goodfibers:一个用于检测diceCT扫描肌肉纤维的R包。

IF 2.2 4区 生物学 Q2 BIOLOGY Integrative Organismal Biology Pub Date : 2023-01-01 DOI:10.1093/iob/obad030
J H Arbour
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摘要

对比度增强计算机断层扫描成像,如扩散碘基对比度增强计算机断层扫描(diceCT),可以提供肌肉结构的详细信息,对功能形态的比较分析很重要,使用非破坏性方法。然而,手工分割肌束/纤维是耗时的,而自动化的方法有时是难以实现和负担不起的。在这里,我们介绍goodfibers,这是一个R包,用于从diceCT图像堆栈中重建3D肌肉结构。goodfibres使用图像灰度值的纹理分析来跟踪肌肉图像堆栈中的直线或弯曲纤维路径。附件功能提供质量检查、光纤合并、3D可视化和导出功能。我们使用来自蚂蚁和蝙蝠diceCT扫描的两个数据集来演示goodfiber的实用性和有效性。在这两种情况下,与传统方法相比,goodfiberes提供了可靠的平均纤维长度测量,并且与当前可用的软件包一样有效。这个开源,免费使用的软件包将有助于改善使用diceCT扫描分析肌肉纤维解剖的工具。灵活透明的r语言环境允许其他用户在这里描述的功能上进行构建,并允许对生成的光纤度量进行直接统计分析。我们希望这将增加比较和进化研究的数量,纳入这些丰富和功能重要的数据集。
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GoodFibes: An R Package for The Detection of Muscle Fibers from diceCT Scans.

Contrast enhanced computed-tomography imaging like diffusible iodine-based contrast-enhanced computed tomography (diceCT) can provide detailed information on muscle architecture important to comparative analyses of functional morphology, using non-destructive approaches. However, manual segmentation of muscle fascicles/fibers is time-consuming, and automated approaches are at times inaccessible and unaffordable. Here, we introduce GoodFibes, an R package for reconstructing muscle architecture in 3D from diceCT image stacks. GoodFibes uses textural analysis of image grayscale values to track straight or curved fiber paths through a muscle image stack. Accessory functions provide quality checking, fiber merging, and 3D visualization and export capabilities. We demonstrate the utility and effectiveness of GoodFibes using two datasets, from an ant and bat diceCT scans. In both cases, GoodFibes provides reliable measurements of mean fiber length compared to traditional approaches, and is as effective as currently available software packages. This open-source, free to use software package will help to improve access to tools in the analysis of muscle fiber anatomy using diceCT scans. The flexible and transparent R-language environment allows other users to build on the functions described here and permits direct statistical analysis of the resulting fiber metrics. We hope that this will increase the number of comparative and evolutionary studies incorporating these rich and functionally important datasets.

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来源期刊
CiteScore
3.70
自引率
6.70%
发文量
48
审稿时长
20 weeks
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