PatternJ: an ImageJ toolset for the automated and quantitative analysis of regular spatial patterns found in sarcomeres, axons, somites, and more.

IF 1.8 4区 生物学 Q3 BIOLOGY Biology Open Pub Date : 2024-06-15 Epub Date: 2024-06-18 DOI:10.1242/bio.060548
Mélina Baheux Blin, Vincent Loreau, Frank Schnorrer, Pierre Mangeol
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Abstract

Regular spatial patterns are ubiquitous forms of organization in nature. In animals, regular patterns can be found from the cellular scale to the tissue scale, and from early stages of development to adulthood. To understand the formation of these patterns, how they assemble and mature, and how they are affected by perturbations, a precise quantitative description of the patterns is essential. However, accessible tools that offer in-depth analysis without the need for computational skills are lacking for biologists. Here, we present PatternJ, a novel toolset to analyze regular one-dimensional patterns precisely and automatically. This toolset, to be used with the popular imaging processing program ImageJ/Fiji, facilitates the extraction of key geometric features within and between pattern repeats in static images and time-lapse series. We validate PatternJ with simulated data and test it on images of sarcomeres from insect muscles and contracting cardiomyocytes, actin rings in neurons, and somites from zebrafish embryos obtained using confocal fluorescence microscopy, STORM, electron microscopy, and brightfield imaging. We show that the toolset delivers subpixel feature extraction reliably even with images of low signal-to-noise ratio. PatternJ's straightforward use and functionalities make it valuable for various scientific fields requiring quantitative one-dimensional pattern analysis, including the sarcomere biology of muscles or the patterning of mammalian axons, speeding up discoveries with the bonus of high reproducibility.

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PatternJ:ImageJ 工具集,用于自动定量分析在肌节、轴突、体节等中发现的规则空间模式。
有规律的空间模式是自然界无处不在的组织形式。在动物中,从细胞尺度到组织尺度,从发育的早期阶段到成年阶段,都能发现规则的模式。要了解这些模式的形成、它们如何组合和成熟,以及它们如何受到干扰的影响,对模式进行精确的定量描述至关重要。然而,生物学家缺乏无需计算技能即可进行深入分析的工具。在此,我们介绍 PatternJ,这是一种可精确自动分析规则一维模式的新型工具集。该工具集可与流行的图像处理程序 ImageJ/Fiji 配合使用,有助于提取静态图像和延时序列中图案重复内部和之间的关键几何特征。我们用模拟数据对 PatternJ 进行了验证,并在使用共焦荧光显微镜、STORM、电子显微镜和明视野成像技术获得的昆虫肌肉和收缩心肌细胞的肌节、神经元的肌动蛋白环和斑马鱼胚胎的体节图像上进行了测试。我们的研究表明,即使是信噪比较低的图像,该工具集也能可靠地进行亚像素特征提取。PatternJ 的简单易用和功能强大使其在需要定量一维模式分析的各个科学领域都很有价值,包括肌肉的肌节生物学或哺乳动物轴突的模式化,从而加快了发现的速度,并具有很高的可重复性。
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来源期刊
Biology Open
Biology Open BIOLOGY-
CiteScore
3.90
自引率
0.00%
发文量
162
审稿时长
8 weeks
期刊介绍: Biology Open (BiO) is an online Open Access journal that publishes peer-reviewed original research across all aspects of the biological sciences. BiO aims to provide rapid publication for scientifically sound observations and valid conclusions, without a requirement for perceived impact.
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