Faculty of Electrical and Computer Engineering, Tarbiat Modares University, Iran.
IEEE Trans Med Imaging. 2012 Oct;31(10):1941-54. doi: 10.1109/TMI.2012.2210558. Epub 2012 Aug 13.
We present a generative approach for simultaneously registering a probabilistic atlas of a healthy population to brain magnetic resonance (MR) scans showing glioma and segmenting the scans into tumor as well as healthy tissue labels. The proposed method is based on the expectation maximization (EM) algorithm that incorporates a glioma growth model for atlas seeding, a process which modifies the original atlas into one with tumor and edema adapted to best match a given set of patient's images. The modified atlas is registered into the patient space and utilized for estimating the posterior probabilities of various tissue labels. EM iteratively refines the estimates of the posterior probabilities of tissue labels, the deformation field and the tumor growth model parameters. Hence, in addition to segmentation, the proposed method results in atlas registration and a low-dimensional description of the patient scans through estimation of tumor model parameters. We validate the method by automatically segmenting 10 MR scans and comparing the results to those produced by clinical experts and two state-of-the-art methods. The resulting segmentations of tumor and edema outperform the results of the reference methods, and achieve a similar accuracy from a second human rater. We additionally apply the method to 122 patients scans and report the estimated tumor model parameters and their relations with segmentation and registration results. Based on the results from this patient population, we construct a statistical atlas of the glioma by inverting the estimated deformation fields to warp the tumor segmentations of patients scans into a common space.
我们提出了一种生成式方法,可同时将健康人群的概率图谱注册到显示胶质瘤的脑部磁共振(MR)扫描中,并将扫描分割为肿瘤和健康组织标签。所提出的方法基于期望最大化(EM)算法,该算法将胶质瘤生长模型用于图谱播种,这一过程将原始图谱修改为具有肿瘤和水肿的图谱,以最佳匹配给定的一组患者图像。修改后的图谱在患者空间中进行注册,并用于估计各种组织标签的后验概率。EM 迭代地改进组织标签、变形场和肿瘤生长模型参数的后验概率估计。因此,除了分割之外,该方法还通过估计肿瘤模型参数,实现了图谱注册和患者扫描的低维描述。我们通过自动分割 10 个 MR 扫描并将结果与临床专家和两种最先进的方法的结果进行比较,验证了该方法。肿瘤和水肿的分割结果优于参考方法的结果,并且从第二位人类评估者获得了类似的准确性。我们还将该方法应用于 122 例患者的扫描,并报告了估计的肿瘤模型参数及其与分割和注册结果的关系。基于该患者群体的结果,我们通过反转估计的变形场,将患者扫描的肿瘤分割变形到一个共同的空间,构建了一个胶质瘤的统计图谱。