OrgaMeas:集成细胞器图像分析所有过程的流水线

IF 4.6 2区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY
Taiki Baba, Akimi Inoue, Susumu Tanimura, Kohsuke Takeda
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引用次数: 0

摘要

尽管图像分析已成为细胞器动力学研究的关键技术,但常用的图像处理方法,如基于阈值的分割和手动设置感兴趣区域(roi),容易出错且费力。在这里,我们提出了一种称为OrgaMeas的高精度高通量图像分析管道,用于测量细胞器的形态和动力学。该管道主要由两个基于深度学习的工具组成:OrgaSegNet和DIC2Cells。OrgaSegNet通过对不同细胞器进行精确的分割来量化它们的许多方面。为了进一步处理单细胞水平的分割数据,DIC2Cells通过对差分干涉对比度(DIC)图像中的单个细胞进行精确分割,实现ROI设置的自动化。该管道的设计成本低,需要较少的编码,以提供一个易于使用的平台。因此,我们相信OrgaMeas有潜力很容易地应用于基础生物医学研究,并有望应用于其他实际用途,如药物发现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

OrgaMeas: A pipeline that integrates all the processes of organelle image analysis

OrgaMeas: A pipeline that integrates all the processes of organelle image analysis
Although image analysis has emerged as a key technology in the study of organelle dynamics, the commonly used image-processing methods, such as threshold-based segmentation and manual setting of regions of interests (ROIs), are error-prone and laborious. Here, we present a highly accurate high-throughput image analysis pipeline called OrgaMeas for measuring the morphology and dynamics of organelles. This pipeline mainly consists of two deep learning-based tools: OrgaSegNet and DIC2Cells. OrgaSegNet quantifies many aspects of different organelles by precisely segmenting them. To further process the segmented data at a single-cell level, DIC2Cells automates ROI settings through accurate segmentation of individual cells in differential interference contrast (DIC) images. This pipeline was designed to be low cost and require less coding, to provide an easy-to-use platform. Thus, we believe that OrgaMeas has potential to be readily applied to basic biomedical research, and hopefully to other practical uses such as drug discovery.
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来源期刊
CiteScore
10.00
自引率
2.00%
发文量
151
审稿时长
44 days
期刊介绍: BBA Molecular Cell Research focuses on understanding the mechanisms of cellular processes at the molecular level. These include aspects of cellular signaling, signal transduction, cell cycle, apoptosis, intracellular trafficking, secretory and endocytic pathways, biogenesis of cell organelles, cytoskeletal structures, cellular interactions, cell/tissue differentiation and cellular enzymology. Also included are studies at the interface between Cell Biology and Biophysics which apply for example novel imaging methods for characterizing cellular processes.
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