Lin Gang, Adiga Umesh, Olson Kathy, Guzowski John F, Barnes Carol A, Roysam Badrinath
Department of Electrical, Computer and Systems Engineering, Rensselaer Polytechnic Institute, Troy, NY 12180-3590, USA.
Cytometry A. 2003 Nov;56(1):23-36. doi: 10.1002/cyto.a.10079.
Automated segmentation of fluorescently-labeled cell nuclei in 3D confocal microscope images is essential to many studies involving morphological and functional analysis. A common source of segmentation error is tight clustering of nuclei. There is a compelling need to minimize these errors for constructing highly automated scoring systems.
A combination of two approaches is presented. First, an improved distance transform combining intensity gradients and geometric distance is used for the watershed step. Second, an explicit mathematical model for the anatomic characteristics of cell nuclei such as size and shape measures is incorporated. This model is constructed automatically from the data. Deliberate initial over-segmentation of the image data is performed, followed by statistical model-based merging. A confidence score is computed for each detected nucleus, measuring how well the nucleus fits the model. This is used in combination with the intensity gradient to control the merge decisions.
Experimental validation on a set of rodent brain cell images showed 97% concordance with the human observer and significant improvement over prior methods.
Combining a gradient-weighted distance transform with a richer morphometric model significantly improves the accuracy of automated segmentation and FISH analysis.
在许多涉及形态学和功能分析的研究中,三维共聚焦显微镜图像中荧光标记的细胞核自动分割至关重要。分割错误的一个常见来源是细胞核紧密聚集。构建高度自动化的评分系统迫切需要尽量减少这些错误。
提出了两种方法的组合。首先,将结合强度梯度和几何距离的改进距离变换用于分水岭步骤。其次,纳入了细胞核解剖特征(如大小和形状测量)的显式数学模型。该模型根据数据自动构建。对图像数据进行有意的初始过度分割,然后基于统计模型进行合并。为每个检测到的细胞核计算一个置信度得分,衡量细胞核与模型的拟合程度。这与强度梯度结合使用以控制合并决策。
在一组啮齿动物脑细胞图像上的实验验证表明,与人类观察者的一致性达到97%,并且比先前方法有显著改进。
将梯度加权距离变换与更丰富的形态计量模型相结合,可显著提高自动分割和荧光原位杂交分析的准确性。