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Neuronal nuclei localization in 3D using level set and watershed segmentation from laser scanning microscopy images

机译:3D中的神经元核定位使用LEVEL SET和WATERSHED SECONATION从激光扫描显微镜图像中的分割

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Abnormalities of the number and location of cells are hallmarks of both developmental and degenerative neurological diseases. However, standard stereological methods are impractical for assigning each cell's nucleus position within a large volume of brain tissue. We propose an automated approach for segmentation and localization of the brain cell nuclei in laser scanning microscopy (LSM) embryonic mouse brain images. The nuclei in these images are first segmented by using the level set (LS) and watershed methods in each optical plane. The segmentation results are further refined by application of information from adjacent optical planes and prior knowledge of nuclear shape. Segmentation is then followed with an algorithm for 3D localization of the centroid of nucleus (CN). Each volume of tissue is thus represented by a collection of centroids leading to an approximate 10,000-fold reduction in the data set size, as compared to the original image series. Our method has been tested on LSM images obtained from an embryonic mouse brain, and compared to the segmentation and CN localization performed by an expert. The average Euclidian distance between locations of CNs obtained using our method and those obtained by an expert is 1.58±1.24 urn, a value well within the ~5 urn average radius of each nucleus. We conclude that our approach accurately segments and localizes CNs within cell dense embryonic tissue.
机译:细胞数量和位置的异常是发育和退行性神经疾病的标志。然而,标准立体方法对于将每个细胞的髓核位置分配在大量的脑组织内是不切实际的。我们提出了一种自动化方法,用于激光扫描显微镜(LSM)胚胎小鼠脑图像中脑细胞核的分割和定位。首先通过在每个光学平面中使用水平集(LS)和流域方法来分割这些图像中的核。分割结果通过从相邻光学平面和核形状的先验知识应用信息,进一步改进。然后用核(CN)的质心的3D定位算法遵循分割。因此,与原始图像系列相比,每个体积的组织通过集质量表示,导致数据集尺寸的近似10,000倍降低。我们的方法已经在从胚胎小鼠大脑获得的LSM图像上测试,并与专家执行的分割和CN定位相比。使用我们的方法获得的CNS位置与专家获得的人的位置之间的平均欧氏距离为1.58±1.24 URN,一个值良好的每个核的〜5 URN平均半径。我们得出结论,我们的方法准确地分段并定位细胞致密胚胎组织中的CNS。

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