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Motion Correction Algorithm of Lung Tumors for Respiratory Gated PET Images

机译:呼吸门控pET图像肺肿瘤的运动校正算法

摘要

Respiratory gating in lung PET imaging to compensate for respiratory motion artifacts is a current research issue with broad potential impact on quantitation, diagnosis and clinical management of lung tumors. However, PET images collected at discrete bins can be significantly affected by noise as there are lower activity counts in each gated bin unless the total PET acquisition time is prolonged, so that gating methods should be combined with imaging-based motion correction and registration methods. The aim of this study was to develop and validate a fast and practical solution to the problem of respiratory motion for the detection and accurate quantitation of lung tumors in PET images. This included: (1) developing a computer-assisted algorithm for PET/CT images that automatically segments lung regions in CT images, identifies and localizes lung tumors of PET images; (2) developing and comparing different registration algorithms which processes all the information within the entire respiratory cycle and integrate all the tumor in different gated bins into a single reference bin. Four registration/integration algorithms: Centroid Based, Intensity Based, Rigid Body and Optical Flow registration were compared as well as two registration schemes: Direct Scheme and Successive Scheme. Validation was demonstrated by conducting experiments with the computerized 4D NCAT phantom and with a dynamic lung-chest phantom imaged using a GE PET/CT System. Iterations were conducted on different size simulated tumors and different noise levels. Static tumors without respiratory motion were used as gold standard; quantitative results were compared with respect to tumor activity concentration, cross-correlation coefficient, relative noise level and computation time. Comparing the results of the tumors before and after correction, the tumor activity values and tumor volumes were closer to the static tumors (gold standard). Higher correlation values and lower noise were also achieved after applying the correction algorithms. With this method the compromise between short PET scan time and reduced image noise can be achieved, while quantification and clinical analysis become fast and precise.
机译:肺PET成像中的呼吸门控以补偿呼吸运动伪影是当前的研究问题,对肺肿瘤的定量,诊断和临床管理具有广泛的潜在影响。但是,由于每个门控箱中的活动计数较低,除非延长了总PET采集时间,否则在离散箱中收集的PET图像可能会受到噪声的显着影响,因此选通方法应与基于成像的运动校正和配准方法结合使用。这项研究的目的是开发和验证一种快速实用的解决呼吸运动问题的方法,以检测和准确定量PET图像中的肺部肿瘤。这包括:(1)开发用于PET / CT图像的计算机辅助算法,该算法可自动分割CT图像中的肺区域,识别和定位PET图像的肺部肿瘤; (2)开发和比较不同的配准算法,该算法处理整个呼吸周期内的所有信息,并将不同门控箱中的所有肿瘤整合到单个参考箱中。比较了四种配准/集成算法:基于质心,基于强度,刚体和光流配准,以及两种配准方案:直接方案和连续方案。通过使用计算机化的4D NCAT体模和使用GE PET / CT系统成像的动态肺部胸腔体模进行实验,证明了其有效性。对不同大小的模拟肿瘤和不同的噪声水平进行迭代。无呼吸运动的静态肿瘤被用作金标准;定量结果在肿瘤活性浓度,互相关系数,相对噪声水平和计算时间方面进行了比较。比较校正前后的肿瘤结果,肿瘤活性值和肿瘤体积更接近静态肿瘤(金标准)。应用校正算法后,还可以获得较高的相关值和较低的噪声。使用这种方法,可以在短PET扫描时间与降低图像噪声之间达成折衷,同时定量分析和临床分析变得快速而精确。

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    Wang Jiali;

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  • 年度 2009
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