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Random walk and graph cut based active contour model for three-dimension interactive pituitary adenoma segmentation from MR images

机译:基于随机游动和图切的主动轮廓模型用于三维交互式垂体腺瘤的MR图像分割

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Accurate volume measurements of pituitary adenoma are important to the diagnosis and treatment for this kind of sellar tumor. The pituitary adenomas have different pathological representations and various shapes. Particularly, in the case of infiltrating to surrounding soft tissues, they present similar intensities and indistinct boundary in T1-weighted (T1W) magnetic resonance (MR) images. Then the extraction of pituitary adenoma from MR images is still a challenging task. In this paper, we propose an interactive method to segment the pituitary adenoma from brain MR data, by combining graph cuts based active contour model (GCACM) and random walk algorithm. By using the GCACM method, the segmentation task is formulated as an energy minimization problem by a hybrid active contour model (ACM), and then the problem is solved by the graph cuts method. The region-based term in the hybrid ACM considers the local image intensities as described by Gaussian distributions with different means and variances, expressed as maximum a posteriori probability (MAP). Random walk is utilized as an initialization tool to provide initialized surface for GCACM. The proposed method is evaluated on the three-dimensional (3-D) T1W MR data of 23 patients and compared with the standard graph cuts method, the random walk method, the hybrid ACM method, a GCACM method which considers global mean intensity in region forces, and a competitive region-growing based GrowCut method planted in 3D Slicer. Based on the experimental results, the proposed method is superior to those methods.
机译:垂体腺瘤的准确体积测量对于这种鞍状肿瘤的诊断和治疗很重要。垂体腺瘤具有不同的病理表现和各种形状。特别是,在渗透到周围的软组织的情况下,它们在T1加权(T1W)磁共振(MR)图像中表现出相似的强度和模糊的边界。然后,从MR图像中提取垂体腺瘤仍然是一项艰巨的任务。在本文中,我们提出了一种交互式方法,通过结合基于图割的活动轮廓模型(GCACM)和随机游走算法,从脑部MR数据中分割垂体腺瘤。通过使用GCACM方法,通过混合主动轮廓模型(ACM)将分割任务公式化为能量最小化问题,然后通过图割方法解决该问题。混合ACM中基于区域的术语会考虑局部图像强度,该强度由高斯分布描述,均值和方差不同,表示为最大后验概率(MAP)。利用随机游走作为初始化工具为GCACM提供初始化表面。该方法对23例患者的三维(3-D)T1W MR数据进行了评估,并与标准图割法,随机游走法,混合ACM方法,考虑区域平均强度的GCACM方法进行了比较力,以及在3D Slicer中植入基于竞争性区域增长的GrowCut方法。根据实验结果,提出的方法优于那些方法。

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