into more or less tightly aligned bundles. Assuming that the tomogram can be rotated such that the filaments can be oriented to be directed in a dominant direction (i.e., the X, Y, or Z axis), the proposed framework first identifies local seed points that form the origin of candidate filament segments (CFSs), which are then grown from the seeds using a fast dynamic programming algorithm. The CFS length l can be tuned to the nominal resolution of the tomogram or the separation of desired features, or it can be used to restrict the curvature of filaments that deviate from the overall bundle direction. In subsequent steps, the CFSs are filtered based on backward tracing and path density analysis. Finally, neighboring CFSs are fused based on a collinearity criterion to bridge any noise artifacts in the 3D map that would otherwise fractionalize the tracing. We validate our proposed framework on simulated tomograms that closely mimic the features and appearance of experimental maps.

Abstract Image

Abstract Image

利用快速动态规划算法在模拟三维冷冻电子断层扫描图中追踪细丝。
我们提出了一个快速的,基于动态规划的框架,用于在低温电子断层扫描的亚细胞成分的3D地图中追踪肌动蛋白丝。这种方法可以识别不同方向的高密度丝段,但它利用了细胞内肌动蛋白丝排列成或多或少紧密排列的束的优势。假设断层图可以旋转,使得细丝可以定向到主导方向(即X, Y或Z轴),所提出的框架首先确定形成候选细丝片段(CFSs)起源的局部种子点,然后使用快速动态规划算法从种子中生长。CFS长度l可以调整到层析图的标称分辨率或所需特征的分离,或者它可以用来限制偏离整体束方向的细丝的曲率。在随后的步骤中,基于反向跟踪和路径密度分析对CFSs进行过滤。最后,基于共线性准则融合相邻的CFSs,以桥接3D地图中的任何噪声伪影,否则将分割跟踪。我们在模拟层析图上验证了我们提出的框架,这些层析图密切模仿实验地图的特征和外观。
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