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首页> 外文期刊>IEEE Transactions on Nuclear Science >Lung Tumor Delineation Based on Novel Tumor-Background Likelihood Models in PET-CT Images
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Lung Tumor Delineation Based on Novel Tumor-Background Likelihood Models in PET-CT Images

机译:基于PET-CT图像中新型肿瘤-背景可能性模型的肺肿瘤描述

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Accurate parenchymal lung tumor delineation with PET-CT can be problematic given the inherent tumor heterogeneity and proximity / involvement of extra-parenchymal tissue. In this paper, we propose a tumor delineation approach that is based on new tumor–background likelihood models in PET and CT. By incorporating the intensity downhill feature in PET as a distance cost into the background likelihood function of CT, our delineation method avoids leakage to structures with similar intensities on PET and CT, but at the same time follows the boundary definition in CT when it is distinct. We validated our method on 40 NSCLC patient datasets with manual delineation by three clinical experts. Our method achieved an average Dice’s similarity coefficient (DSC) of ${bf 0.80 pm 0.08}$ in the simple group, and ${bf 0.77 pm 0.06}$ in the complex group. The t-test demonstrated that our method statistically outperformed the four other methods. Our method was able to delineate complex tumors that were located in close proximity to other structures with similar intensities.
机译:鉴于固有的肿瘤异质性和实质外组织的接近性/累及性,用PET-CT准确描述实质性肺肿瘤可能存在问题。在本文中,我们提出了一种基于PET和CT中新的肿瘤背景似然模型的肿瘤描绘方法。通过将PET中的强度下坡特征作为距离成本并入CT的背景似然函数中,我们的描绘方法避免了PET和CT上具有相似强度的结构的泄漏,但同时遵循了CT中边界定义的要求。我们通过三位临床专家的人工勾画在40个NSCLC患者数据集上验证了我们的方法。我们的方法在简单组中达到了$ {bf 0.80 pm 0.08} $,在复杂组中达到了{{bf 0.77 pm 0.06} $。 t检验表明,我们的方法在统计学上优于其他四种方法。我们的方法能够描绘出与其他强度相似的结构非常接近的复杂肿瘤。

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