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Contourlet-based active contour model for PET image segmentation

机译:基于轮廓图的PET图像主动轮廓模型

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Purpose: PET-guided radiation therapy treatment planning, clinical diagnosis, assessment of tumor growth, and therapy response rely on the accurate delineation of the tumor volume and quantification of tracer uptake. Most PET image segmentation techniques proposed thus far are suboptimal in the presence of heterogeneity of tracer uptake within the lesion. This work presents an active contour model approach based on the method of Chan and Vese ["Active contours without edges," IEEE Trans. Image Process. 10, 266-277 (2001)]10.1109/83.902291 designed to take into account the high level of statistical uncertainty (noise) and to handle the heterogeneity of tumor uptake typically present in PET images. Methods: In the proposed method, the fitting terms in the Chan-Vese formulation are modified by introducing new input images, including the smoothed version of the original image using anisotropic diffusion filtering (ADF) and the contourlet transform of the image. The advantage of utilizing ADF for image smoothing is that it avoids blurring the object's edges and preserves the average activity within a region, which is important for accurate PET quantification. Moreover, incorporating the contourlet transform of the image into the fitting terms makes the energy functional more effective in directing the evolving curve toward the object boundaries due to the enhancement of the tumor-to-background ratio (TBR). The proper choice of the energy functional parameters has been formulated by making a clear consensus based on tumor heterogeneity and TBR levels. This cautious parameter selection leads to proper handling of heterogeneous lesions. The algorithm was evaluated using simulated phantom and clinical studies, where the ground truth and histology, respectively, were available for accurate quantitative analysis of the segmentation results. The proposed technique was also compared to a number of previously reported image segmentation techniques. Results: The results were quantitatively analyzed using three evaluation metrics, including the spatial overlap index (SOI), the mean relative error (MRE), and the mean classification error (MCE). Although the performance of the proposed method was analogous to other methods for some datasets, overall the proposed algorithm outperforms all other techniques. In the largest clinical group comprising nine datasets, the proposed approach improved the SOI from 0.41 ± 0.14 obtained using the best-performing algorithm to 0.54 ± 0.12 and reduced the MRE from 54.23 ± 103.29 to 0.19 ± 16.63 and the MCE from 112.86 ± 69.07 to 60.58 ± 18.43. Conclusions: The proposed segmentation technique is superior to other representative segmentation techniques in terms of highest overlap between the segmented volume and the ground truth/histology and minimum relative and classification errors. Therefore, the proposed active contour model can result in more accurate tumor volume delineation from PET images.
机译:目的:PET引导的放射治疗治疗计划,临床诊断,肿瘤生长评估和治疗反应依赖于肿瘤体积的准确描绘和示踪剂摄取的量化。迄今为止,在病变内示踪剂摄取存在异质性的情况下,迄今为止提出的大多数PET图像分割技术都不理想。这项工作提出了一种基于Chan和Vese [“没有边缘的主动轮廓”,IEEE Trans。图像处理。 10,266-277(2001)] 10.1109 / 83.902291被设计为考虑到高水平的统计不确定性(噪声)并处理通常在PET图像中存在的肿瘤摄取的异质性。方法:在提出的方法中,通过引入新的输入图像(包括使用各向异性扩散滤波(ADF)的原始图像的平滑版本和图像的轮廓波变换)来修改Chan-Vese公式中的拟合项。利用ADF进行图像平滑的优势在于,它可以避免模糊对象的边缘并保留区域内的平均活性,这对于精确PET定量非常重要。此外,由于增强了肿瘤与背景之比(TBR),因此将图像的轮廓波变换合并到拟合项中使能量功能更有效地将演化曲线引向对象边界。通过基于肿瘤异质性和TBR水平达成明确共识,制定了适当选择能量功能参数的方法。这种谨慎的参数选择会导致对异质性病变的正确处理。使用模拟体模和临床研究对算法进行了评估,其中分别提供了地面真实情况和组织学信息,可以对分割结果进行准确的定量分析。还将所提出的技术与许多先前报道的图像分割技术进行了比较。结果:使用三个评估指标对结果进行了定量分析,包括空间重叠指数(SOI),平均相对误差(MRE)和平均分类误差(MCE)。尽管对于某些数据集,该方法的性能类似于其他方法,但总体而言,该算法优于所有其他技术。在包括9个数据集的最大临床组中,所提出的方法将使用最佳性能算法获得的SOI从0.41±0.14提高到0.54±0.12,并将MRE从54.23±103.29降低到0.19±16.63,并将MCE从112.86±69.07降低到60.58±18.43。结论:就分割体积和地面真相/组织学之间的最大重叠以及最小相对和分类误差而言,所提出的分割技术优于其他代表性分割技术。因此,提出的主动轮廓模型可以从PET图像中得出更准确的肿瘤体积轮廓。

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