超体素和CRFs在PET-CT图像中的三维淋巴瘤检测

Jierui Zha, P. Decazes, Jérôme Lapuyade, A. Elmoataz, S. Ruan
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引用次数: 1

摘要

本文提出了一种结合超体素和条件随机场的PET-CT图像淋巴瘤检测方法。正电子发射断层扫描(PET)常用于分析癌症等疾病。它通常与计算机断层扫描(CT)相结合,可以提供准确的病变解剖位置。PET中大多数淋巴瘤检测都是基于机器学习技术,这需要一个庞大的学习数据库。然而,在医学领域很难获得如此庞大的标准数据库。在我们之前的工作中,我们提出了一种将CT上获得的解剖图谱与PET上的条件随机场(CRFs)相结合的新方法,并证明了它有很好的效果,但由于每个体素在3D中完全连接,因此非常耗时。为了解决这个问题,我们提出了一种超体素和CRFs相结合的方法来加快进度。我们的方法包括3个步骤。首先,我们在PET图像上应用超体素,将体素分组为超体素。然后,在CT上应用解剖图谱去除PET上有超固定的器官。最后,CRFs将在PET中检测淋巴瘤区域。所得结果在速度和淋巴瘤检测方面都有良好的表现。
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3D lymphoma detection in PET-CT images with supervoxel and CRFs
In this paper we present a lymphoma detection method on image PET-CT by combining supervoxel and conditional random fields(CRFs). Positron-emission tomography(PET) is often used to analysis diseases like cancer. And it is usually combined with computed tomography scan (CT), which provides accurate anatomical location of lesions. Most lymphoma detection in PET are based on machine learning technique which requires a large learning database. However, it is difficult to acquire such a large standard database in medical field. In our previous work, a new approach which combines an anatomical atlas obtained in CT with CRFs (Conditional Random Fields) in PET is proposed and is proved to have good results, however it is very time consuming due to the fully connection of each voxel in 3D. To cope with this problem, we proposed a method that combines supervoxel and CRFs to accelerate the progress. Our method consists of 3 steps. First, we apply the supervoxel on the PET image to group the voxels into supervoxels. Then, an anatomic atlas is applied on CT to remove the organs having hyper-fixation in PET. Finally, CRFs will detect lymphoma regions in PET. The obtained results show good performance in terms of speed and lymphoma detection.
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