基于深度学习的细胞骨架分割,用于细胞骨架密度的精确高通量测量。

IF 2.5 3区 生物学 Q3 CELL BIOLOGY Protoplasma Pub Date : 2024-12-18 DOI:10.1007/s00709-024-02019-9
Ryota Horiuchi, Asuka Kamimura, Yuga Hanaki, Hikari Matsumoto, Minako Ueda, Takumi Higaki
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引用次数: 0

摘要

细胞骨架组织的显微分析对于理解各种细胞活动,包括细胞增殖和环境反应至关重要。传统上,对细胞骨架动力学的评估是定性的,依赖于显微镜辅助的视觉检查。然而,向定量数字显微镜的过渡带来了新的技术挑战,细胞骨架结构的分割被证明是特别苛刻的。在这项研究中,我们利用烟草BY-2细胞皮层微管的共聚焦显微图像,研究了基于深度学习的分割方法对细胞骨架组织进行精确定量评估的效用。结果表明,尽管传统方法足以测量细胞骨架角度和平行度,但基于深度学习的方法显著提高了密度测量的准确性。为了评估该方法的通用性,我们将分析扩展到细胞骨架密度变化背景下的生理重要模型,即拟南芥保护细胞和合子。基于深度学习的方法成功地提高了细胞骨架密度测量的准确性,用于定量评估保护细胞气孔运动和伸长合子细胞内极化的生理变化,证实了其在这些应用中的实用性。结果表明,基于深度学习的分割在提供精确和高通量的细胞骨架密度测量方面是有效的,并且具有自动化和加速大规模图像数据集分析的潜力。
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Deep learning-based cytoskeleton segmentation for accurate high-throughput measurement of cytoskeleton density.

Microscopic analyses of cytoskeleton organization are crucial for understanding various cellular activities, including cell proliferation and environmental responses in plants. Traditionally, assessments of cytoskeleton dynamics have been qualitative, relying on microscopy-assisted visual inspection. However, the transition to quantitative digital microscopy has introduced new technical challenges, with segmentation of cytoskeleton structures proving particularly demanding. In this study, we examined the utility of a deep learning-based segmentation method for accurate quantitative evaluation of cytoskeleton organization using confocal microscopic images of the cortical microtubules in tobacco BY-2 cells. The results showed that, although conventional methods sufficed for measurement of cytoskeleton angles and parallelness, the deep learning-based method significantly improved the accuracy of density measurements. To assess the versatility of the method, we extended our analysis to physiologically significant models in the context of changes in cytoskeleton density, namely Arabidopsis thaliana guard cells and zygotes. The deep learning-based method successfully improved the accuracy of cytoskeleton density measurements for quantitative evaluations of physiological changes in both stomatal movement in guard cells and intracellular polarization in elongating zygotes, confirming its utility in these applications. The results demonstrate the effectiveness of deep learning-based segmentation in providing precise and high-throughput measurements of cytoskeleton density, and has the potential to automate and expedite analyses of large-scale image datasets.

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来源期刊
Protoplasma
Protoplasma 生物-细胞生物学
CiteScore
6.60
自引率
6.90%
发文量
99
审稿时长
4-8 weeks
期刊介绍: Protoplasma publishes original papers, short communications and review articles which are of interest to cell biology in all its scientific and applied aspects. We seek contributions dealing with plants and animals but also prokaryotes, protists and fungi, from the following fields: cell biology of both single and multicellular organisms molecular cytology the cell cycle membrane biology including biogenesis, dynamics, energetics and electrophysiology inter- and intracellular transport the cytoskeleton organelles experimental and quantitative ultrastructure cyto- and histochemistry Further, conceptual contributions such as new models or discoveries at the cutting edge of cell biology research will be published under the headings "New Ideas in Cell Biology".
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