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三维提取生发中心的软件工具。

Software tool for 3D extraction of germinal centers.

机构信息

School of Computer Engineering, University of Vigo, Ourense, Spain.

出版信息

BMC Bioinformatics. 2013;14 Suppl 6(Suppl 6):S5. doi: 10.1186/1471-2105-14-S6-S5. Epub 2013 Apr 17.

Abstract

BACKGROUND

Germinal Centers (GC) are short-lived micro-anatomical structures, within lymphoid organs, where affinity maturation is initiated. Theoretical modeling of the dynamics of the GC reaction including follicular CD4+ T helper and the recently described follicular regulatory CD4+ T cell populations, predicts that the intensity and life span of such reactions is driven by both types of T cells, yet controlled primarily by follicular regulatory CD4+ T cells. In order to calibrate GC models, it is necessary to properly analyze the kinetics of GC sizes. Presently, the estimation of spleen GC volumes relies upon confocal microscopy images from 20-30 slices spanning a depth of ~ 20 - 50 μm, whose GC areas are analyzed, slice-by-slice, for subsequent 3D reconstruction and quantification. The quantity of data to be analyzed from such images taken for kinetics experiments is usually prohibitively large to extract semi-manually with existing software. As a result, the entire procedure is highly time-consuming, and inaccurate, thereby motivating the need for a new software tool that can automatically identify and calculate the 3D spot volumes from GC multidimensional images.

RESULTS

We have developed pyBioImage, an open source cross platform image analysis software application, written in python with C extensions that is specifically tailored to the needs of immunologic research involving 4D imaging of GCs. The software provides 1) support for importing many multi-image formats, 2) basic image processing and analysis, and 3) the ExtractGC module, that allows for automatic analysis and visualization of extracted GC volumes from multidimensional confocal microscopy images. We present concrete examples of different microscopy image data sets of GC that have been used in experimental and theoretical studies of mouse model GC dynamics.

CONCLUSIONS

The pyBioImage software framework seeks to be a general purpose image application for immunological research based on 4D imaging. The ExtractGC module uses a novel clustering algorithm for automatically extracting quantitative spatial information of a large number of GCs from a collection of confocal microscopy images. In addition, the software provides 3D visualization of the GCs reconstructed from the image stacks. The application is available for public use at http://sourceforge.net/projects/pybioimage/.

摘要

背景

生发中心(GC)是淋巴器官内短暂存在的微观解剖结构,其中启动了亲和力成熟。包括滤泡 CD4+T 辅助细胞和最近描述的滤泡调节性 CD4+T 细胞群体在内的 GC 反应动力学的理论模型预测,这种反应的强度和寿命取决于这两种类型的 T 细胞,但主要由滤泡调节性 CD4+T 细胞控制。为了校准 GC 模型,有必要正确分析 GC 大小的动力学。目前,脾脏 GC 体积的估计依赖于跨越 20-50μm 深度的 20-30 个切片的共聚焦显微镜图像,其 GC 区域被逐个切片分析,用于随后的 3D 重建和量化。从用于动力学实验的此类图像中提取数据的数量通常太大,无法使用现有软件半自动提取。因此,整个过程非常耗时且不准确,从而需要一种新的软件工具,可以自动识别和计算 GC 多维图像的 3D 斑点体积。

结果

我们开发了 pyBioImage,这是一种开源跨平台图像分析软件应用程序,用 C 扩展编写的 Python 语言,专门针对涉及 GC 4D 成像的免疫研究的需求。该软件提供 1)支持导入多种多图像格式,2)基本图像处理和分析,以及 3)ExtractGC 模块,允许从多维共聚焦显微镜图像自动分析和可视化提取的 GC 体积。我们展示了已用于实验和理论研究以研究小鼠模型 GC 动力学的不同显微镜图像数据集的具体示例。

结论

pyBioImage 软件框架旨在成为基于 4D 成像的免疫研究的通用图像应用程序。ExtractGC 模块使用新颖的聚类算法,可从一组共聚焦显微镜图像中自动提取大量 GC 的定量空间信息。此外,该软件提供了从图像堆栈重建的 GC 的 3D 可视化。该应用程序可在 http://sourceforge.net/projects/pybioimage/ 上供公众使用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ea3d/3633046/c5c0f476bb4e/1471-2105-14-S6-S5-1.jpg

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