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Accurate tumor segmentation in FDG-PET images with guidance of complementary CT images

机译:在辅助CT图像的引导下在FDG-PET图像中准确进行肿瘤分割

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While hybrid PET/CT scanner is becoming a standard imaging technique in clinical oncology, many existing methods still segment tumor in mono-modality without consideration of complementary information from another modality. In this paper, we propose an unsupervised 3-D method to automatically segment tumor in PET images, where anatomical knowledge from CT images is included as critical guidance to improve PET segmentation accuracy. To this end, a specific context term is proposed to iteratively quantify the conflicts between PET and CT segmentation. In addition, to comprehensively characterize image voxels for reliable segmentation, informative image features are effectively selected via an unsupervised metric learning strategy. The proposed method is based on the theory of belief functions, a powerful tool for information fusion and uncertain reasoning. Its performance has been well evaluated by real-patient PET/CT images.
机译:尽管混合PET / CT扫描仪已成为临床肿瘤学中的标准成像技术,但许多现有方法仍将肿瘤分割为单峰模式,而无需考虑其他模式的补充信息。在本文中,我们提出了一种无监督的3-D方法来自动分割PET图像中的肿瘤,其中包括来自CT图像的解剖学知识作为提高PET分割精度的关键指导。为此,提出了一个特定的上下文术语来迭代量化PET和CT分割之间的冲突。此外,为了全面表征图像体素以进行可靠的分割,可通过无监督的度量学习策略有效地选择内容丰富的图像特征。所提出的方法基于信念函数的理论,信念函数是信息融合和不确定推理的有力工具。实际患者的PET / CT图像已对其性能进行了很好的评估。

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