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Automated Tumour Delineation Using Joint PET/CT Information

机译:利用PET / CT联合信息自动描绘肿瘤

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摘要

In this paper, we propose a new method for automated delineation of tumor boundaries in whole-body PET/CT by jointly using information from both PET and diagnostic CT images. Our method takes advantage of initial robust hot spot detection and segmentation performed in PET to provide a conservative tumor structure delineation. Using this estimate as initialization, a model for tumor appearance and shape in corresponding CT structures is learned and the model provides the basis for classifying each voxel to either lesion or background class. This CT classification is then probabilistically integrated with PET classification using the joint likelihood ratio test technique to derive the final delineation. More accurate and reproducible tumor delineation is achieved as a result of such multi-modal tumor delineation, without additional user intervention. The method is particular useful to improve the PET delineation result when there are clear contrast edges in CT between tumor and healthy tissue, and to enable CT segmentation guided by PET when such contrast difference is absent in CT.
机译:在本文中,我们提出了一种通过结合使用PET和CT诊断图像中的信息来自动勾勒出全身PET / CT中肿瘤边界的新方法。我们的方法利用了最初在PET中进行的可靠的热点检测和分割优势,以提供保守的肿瘤结构轮廓。使用该估计值作为初始值,可以了解相应CT结构中肿瘤外观和形状的模型,该模型为将每个体素分类为病变或背景类别提供了基础。然后,使用联合似然比测试技术将该CT分类与PET分类概率集成在一起,以得出最终轮廓。通过这种多模式肿瘤描绘,无需其他用户干预即可实现更准确和可再现的肿瘤描绘。当在肿瘤和健康组织之间的CT中有清晰的对比边缘时,该方法特别有用,可以改善PET描绘结果,当CT中没有这种对比差异时,可以通过PET引导进行CT分割。

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