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Automated detection of tunneling nanotubes in 3D images

机译:3D图像中隧道纳米管的自动检测

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Background: This paper presents an automated method for the identification of thin membrane tubes in 3D fluorescence images. These tubes, referred to as tunneling nanotubes (TNTs), are newly discovered intercellular structures that connect living cells through a membrane continuity. TNTs are 50-200 ran in diameter, crossing from one cell to another at their nearest distance. In microscopic images, they are seen as straight lines. It now emerges that the TNTs represent the underlying structure of a new type of cell-to-cell communication. Methods: Our approach for the identification of TNTs is based on a combination of biological cell markers and known image processing techniques. Watershed segmentation and edge detectors are used to find cell borders, TNTs, and image artifacts. Mathematical morphology is employed at several stages of the processing chain. Two image channels are used for the calculations to improve classification of watershed regions into cells and background. One image channel displays cell borders and TNTs, the second is used for cell classification and displays the cytoplasmic compartments of the cells. The method for cell segmentation is 3D, and the TNT detection incorporates 3D information using various 2D projections. Results: The TNT- and cell-detection were applied to numerous 3D stacks of images. A success rate of 67% was obtained compared with manual identification of the TNTs. The digitalized results were used to achieve statistical information of selected properties of TNTs. Conclusion: To further explore these structures, automated detection and quantification is desirable. Consequently, this automated recognition tool will be useful in biological studies on cell-to-cell communication where TNT quantification is essential.
机译:背景:本文介绍了一种识别3D荧光图像中薄膜管的自动化方法。这些管,被称为隧道纳米管(TNT),是新发现通过膜连续性连接活细胞的细胞间结构。 TNT直径为50-200次,在最近的距离处从一个电池交叉到另一个电池。在显微图像中,它们被视为直线。现在,TNT表示TNT代表了一种新型细胞到细胞通信的底层结构。方法:我们对TNT鉴定的方法基于生物细胞标记物和已知的图像处理技术的组合。流域分割和边缘探测器用于查找小区边框,TNT和图像伪影。在处理链的几个阶段使用数学形态。两个图像通道用于计算,以改善流域区域的分类到细胞和背景中。一个图像通道显示单元边框和TNT,第二个用于细胞分类并显示细胞的细胞质隔室。小区分割方法是3D,并且TNT检测使用各种2D投影结合了3D信息。结果:将TNT和细胞检测应用于许多3D堆叠图像。与TNT的手动识别相比,获得了67%的成功率。数字化结果用于实现TNT的所选属性的统计信息。结论:为了进一步探索这些结构,需要自动检测和量化。因此,这种自动识别工具将在TNT定量至关重要的细胞对细胞通信的生物学研究中有用。

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