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18{sup left}F-FDG PET images segmentation using morphological watershed: a phantom study

机译:18 {SUP左} F-FDG宠物图像分割使用形态流域:幻影研究

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Segmentation of 18{sup left}F-FDG PET images could be helpful for delineation of tumor volume in radiotherapy and patient follow-up. The most commonly implemented method on clinical workstations is maximum intensity thresholding, which is inappropriate for heterogeneous uptakes. Our aim was to develop and evaluate a more sophisticated segmentation method, based on the morphological watershed. We developed a segmentation method taking into account PET images characteristics. We evaluated it first on phantom images, using an integrated PET/CT unit and taking CT images as reference images. To simulate tumors in a background activity, we used 6 homogeneous spheres of various volumes in a cylindrical phantom and 3 heterogeneous cylinders in an anthropomorphic phantom. The quality of segmentation was evaluated in terms of volume, shape and position. We compared the results with a maximum intensity threshold segmentation method fitting the volume, taken as reference segmentation. A quantitation analysis completed the phantom study. For both phantom acquisitions, the segmentation obtained with the watershed based algorithm gave satisfying results with the index integrating volume, shape and position. Results considering this index were not significantly different from the reference segmentation (p>0.5). Errors of volume recovery reached 18% for watershed segmentation. The quantitation analysis on phantoms highlighted partial volume effect, with an error of activity concentration measurement on segmented images ranging between 42% and 51%. Performances of the watershed method evaluated in this study were comparable with an optimized segmentation on phantom images. The quantitation recovery of PET regions with this method was similar with to other segmentation methods.
机译:18 {SUP左} F-FDG PET图像的分割可能有助于描绘放疗和患者随访中的肿瘤体积。临床工作站上最常用的方法是最大强度阈值,这是不均匀的上升的不合适。我们的目标是基于形态流域发展和评估更复杂的分割方法。我们开发了考虑PET图像特征的分段方法。我们首先在Phantom图像中评估它,使用集成的PET / CT单元并将CT图像作为参考图像进行。为了在背景活动中模拟肿瘤,我们在圆柱形虚拟体阵容中使用了6个各种体积的各种体积的均匀球体。在体积,形状和位置方面评估分割质量。我们将结果与拟合体积的最大强度阈值分割方法进行了比较,作为参考分割。定量分析完成了幻影研究。对于幻像采集,通过基于流域的算法获得的分割给出了令人满意的结果,该索引集成了体积,形状和位置。考虑到该指标的结果与参考分割没有显着差异(P> 0.5)。流域分割的体积恢复误差达到18%。幽灵的定量分析突出显示部分体积效应,在分段图像上的误差误差范围为42%和51%。本研究评估的流域方法的性能与幻象图像上的优化分割相当。通过该方法的PET区域的定量恢复与其他分段方法相似。

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