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Osteosarcoma segmentation in CT images based on hybrid relative fuzzy connectedness

机译:基于混合相对模糊连接度的CT图像骨肉瘤分割

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Osteosarcoma is very harmful and difficult to diagnose, which occurs most often in children and adolescents. Aiming at the difficulties in extracting tumor from Osteosarcoma CT images, which have few gray differences with the surrounding tissues, this paper proposes an interactive hybrid segmentation method combining modified relative fuzzy connectedness and confidence connected algorithm for Osteosarcoma CT images. In this paper, we select seed points from object and background areas interactively, and produce a rough segmentation from Osteosarcoma CT image by using the confidence connected method. The mean and variance values obtained from the rough regions are the initial values for fuzzy connectedness algorithm. In addition, we have developed a novel fuzzy spel affinity function, and compute fuzzy connectedness from each point to the seeds in object and background areas, then divide Osteosarcoma CT image into tumor tissue region and non-tumor tissue region by comparing the values of these two fuzzy connectedness. Finally, the segmented tumor tissue is rendered in 3D by the ray casting algorithm based on Graphics Processing Unit. According to the experiment results, the interactive hybrid segmentation method has a higher similarity index with the expert's manual segmentation compared to the original fuzzy connectedness algorithm. Also, it can segment Osteosarcoma tumor tissue more effectively and accurately, reducing the influence by the manual choices of the threshold and other parameters.
机译:骨肉瘤非常有害且难以诊断,骨肉瘤最常见于儿童和青少年。针对骨肉瘤CT图像与周围组织灰度差异不大的困难,提出一种结合修正的模糊关联度和置信度关联算法的骨肉瘤CT图像交互式混合分割方法。在本文中,我们从对象和背景区域中交互选择种子点,并使用置信度连接法从骨肉瘤CT图像中进行粗略分割。从粗糙区域获得的平均值和方差值是模糊连通性算法的初始值。此外,我们开发了一种新颖的模糊游戏亲和度函数,并计算了对象和背景区域中每个点到种子的模糊连接度,然后通过比较这些值将骨肉瘤CT图像分为肿瘤组织区域和非肿瘤组织区域两个模糊的联系。最后,通过基于图形处理单元的射线投射算法将分割的肿瘤组织渲染为3D。根据实验结果,与原始的模糊连接算法相比,交互式混合分割方法与专家的人工分割方法具有更高的相似性指标。而且,它可以更有效,更准确地分割骨肉瘤肿瘤组织,从而减少了手动选择阈值和其他参数的影响。

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