Klabbers Bianca M, de Munck Jan C, Slotman Ben J, Langendijk Hans A, de Bree Remco, Hoekstra Otto S, Boellaard Ronald, Lammertsma Adriaan A
Department of Radiation Oncology, VU University Medical Center, Amsterdam, The Netherlands.
Med Phys. 2002 Oct;29(10):2230-8. doi: 10.1118/1.1508111.
Positron emission tomography (PET) provides important information on tumor biology, but lacks detailed anatomical information. Our aim in the present study was to develop and validate an automatic registration method for matching PET and CT scans of the head and neck. Three difficulties in achieving this goal are (1) nonrigid motions of the neck can hamper the use of automatic ridged body transformations; (2) emission scans contain too little anatomical information to apply standard image fusion methods; and (3) no objective way exists to quantify the quality of the match results. These problems are solved as follows: accurate and reproducible positioning of the patient was achieved by using a radiotherapy treatment mask. The proposed method makes use of the transmission rather than the emission scan. To obtain sufficient (anatomical) information for matching, two bed positions for the transmission scan were included in the protocol. A mutual information-based algorithm was used as a registration technique. PET and CT data were obtained in seven patients. Each patient had two CT scans and one PET scan. The datasets were used to estimate the consistency by matching PET to CT1, CT1 to CT2, and CT2 to PET using the full circle consistency test. It was found that using our method, consistency could be obtained of 4 mm and 1.3 degrees on average. The PET voxels used for registration were 5.15 mm, so the errors compared quite favorably with the voxel size. Cropping the images (removing the scanner bed from images) did not improve the consistency of the algorithm. The transmission scan, however, could potentially be reduced to a single position using this approach. In conclusion, the represented algorithm and validation technique has several features that are attractive from both theoretical and practical point of view, it is a user-independent, automatic validation technique for matching CT and PET scans of the head and neck, which gives the opportunity to compare different image enhancements.
正电子发射断层扫描(PET)可提供有关肿瘤生物学的重要信息,但缺乏详细的解剖学信息。我们在本研究中的目的是开发并验证一种用于匹配头颈部PET和CT扫描的自动配准方法。实现这一目标存在三个难点:(1)颈部的非刚性运动可能会妨碍自动刚体变换的使用;(2)发射扫描包含的解剖学信息太少,无法应用标准的图像融合方法;(3)不存在客观的方法来量化匹配结果的质量。这些问题通过以下方式解决:使用放射治疗面罩实现患者的准确且可重复定位。所提出的方法利用透射扫描而非发射扫描。为了获得足够的(解剖学)信息进行匹配,在方案中纳入了透射扫描的两个床位位置。使用基于互信息的算法作为配准技术。在7名患者中获取了PET和CT数据。每位患者有两次CT扫描和一次PET扫描。使用全圆一致性测试,通过将PET与CT1、CT1与CT2以及CT2与PET进行匹配,利用这些数据集来估计一致性。结果发现,使用我们的方法,平均一致性可达4毫米和1.3度。用于配准的PET体素为5.15毫米,因此与体素大小相比,误差相当有利。裁剪图像(从图像中移除扫描床)并未提高算法的一致性。然而,使用这种方法,透射扫描可能有可能减少到单个位置。总之,所提出的算法和验证技术具有从理论和实践角度来看都颇具吸引力的几个特点,它是一种独立于用户的自动验证技术,用于匹配头颈部的CT和PET扫描,这为比较不同图像增强效果提供了机会。