Burke Ryan P, Xu Zhoubing, Lee Christopher P, Baucom Rebeccah B, Poulose Benjamin K, Abramson Richard G, Landman Bennett A
Biomedical Engineering, Vanderbilt University, Nashville, TN, USA 37235.
Electrical Engineering, Vanderbilt University, Nashville, TN, USA 37235.
Proc SPIE Int Soc Opt Eng. 2015 Mar 17;9417. doi: 10.1117/12.2081061.
Abdominal organ segmentation with clinically acquired computed tomography (CT) is drawing increasing interest in the medical imaging community. Gaussian mixture models (GMM) have been extensively used through medical segmentation, most notably in the brain for cerebrospinal fluid/gray matter/white matter differentiation. Because abdominal CT exhibit strong localized intensity characteristics, GMM have recently been incorporated in multi-stage abdominal segmentation algorithms. In the context of variable abdominal anatomy and rich algorithms, it is difficult to assess the marginal contribution of GMM. Herein, we characterize the efficacy of an framework that integrates GMM of organ-wise intensity likelihood with spatial priors from multiple target-specific registered labels. In our study, we first manually labeled 100 CT images. Then, we assigned 40 images to use as training data for constructing target-specific spatial priors and intensity likelihoods. The remaining 60 images were evaluated as test targets for segmenting 12 abdominal organs. The overlap between the true and the automatic segmentations was measured by Dice similarity coefficient (DSC). A median improvement of 145% was achieved by integrating the GMM intensity likelihood against the specific spatial prior. The proposed framework opens the opportunities for abdominal organ segmentation by efficiently using both the spatial and appearance information from the atlases, and creates a benchmark for large-scale automatic abdominal segmentation.
利用临床获取的计算机断层扫描(CT)进行腹部器官分割在医学成像领域正引起越来越多的关注。高斯混合模型(GMM)已在医学分割中广泛应用,尤其在脑部用于区分脑脊液/灰质/白质。由于腹部CT呈现出强烈的局部强度特征,GMM最近已被纳入多阶段腹部分割算法中。在腹部解剖结构多样且算法丰富的背景下,很难评估GMM的边际贡献。在此,我们描述了一个框架的效能,该框架将器官特异性强度似然性的GMM与来自多个目标特异性配准标签的空间先验相结合。在我们的研究中,我们首先手动标记了100张CT图像。然后,我们分配40张图像用作训练数据,以构建目标特异性空间先验和强度似然性。其余60张图像作为测试目标,用于分割12个腹部器官。通过骰子相似系数(DSC)测量真实分割与自动分割之间的重叠度。将GMM强度似然性与特定空间先验相结合,中位数改善率达到了145%。所提出的框架通过有效利用图谱中的空间和外观信息,为腹部器官分割提供了机会,并为大规模自动腹部分割创建了一个基准。