Department of Experimental and Clinical Medicine, University of Magna Graecia, Catanzaro, Italy.
J Appl Clin Med Phys. 2013 Jan 7;14(1):4027. doi: 10.1120/jacmp.v14i1.4027.
The aim of this study was to assess the ability of metal artifact reduction (MAR) algorithm in restoring the CT image quality while correcting the tissue density information for the accurate estimation of the absorbed dose. A phantom filled with titanium (low-Z metal) and Cerrobend (high-Z metal) inserts was used for this purpose. The MAR algorithm was applied to phantom's CT dataset. Static intensity-modulated radiation therapy (IMRT) plans, including five beam angles, were designed and optimized on the uncorrected images to deliver 10 Gy on the simulated target. Monte Carlo dose calculation was computed on uncorrected, corrected, and ground truth image datasets. It was firstly verified that MAR methodology was able to correct HU errors due to the metal presence. In the worst situation (high-Z phantom), the image difference, uncorrected ground truth and corrected ground truth, went from -4.4 ± 118.8 HU to 0.4 ± 10.8 HU, respectively. Secondly, it was observed that the impact of dose errors estimation depends on the atomic number of the metal: low-Z inserts do not produce significant dose inaccuracies, while high-Z implants substantially influence the computation of the absorbed dose. In this latter case, dose errors in the PTV region were up to 23.56% (9.72% mean value) when comparing the uncorrected vs. the ground truth dataset. After MAR correction, errors dropped to 0.11% (0.10% mean value). In conclusion, it was assessed that the new MAR algorithm is able to restore image quality without distorting mass density information, thus producing a more accurate dose estimation.
本研究旨在评估金属伪影降低(MAR)算法在纠正组织密度信息以准确估计吸收剂量的同时恢复 CT 图像质量的能力。为此,使用填充有钛(低 Z 金属)和 Cerrobend(高 Z 金属)插塞的体模。将 MAR 算法应用于体模的 CT 数据集。静态调强放射治疗(IMRT)计划,包括五个射束角度,设计和优化在未校正的图像上,以在模拟目标上提供 10Gy。未校正、校正和真实图像数据集上进行了蒙特卡罗剂量计算。首先验证了 MAR 方法能够纠正由于金属存在而导致的 HU 误差。在最坏的情况下(高 Z 体模),图像差异、未校正的真实值和校正的真实值分别从-4.4±118.8HU 变为 0.4±10.8HU。其次,观察到剂量误差估计的影响取决于金属的原子数:低 Z 插入物不会产生显著的剂量不准确,而高 Z 植入物会大大影响吸收剂量的计算。在后一种情况下,与未校正数据集相比,PTV 区域的剂量误差高达 23.56%(平均值为 9.72%)。经过 MAR 校正后,误差降至 0.11%(平均值为 0.10%)。总之,评估结果表明,新的 MAR 算法能够在不扭曲质量密度信息的情况下恢复图像质量,从而产生更准确的剂量估计。