Contour, a semi-automated segmentation and quantitation tool for cryo-soft-X-ray tomography.

Biological imaging Pub Date : 2022-05-17 eCollection Date: 2022-01-01 DOI:10.1017/S2633903X22000046
Kamal L Nahas, João Ferreira Fernandes, Nina Vyas, Colin Crump, Stephen Graham, Maria Harkiolaki
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Abstract

Cryo-soft-X-ray tomography is being increasingly used in biological research to study the morphology of cellular compartments and how they change in response to different stimuli, such as viral infections. Segmentation of these compartments is limited by time-consuming manual tools or machine learning algorithms that require extensive time and effort to train. Here we describe Contour, a new, easy-to-use, highly automated segmentation tool that enables accelerated segmentation of tomograms to delineate distinct cellular compartments. Using Contour, cellular structures can be segmented based on their projection intensity and geometrical width by applying a threshold range to the image and excluding noise smaller in width than the cellular compartments of interest. This method is less laborious and less prone to errors from human judgement than current tools that require features to be manually traced, and does not require training datasets as would machine-learning driven segmentation. We show that high-contrast compartments such as mitochondria, lipid droplets, and features at the cell surface can be easily segmented with this technique in the context of investigating herpes simplex virus 1 infection. Contour can extract geometric measurements from 3D segmented volumes, providing a new method to quantitate cryo-soft-X-ray tomography data. Contour can be freely downloaded at github.com/kamallouisnahas/Contour.

Abstract Image

Abstract Image

Abstract Image

Contour:一种用于冷冻X射线断层扫描的半自动分割和定量工具
摘要X射线冷冻断层扫描正越来越多地用于生物学研究,以研究细胞隔室的形态以及它们如何在不同刺激(如病毒感染)下发生变化。这些隔间的分割受到耗时的手动工具或机器学习算法的限制,这些工具或算法需要大量的时间和精力来训练。在这里,我们描述了Contour,这是一种新的、易于使用的、高度自动化的分割工具,能够加速断层图像的分割,以描绘不同的细胞隔室。使用Contour,可以通过将阈值范围应用于图像并排除宽度小于感兴趣的细胞隔室的噪声,基于细胞结构的投影强度和几何宽度来分割细胞结构。与当前需要手动跟踪特征的工具相比,这种方法不那么费力,也不容易出现人为判断的错误,而且它不需要像机器学习驱动的分割那样训练数据集。我们表明,在研究单纯疱疹病毒1型感染的背景下,使用该技术可以很容易地分割线粒体、脂滴和细胞表面特征等高对比度区室。Contour可以从3D分割体积中提取几何测量值,为定量X射线冷冻断层扫描数据提供了一种新方法。Contour可以在github.com/kamallouisnahas/Contour上免费下载。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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