Watson Peter G F, Mainegra-Hing Ernesto, Tomic Nada, Seuntjens Jan
McGill University.
J Appl Clin Med Phys. 2015 Jul 8;16(4):216–227. doi: 10.1120/jacmp.v16i4.5393.
Cone-beam computed tomography (CBCT) images suffer from poor image quality, in a large part due to contamination from scattered X-rays. In this work, a Monte Carlo (MC)-based iterative scatter correction algorithm was implemented on measured phantom data acquired from a clinical on-board CBCT scanner. An efficient EGSnrc user code (egs_cbct) was used to transport photons through an uncorrected CBCT scan of a Catphan 600 phantom. From the simulation output, the contribution from primary and scattered photons was estimated in each projection image. From these estimates, an iterative scatter correction was performed on the raw CBCT projection data. The results of the scatter correction were compared with the default vendor reconstruction. The scatter correction was found to reduce the error in CT number for selected regions of interest, while improving contrast-to-noise ratio (CNR) by 18%. These results demonstrate the performance of the proposed scatter correction algorithm in improving image quality for clinical CBCT images.
锥束计算机断层扫描(CBCT)图像的质量较差,很大程度上是由于散射X射线的污染。在这项工作中,基于蒙特卡洛(MC)的迭代散射校正算法应用于从临床机载CBCT扫描仪获取的测量体模数据。使用高效的EGSnrc用户代码(egs_cbct)将光子传输通过Catphan 600体模的未校正CBCT扫描。从模拟输出中,估计每个投影图像中初级光子和散射光子的贡献。根据这些估计,对原始CBCT投影数据进行迭代散射校正。将散射校正的结果与默认的供应商重建结果进行比较。发现散射校正可减少选定感兴趣区域的CT值误差,同时将对比度噪声比(CNR)提高18%。这些结果证明了所提出的散射校正算法在改善临床CBCT图像质量方面的性能。