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首页> 外文期刊>Journal of applied clinical medical physics / >New strategy for automatic tumor segmentation by adaptive thresholding on PET/CT images
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New strategy for automatic tumor segmentation by adaptive thresholding on PET/CT images

机译:通过对PET / CT图像进行自适应阈值化自动进行肿瘤分割的新策略

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Tumor delineation is a critical aspect in radiotherapy treatment planning and is usually performed with the anatomical images of a computed tomography (CT) scan. For non‐small cell lung cancer, it has been recommended to use functional positron emission tomography (PET) images to take into account the biological target characteristics. However, today, there is no satisfactory segmentation technique for PET images in clinical applications. In the present study, a solution to this problem is proposed. The development of the segmentation technique is based on the threshold's adjustment directly from patients, rather than from phantoms. To this end, two references were chosen: measurements performed on CT images of the selected lesions, and histological measurements of surgically removed tumors. The inclusion and exclusion criteria were chosen to produce references that are assumed to have measured tumor sizes equal to the true in vivo tumor sizes. In total, for the two references, 65 lung lesions of 54 patients referred for FDG‐PET/CT exams were selected. For validation, measurements of segmented lesions on PET images using this technique were also compared to CT and histological measurements. For lesions greater than 20 mm, our segmentation technique showed a good estimation of histological measurements (mean difference between measured and calculated data equal to ) and an acceptable estimation of CT measurements. For lesions smaller than or equal to 20 mm, the method showed disagreement with the measurements derived from histological or CT data. This novel segmentation technique shows high accuracy for the lesions with largest axes between 2 and 4.5 cm. However, it does not correctly evaluate smaller lesions, likely due to the partial volume effect and/or respiratory motions. PACS numbers: 87.53.Bn, 87.53.Kn, 87.55.D, 87.57.nm , 87.57.U
机译:肿瘤描绘是放射治疗计划中的关键方面,通常是通过计算机断层扫描(CT)扫描的解剖图像进行的。对于非小细胞肺癌,建议使用功能性正电子发射断层扫描(PET)图像来考虑生物学目标特征。但是,今天,在临床应用中还没有令人满意的PET图像分割技术。在本研究中,提出了对此问题的解决方案。分割技术的发展是基于直接来自患者而不是幻象的阈值调整。为此,选择了两个参考文献:对所选病变的CT图像进行的测量,以及手术切除的肿瘤的组织学测量。选择纳入和排除标准以产生参考,这些参考被假定具有已测量的肿瘤大小等于真实体内肿瘤大小。总的来说,为这两个参考文献,选择了接受FDG-PET / CT检查的54例患者的65个肺部病变。为了进行验证,还将使用该技术在PET图像上分割的病变的测量结果与CT和组织学测量结果进行了比较。对于大于20 mm的病变,我们的分割技术显示出对组织学测量值的良好估计(测量数据与计算数据之间的平均差等于)和CT测量值的可接受评估。对于小于或等于20 mm的病变,该方法与从组织学或CT数据得出的测量结果不一致。这种新颖的分割技术显示出最大的病灶,最大的轴在2到4.5 cm之间。但是,由于部分体积效应和/或呼吸运动,它不能正确评估较小的病变。 PACS编号:87.53.Bn,87.53.Kn,87.55.D,87.57.nm,87.57.U

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