Darrow Michele C, Luengo Imanol, Basham Mark, Spink Matthew C, Irvine Sarah, French Andrew P, Ashton Alun W, Duke Elizabeth M H
Science Division, Harwell Science and Innovation Campus, Diamond Light Source;
Science Division, Harwell Science and Innovation Campus, Diamond Light Source; School of Computer Science, University of Nottingham.
J Vis Exp. 2017 Aug 23(126):56162. doi: 10.3791/56162.
Segmentation is the process of isolating specific regions or objects within an imaged volume, so that further study can be undertaken on these areas of interest. When considering the analysis of complex biological systems, the segmentation of three-dimensional image data is a time consuming and labor intensive step. With the increased availability of many imaging modalities and with automated data collection schemes, this poses an increased challenge for the modern experimental biologist to move from data to knowledge. This publication describes the use of SuRVoS Workbench, a program designed to address these issues by providing methods to semi-automatically segment complex biological volumetric data. Three datasets of differing magnification and imaging modalities are presented here, each highlighting different strategies of segmenting with SuRVoS. Phase contrast X-ray tomography (microCT) of the fruiting body of a plant is used to demonstrate segmentation using model training, cryo electron tomography (cryoET) of human platelets is used to demonstrate segmentation using super- and megavoxels, and cryo soft X-ray tomography (cryoSXT) of a mammalian cell line is used to demonstrate the label splitting tools. Strategies and parameters for each datatype are also presented. By blending a selection of semi-automatic processes into a single interactive tool, SuRVoS provides several benefits. Overall time to segment volumetric data is reduced by a factor of five when compared to manual segmentation, a mainstay in many image processing fields. This is a significant savings when full manual segmentation can take weeks of effort. Additionally, subjectivity is addressed through the use of computationally identified boundaries, and splitting complex collections of objects by their calculated properties rather than on a case-by-case basis.
分割是在成像体积内分离特定区域或对象的过程,以便能够对这些感兴趣的区域进行进一步研究。在考虑对复杂生物系统进行分析时,三维图像数据的分割是一个耗时且费力的步骤。随着多种成像方式的可用性增加以及自动化数据收集方案的出现,这给现代实验生物学家从数据转向知识带来了更大的挑战。本出版物描述了SuRVoS Workbench的使用,这是一个旨在通过提供半自动分割复杂生物体积数据的方法来解决这些问题的程序。这里展示了三个具有不同放大倍数和成像方式的数据集,每个数据集都突出了使用SuRVoS进行分割的不同策略。植物子实体的相衬X射线断层扫描(显微CT)用于演示使用模型训练进行分割,人类血小板的冷冻电子断层扫描(冷冻ET)用于演示使用超体素和巨体素进行分割,哺乳动物细胞系的冷冻软X射线断层扫描(冷冻SXT)用于演示标签分割工具。还介绍了每种数据类型的策略和参数。通过将一系列半自动过程融合到一个单一的交互式工具中,SuRVoS带来了诸多益处。与许多图像处理领域的主要方法手动分割相比,分割体积数据的总体时间减少了五倍。当完全手动分割可能需要数周时间时,这是一个显著的节省。此外,通过使用计算确定的边界以及根据计算属性而非逐个案例来分割复杂的对象集合,解决了主观性问题。