Weiß Jakob, Schabel Christoph, Bongers Malte, Raupach Rainer, Clasen Stephan, Notohamiprodjo Mike, Nikolaou Konstantin, Bamberg Fabian
1 Department of Diagnostic and Interventional Radiology, Eberhard Karls University, Tübingen, Germany.
2 Siemens AG, Healthcare Sector, Forchheim, Germany.
Acta Radiol. 2017 Mar;58(3):279-285. doi: 10.1177/0284185116646144. Epub 2016 Jul 20.
Background Metal artifacts often impair diagnostic accuracy in computed tomography (CT) imaging. Therefore, effective and workflow implemented metal artifact reduction algorithms are crucial to gain higher diagnostic image quality in patients with metallic hardware. Purpose To assess the clinical performance of a novel iterative metal artifact reduction (iMAR) algorithm for CT in patients with dental fillings. Material and Methods Thirty consecutive patients scheduled for CT imaging and dental fillings were included in the analysis. All patients underwent CT imaging using a second generation dual-source CT scanner (120 kV single-energy; 100/Sn140 kV in dual-energy, 219 mAs, gantry rotation time 0.28-1/s, collimation 0.6 mm) as part of their clinical work-up. Post-processing included standard kernel (B49) and an iterative MAR algorithm. Image quality and diagnostic value were assessed qualitatively (Likert scale) and quantitatively (HU ± SD) by two reviewers independently. Results All 30 patients were included in the analysis, with equal reconstruction times for iMAR and standard reconstruction (17 s ± 0.5 vs. 19 s ± 0.5; P > 0.05). Visual image quality was significantly higher for iMAR as compared with standard reconstruction (3.8 ± 0.5 vs. 2.6 ± 0.5; P < 0.0001, respectively) and showed improved evaluation of adjacent anatomical structures. Similarly, HU-based measurements of degree of artifacts were significantly lower in the iMAR reconstructions as compared with the standard reconstruction (0.9 ± 1.6 vs. -20 ± 47; P < 0.05, respectively). Conclusion The tested iterative, raw-data based reconstruction MAR algorithm allows for a significant reduction of metal artifacts and improved evaluation of adjacent anatomical structures in the head and neck area in patients with dental hardware.
背景 金属伪影常常会降低计算机断层扫描(CT)成像的诊断准确性。因此,有效且能融入工作流程的金属伪影减少算法对于提高有金属植入物患者的诊断图像质量至关重要。目的 评估一种新型的用于有牙填充物患者CT的迭代金属伪影减少(iMAR)算法的临床性能。材料与方法 分析纳入了连续30例计划进行CT成像及牙填充物治疗的患者。所有患者均使用第二代双源CT扫描仪进行CT成像(单能量120 kV;双能量100/Sn140 kV,219 mAs,机架旋转时间0.28 - 1/s,准直0.6 mm),作为其临床检查的一部分。后处理包括标准核(B49)和迭代MAR算法。由两名阅片者独立对图像质量和诊断价值进行定性(李克特量表)和定量(HU ± SD)评估。结果 所有30例患者均纳入分析,iMAR和标准重建的重建时间相等(17 s ± 0.5 vs. 19 s ± 0.5;P > 0.05)。与标准重建相比,iMAR的视觉图像质量显著更高(分别为3.8 ± 0.5 vs. 2.6 ± 0.5;P < 0.0001),且对相邻解剖结构的评估有所改善。同样,与标准重建相比,基于HU的伪影程度测量在iMAR重建中显著更低(分别为0.9 ± 1.6 vs. -20 ± 47;P < 0.05)。结论 所测试的基于原始数据的迭代重建MAR算法能够显著减少有牙植入物患者头颈部区域的金属伪影,并改善对相邻解剖结构的评估。