Institute of Science and Technology (IST) Austria, Am Campus 1, Klosterneuburg 3400, Austria.
Max Delbrück Center for Molecular Medicine, Robert Rössle Strasse 10, Berlin 13125, Germany.
J Struct Biol. 2021 Dec;213(4):107808. doi: 10.1016/j.jsb.2021.107808. Epub 2021 Nov 3.
A precise quantitative description of the ultrastructural characteristics underlying biological mechanisms is often key to their understanding. This is particularly true for dynamic extra- and intracellular filamentous assemblies, playing a role in cell motility, cell integrity, cytokinesis, tissue formation and maintenance. For example, genetic manipulation or modulation of actin regulatory proteins frequently manifests in changes of the morphology, dynamics, and ultrastructural architecture of actin filament-rich cell peripheral structures, such as lamellipodia or filopodia. However, the observed ultrastructural effects often remain subtle and require sufficiently large datasets for appropriate quantitative analysis. The acquisition of such large datasets has been enabled by recent advances in high-throughput cryo-electron tomography (cryo-ET) methods. This also necessitates the development of complementary approaches to maximize the extraction of relevant biological information. We have developed a computational toolbox for the semi-automatic quantification of segmented and vectorized filamentous networks from pre-processed cryo-electron tomograms, facilitating the analysis and cross-comparison of multiple experimental conditions. GUI-based components simplify the processing of data and allow users to obtain a large number of ultrastructural parameters describing filamentous assemblies. We demonstrate the feasibility of this workflow by analyzing cryo-ET data of untreated and chemically perturbed branched actin filament networks and that of parallel actin filament arrays. In principle, the computational toolbox presented here is applicable for data analysis comprising any type of filaments in regular (i.e. parallel) or random arrangement. We show that it can ease the identification of key differences between experimental groups and facilitate the in-depth analysis of ultrastructural data in a time-efficient manner.
准确描述生物学机制的超微结构特征通常是理解这些机制的关键。这对于动态的细胞外和细胞内丝状组装体尤其如此,它们在细胞运动、细胞完整性、胞质分裂、组织形成和维持中发挥作用。例如,肌动蛋白调节蛋白的遗传操作或调节经常导致富含肌动蛋白的细胞外周结构(如片状伪足或丝状伪足)的形态、动力学和超微结构发生变化。然而,观察到的超微结构效应往往仍然很微妙,需要足够大的数据集进行适当的定量分析。最近高通量冷冻电子断层扫描(cryo-ET)方法的进展使得获取这些大数据集成为可能。这也需要开发互补的方法来最大限度地提取相关的生物学信息。我们开发了一个用于从预处理的冷冻电子断层扫描图半自动量化分段和矢量化丝状网络的计算工具包,促进了多个实验条件的分析和交叉比较。基于 GUI 的组件简化了数据处理,并允许用户获得大量描述丝状组装体的超微结构参数。我们通过分析未经处理和化学扰动的分支肌动蛋白丝状网络以及平行肌动蛋白丝状阵列的 cryo-ET 数据来验证此工作流程的可行性。原则上,这里提出的计算工具包可用于包括任何类型的规则(即平行)或随机排列的丝状排列的数据分析。我们表明,它可以方便地识别实验组之间的关键差异,并以高效的方式促进对超微结构数据的深入分析。