基于水平集的可变形医学图像肿瘤分割模型

S. Somaskandan, S. Mahesan
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引用次数: 1

摘要

由于不同病例的肿瘤组织形态差异很大,从医学图像数据中分割肿瘤是一项具有挑战性的任务。本文提出了一种新的基于水平集的可变形肿瘤区域分割模型。我们利用梯度信息和区域数据分析对水平集进行变形。在变形的每个迭代步骤中,我们根据识别的肿瘤体素统计度量和健康组织信息估计新的速度力。这种方法提供了一种分割对象的方法,即使在有弱边缘和间隙的情况下。此外,变形轮廓根据需要扩大或缩小,以免错过弱边缘。实验在具有不同肿瘤形状、大小、位置和内部纹理的真实数据集上进行。我们的研究结果表明,该方法在高分辨率医疗数据和低分辨率图像上取得了令人满意的结果,使贾夫纳教学医院癌症治疗部门的肿瘤学家非常满意。
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A level set based deformable model for segmenting tumors in medical images
Tumor segmentation from medical image data is a challenging task due to the high diversity in appearance of tumor tissue among different cases. In this paper we propose a new level set based deformable model to segment the tumor region. We use the gradient information as well as the regional data analysis to deform the level set. At every iteration step of the deformation, we estimate new velocity forces according to the identified tumor voxels statistical measures, and the healthy tissues information. This method provides a way to segment the objects even when there are weak edges and gaps. Moreover, the deforming contours expand or shrink as necessary so as not to miss the weak edges. Experiments are carried out on real datasets with different tumor shapes, sizes, locations, and internal texture. Our results indicate that the proposed method give promising results over high resolution medical data as well as low resolution images for the high satisfaction of the oncologist at the Cancer Treatment Unit at Jaffna Teaching Hospital.
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