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Unsupervised co-segmentation of tumor in PET-CT images using belief functions based fusion

机译:使用基于信念函数的融合在PET-CT图像中无监督地对肿瘤进行共分割

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Accurate segmentation of target tumor is a precondition for effective radiation therapy. While hybrid positron emission tomography-computed tomography (PET-CT) has become a standard imaging tool in the practical process of radiation oncology, many existing segmentation methods are still performed in mono-modalities. We propose an automatic 3-D method based on unsupervised learning to jointly delineate tumor contours in PET-CT images, considering that the two distinct modalities can provide each other complementary information so as to improve segmentation. As PET-CT images are noisy and blurry, the theory of belief functions is adopted to model the uncertain and imprecise image information, and to fuse them in a stable way. To ensure reliable clustering in each modality, an adaptive distance metric to quantify distortions is proposed, and the spatial information is taken into account. A novel context term is designed to encourage consistent segmentation between the two modalities. In addition, during the iterative process of unsupervised learning, a specific fusion strategy is applied to further adjust results for the two distinct modalities. The proposed co-segmentation method has been evaluated by fifteen PET-CT images for non-small cell lung cancer (NSCLC) patients, showing good performance compared to some other methods.
机译:准确分割靶肿瘤是有效放射治疗的前提。尽管混合正电子发射断层扫描计算机断层扫描(PET-CT)已成为放射肿瘤学实际过程中的标准成像工具,但许多现有的分割方法仍以单模式进行。我们提出一种基于无监督学习的自动3-D方法,以共同描绘PET-CT图像中的肿瘤轮廓,考虑到两种截然不同的方式可以互相提供补充信息,从而提高分割效果。由于PET-CT图像嘈杂且模糊,因此采用置信函数理论对不确定和不精确的图像信息进行建模,并以稳定的方式对其进行融合。为了确保每个模态中的可靠聚类,提出了一种用于量化失真的自适应距离度量,并考虑了空间信息。一个新颖的上下文术语旨在鼓励在两种模式之间进行一致的细分。此外,在无监督学习的迭代过程中,将应用特定的融合策略来进一步调整两种不同模式的结果。已通过15幅PET-CT图像对非小细胞肺癌(NSCLC)患者评估了建议的共分割方法,与其他方法相比,该方法显示出良好的性能。

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