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首页> 外文期刊>Journal of Microscopy >Combining intensity, edge and shape information for 2D and 3D segmentation of cell nuclei in tissue sections.
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Combining intensity, edge and shape information for 2D and 3D segmentation of cell nuclei in tissue sections.

机译:结合强度,边缘和形状信息以进行组织切片中细胞核的2D和3D分割。

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摘要

We present a region-based segmentation method in which seeds representing both object and background pixels are created by combining morphological filtering of both the original image and the gradient magnitude of the image. The seeds are then used as starting points for watershed segmentation of the gradient magnitude image. The fully automatic seeding is done in a generous fashion, so that at least one seed will be set in each foreground object. If more than one seed is placed in a single object, the watershed segmentation will lead to an initial over-segmentation, i.e. a boundary is created where there is no strong edge. Thus, the result of the initial segmentation is further refined by merging based on the gradient magnitude along the boundary separating neighbouring objects. This step also makes it easy to remove objects with poor contrast. As a final step, clusters of nuclei are separated, based on the shape of the cluster. The number of input parameters to the full segmentation procedure is onlyfive. These parameters can be set manually using a test image and thereafter be used on a large number of images created under similar imaging conditions. This automated system was verified by comparison with manual counts from the same image fields. About 90% correct segmentation was achieved for two- as well as three-dimensional images.
机译:我们提出了一种基于区域的分割方法,其中通过结合原始图像的形态过滤和图像的梯度幅度来创建代表对象像素和背景像素的种子。然后将种子用作梯度大小图像的分水岭分割的起点。全自动播种以慷慨的方式完成,因此将在每个前景对象中至少设置一个播种。如果在单个对象中放置多个种子,则分水岭分割将导致初始的超分割,即在没有强边缘的情况下创建边界。因此,通过基于沿着将相邻对象分离的边界的梯度幅度进行合并,进一步细化了初始分割的结果。此步骤还可以轻松删除对比度较差的对象。最后一步是,根据原子团的形状分离原子团。完整分段过程的输入参数数量只有五个。这些参数可以使用测试图像手动设置,然后用于在相似成像条件下创建的大量图像。通过与来自相同图像字段的手动计数进行比较,验证了该自动化系统。对于二维和三维图像,可以实现约90%的正确分割。

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