Abdoli Mehrsima, Ay Mohammad Reza, Ahmadian Alireza, Zaidi Habib
Department of Medical Physics and Biomedical Engineering, School of Medicine, Tehran University of Medical Sciences, Tehran, Iran.
Nucl Med Commun. 2010 Jan;31(1):22-31. doi: 10.1097/MNM.0b013e32832fa241.
Attenuation correction of PET data requires accurate determination of the attenuation map (mumap), which represents the spatial distribution of linear attenuation coefficients of different tissues at 511 keV. The presence of high-density metallic dental filling material in head and neck X-ray computed tomography (CT) scanning is known to generate streak artefacts in the resulting CT images and thus in the corresponding mumaps generated using CT-based attenuation correction. Consequently, an under/overestimation of activity concentration occurs in corresponding regions of the corrected PET images. The purpose of this study is to develop a simple yet practical approach for reduction of metallic dental implant artefacts in the generated mumaps.
Currently available sinogram-based metal artefact reduction (MAR) algorithms operate directly on the raw sinograms. These usually consist of huge files stored in proprietary format not easily disclosed by the manufacturers and thus are not straightforward to read and manipulate. The proposed method uses the concept of virtual sinograms produced by forward projection of CT images in Dicom format for MAR. The projection data affected by metallic objects are detected in the sinogram space through segmentation of metallic objects in the CT image followed by forward projection of the metal-only image. Thereafter, the affected sinogram bins are replaced by interpolated values from adjacent projections using the spline interpolation technique. The algorithm was assessed using a polyethylene phantom containing materials simulating different tissues and a dedicated jaw phantom scanned before and after the insertion of metallic objects, where the corrected and noncorrected mumaps were compared with the artefact-free mumap. In addition, the Jaszczak and standard germanium phantoms including four metallic inserts were scanned on a PET/CT scanner to evaluate the impact of the MAR procedure on PET data through the comparison of uncorrected and corrected PET images to the actual activity concentrations in the phantoms. The proposed algorithm was also applied to head and neck CT images of 10 patients with metallic dental implants.
The MAR method proved to be practical in a clinical setting and reduced substantially the visible metal induced artefacts. The mean relative error in regions close to metallic objects is reduced by approximately 90%. The statistical analysis of the Jaszczak and solid Ge-68 phantoms PET images did not reveal statistically significant differences between the corrected and artefact-free images (P>0.05). Moreover, the evaluation of clinical studies did not reveal statistically significant differences between the attenuation coefficients of the corrected mumaps and the expected theoretical values.
The proposed MAR method provides a simple and convenient approach allowing correction for the presence of metal artefacts caused by dental implants without the need to manipulate the complex raw CT data. Further evaluation using a larger clinical PET/CT database is under way to evaluate the potential of the technique in a clinical setting.
正电子发射断层扫描(PET)数据的衰减校正需要准确确定衰减图(mumap),它表示不同组织在511keV时线性衰减系数的空间分布。已知在头颈部X射线计算机断层扫描(CT)中存在高密度金属牙科填充材料会在所得CT图像中产生条纹伪影,进而在使用基于CT的衰减校正生成的相应mumap中产生条纹伪影。因此,校正后的PET图像的相应区域会出现活性浓度的低估/高估。本研究的目的是开发一种简单而实用的方法,以减少生成的mumap中的金属牙科植入物伪影。
目前可用的基于正弦图的金属伪影减少(MAR)算法直接对原始正弦图进行操作。这些正弦图通常由以专有格式存储的巨大文件组成,制造商不易公开,因此不易读取和处理。所提出的方法使用通过对Dicom格式的CT图像进行正向投影生成的虚拟正弦图的概念进行MAR。通过对CT图像中的金属物体进行分割,然后对仅包含金属的图像进行正向投影,在正弦图空间中检测受金属物体影响的投影数据。此后,使用样条插值技术将受影响的正弦图区间替换为来自相邻投影的插值。使用包含模拟不同组织的材料的聚乙烯体模和在插入金属物体前后扫描的专用颌骨体模对该算法进行评估,将校正后的和未校正的mumap与无伪影的mumap进行比较。此外,在PET/CT扫描仪上扫描包含四个金属插入物的Jaszczak体模和标准锗体模,通过将未校正和校正后的PET图像与体模中的实际活性浓度进行比较,评估MAR程序对PET数据的影响。所提出的算法还应用于10例有金属牙科植入物的患者的头颈部CT图像。
MAR方法在临床环境中被证明是实用的,并且大大减少了可见的金属诱导伪影。靠近金属物体区域的平均相对误差降低了约90%。对Jaszczak体模和固体Ge-68体模PET图像的统计分析未显示校正后的图像和无伪影图像之间存在统计学显著差异(P>0.05)。此外,临床研究评估未显示校正后的mumap的衰减系数与预期理论值之间存在统计学显著差异。
所提出的MAR方法提供了一种简单方便的方法,无需处理复杂的原始CT数据即可校正由牙科植入物引起的金属伪影。正在使用更大的临床PET/CT数据库进行进一步评估以评估该技术在临床环境中的潜力。