Lin Gang, Chawla Monica K, Olson Kathy, Barnes Carol A, Guzowski John F, Bjornsson Christopher, Shain William, Roysam Badrinath
ECSE Department and Center for Subsurface Sensing and Imaging Systems, Rensselaer Polytechnic Institute, Troy, New York 12180, USA.
Cytometry A. 2007 Sep;71(9):724-36. doi: 10.1002/cyto.a.20430.
Automated segmentation and morphometry of fluorescently labeled cell nuclei in batches of 3D confocal stacks is essential for quantitative studies. Model-based segmentation algorithms are attractive due to their robustness. Previous methods incorporated a single nuclear model. This is a limitation for tissues containing multiple cell types with different nuclear features. Improved segmentation for such tissues requires algorithms that permit multiple models to be used simultaneously. This requires a tight integration of classification and segmentation algorithms. Two or more nuclear models are constructed semiautomatically from user-provided training examples. Starting with an initial over-segmentation produced by a gradient-weighted watershed algorithm, a hierarchical fragment merging tree rooted at each object is built. Linear discriminant analysis is used to classify each candidate using multiple object models. On the basis of the selected class, a Bayesian score is computed. Fragment merging decisions are made by comparing the score with that of other candidates, and the scores of constituent fragments of each candidate. The overall segmentation accuracy was 93.7% and classification accuracy was 93.5%, respectively, on a diverse collection of images drawn from five different regions of the rat brain. The multi-model method was found to achieve high accuracy on nuclear segmentation and classification by correctly resolving ambiguities in clustered regions containing heterogeneous cell populations.
对一批三维共聚焦堆栈中荧光标记的细胞核进行自动分割和形态测量对于定量研究至关重要。基于模型的分割算法因其鲁棒性而具有吸引力。先前的方法采用单一核模型。对于包含具有不同核特征的多种细胞类型的组织来说,这是一个限制。对此类组织进行改进的分割需要允许同时使用多个模型的算法。这需要分类和分割算法紧密集成。从用户提供的训练示例中半自动构建两个或更多核模型。从梯度加权分水岭算法产生的初始过分割开始,构建以每个对象为根的层次化片段合并树。使用线性判别分析,利用多个对象模型对每个候选对象进行分类。基于所选类别,计算贝叶斯分数。通过将分数与其他候选对象以及每个候选对象的组成片段的分数进行比较来做出片段合并决策。在从大鼠大脑五个不同区域获取的各种图像上,总体分割准确率分别为93.7%,分类准确率为93.5%。发现多模型方法通过正确解决包含异质细胞群体的聚类区域中的模糊性,在核分割和分类方面实现了高精度。