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A CONFOCAL LASER SCANNING MICROSCOPE SEGMENTATION METHOD APPLIED TO MAGNETIC RESONANCE IMAGES

机译:应用于磁共振图像的共聚焦激光扫描显微镜分段方法

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Segmentation is the process of defining distinct objects in an image. A semi-automatic segmentation method has been developed for biological objects that have been recorded with a confocal laser scanning microscope (CLSM). The CLSM produces a sequence of thinly "sliced" images that represent cross-sectional views of the sample containing the object of interest. The cross-sectional representation, or "seed" is created of the object of interest within a single slice of the image stack. The segmentation method uses this "seed" to segment the same object in the adjacent image slice. The new "seed" is used for the next image slice and so on, until the object of interest is segmented in all images of the data set. The segmentation method is based on the idea that the object of interest does not change significantly from one image slice to the next. The segmented information is then used to create 3D renderings of the object. These renderings can be studied and analyzed on the computer screen. Previous work has demonstrated the usefulness of the algorithm as applied to the CLSM images. This paper explores the application of the segmentation method to a standard sequence of magnet resonance imaging (MRI) images. Typical MRI machines can produce impressive images of the human body. The resulting data set is often a sequence, or "stack" of cross-sectional slice images of a particular region of the body. The goal then, is to use the previously described segmentation method on a standard sequence of MRI images. This process will expose limitations with the segmentation method and areas where further work can be directed. This paper illustrates and discusses some of the differences between the data sets that make the current segmentation method inadequate for segmentation of MRI data set. Some of the differences can be corrected with modification of the segmentation algorithm, but other differences are beyond the capabilities of the segmentation method, and can possibly be addressed in other ways. The lessons learned from this research process will lead to a more capable and robust segmentation algorithm.
机译:分割是在图像中定义不同对象的过程。已经为已用共聚焦激光扫描显微镜(CLSM)记录的生物物体开发了半自动分段方法。 CLSM产生一系列薄的“切片”图像,其表示包含感兴趣对象的样本的横截面视图。横截面表示或“种子”是由图像堆栈的单个切片内的感兴趣对象创建的。分段方法使用该“种子”在相邻图像切片中段分段相同的对象。新的“种子”用于下一个图像切片等,直到感兴趣的对象在数据集的所有图像中分段。分割方法基于以下想法,即感兴趣的对象不会从一个图像切片到下一个图像切片显着变化。然后使用分段信息来创建对象的3D渲染。可以在计算机屏幕上进行研究和分析这些渲染。以前的工作证明了应用于CLSM图像的算法的有用性。本文探讨了分段方法将分段方法应用于标准磁体共振成像(MRI)图像的序列。典型的MRI机器可以产生人体的令人印象深刻的图像。结果数据集通常是身体特定区域的横截面切片图像的序列或“堆栈”。然后,目标是在MRI图像的标准序列上使用先前描述的分段方法。此过程将利用分段方法和区域可以指导进一步工作的区域暴露限制。本文说明并讨论了数据集之间的一些差异,使当前分段方法不足以用于分割MRI数据集。可以通过修改分割算法来校正一些差异,但是其他差异超出了分段方法的能力,并且可以以其他方式解决。从该研究过程中汲取的经验教训将导致更有能力和强大的分割算法。

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