Wang Bo, Prastawa Marcel, Irimia Andrei, Chambers Micah C, Vespa Paul M, Van Horn John D, Gerig Guido
Scientific Computing and Imaging Institute, University of Utah, Salt Lake City, Utah ; School of Computing, University of Utah, Salt Lake City, Utah.
Laboratory of Neuro Imaging, University of California, Los Angeles, California.
Proc SPIE Int Soc Opt Eng. 2012 Mar 23;8314:831402. doi: 10.1117/12.911043.
Traumatic brain injury (TBI) is a major cause of death and disability worldwide. Robust, reproducible segmentations of MR images with TBI are crucial for quantitative analysis of recovery and treatment efficacy. However, this is a significant challenge due to severe anatomy changes caused by edema (swelling), bleeding, tissue deformation, skull fracture, and other effects related to head injury. In this paper, we introduce a multi-modal image segmentation framework for longitudinal TBI images. The framework is initialized through manual input of primary lesion sites at each time point, which are then refined by a joint approach composed of Bayesian segmentation and construction of a personalized atlas. The personalized atlas construction estimates the average of the posteriors of the Bayesian segmentation at each time point and warps the average back to each time point to provide the updated priors for Bayesian segmentation. The difference between our approach and segmenting longitudinal images independently is that we use the information from all time points to improve the segmentations. Given a manual initialization, our framework automatically segments healthy structures (white matter, grey matter, cerebrospinal fluid) as well as different lesions such as hemorrhagic lesions and edema. Our framework can handle different sets of modalities at each time point, which provides flexibility in analyzing clinical scans. We show results on three subjects with acute baseline scans and chronic follow-up scans. The results demonstrate that joint analysis of all the points yields improved segmentation compared to independent analysis of the two time points.
创伤性脑损伤(TBI)是全球范围内死亡和残疾的主要原因。对患有TBI的MR图像进行稳健、可重复的分割对于恢复和治疗效果的定量分析至关重要。然而,由于水肿(肿胀)、出血、组织变形、颅骨骨折以及与头部损伤相关的其他影响所导致的严重解剖结构变化,这是一项重大挑战。在本文中,我们介绍了一种用于纵向TBI图像的多模态图像分割框架。该框架通过在每个时间点手动输入主要病变部位来初始化,然后通过由贝叶斯分割和个性化图谱构建组成的联合方法进行细化。个性化图谱构建估计每个时间点贝叶斯分割后验概率的平均值,并将平均值 warp 回每个时间点,为贝叶斯分割提供更新的先验概率。我们的方法与独立分割纵向图像的区别在于,我们使用来自所有时间点的信息来改进分割。给定手动初始化,我们的框架会自动分割健康结构(白质、灰质、脑脊液)以及不同的病变,如出血性病变和水肿。我们的框架可以处理每个时间点的不同模态集,这为分析临床扫描提供了灵活性。我们展示了对三名受试者进行急性基线扫描和慢性随访扫描的结果。结果表明,与对两个时间点进行独立分析相比,对所有时间点进行联合分析可提高分割效果。