Institut de Cancérologie de l'Ouest, Angers, France.
CEA, List, Laboratoire National Henri Becquerel (LNE-LNHB), Palaiseau, France.
Radiat Oncol. 2023 Sep 5;18(1):146. doi: 10.1186/s13014-023-02336-y.
The interest in MR-only workflows is growing with the introduction of artificial intelligence in the synthetic CT generators converting MR images into CT images. The aim of this study was to evaluate several commercially available sCT generators for two anatomical localizations.
Four sCT generators were evaluated: one based on the bulk density method and three based on deep learning methods. The comparison was performed on large patient cohorts (brain: 42 patients and pelvis: 52 patients). It included geometric accuracy with the evaluation of Hounsfield Units (HU) mean error (ME) for several structures like the body, bones and soft tissues. Dose evaluation included metrics like the D ME for bone structures (skull or femoral heads), PTV and soft tissues (brain or bladder or rectum). A 1%/1 mm gamma analysis was also performed.
HU ME in the body were similar to those reported in the literature. D ME were smaller than 2% for all structures. Mean gamma pass rate down to 78% were observed for the bulk density method in the brain. Performances of the bulk density generator were generally worse than the artificial intelligence generators for the brain but similar for the pelvis. None of the generators performed best in all the metrics studied.
All four generators can be used in clinical practice to implement a MR-only workflow but the bulk density method clearly performed worst in the brain.
随着人工智能在合成 CT 生成器中的应用,将磁共振图像转换为 CT 图像,人们对仅磁共振工作流程的兴趣日益增加。本研究的目的是评估两种解剖定位的几种市售 sCT 生成器。
评估了四种 sCT 生成器:一种基于体密度方法,三种基于深度学习方法。比较在大型患者队列中进行(大脑:42 例,骨盆:52 例)。它包括几何精度,评估了几种结构(如身体、骨骼和软组织)的平均 CT 值误差(ME)。剂量评估包括骨骼结构(颅骨或股骨头)、PTV 和软组织(大脑或膀胱或直肠)的 D ME 等指标。还进行了 1%/1mm 的伽马分析。
身体的 CT 值 ME 与文献报道的相似。所有结构的 D ME 均小于 2%。对于大脑,体密度方法的平均伽马通过率低至 78%。对于大脑,体密度发生器的性能通常不如人工智能发生器,但对于骨盆则相似。在研究的所有指标中,没有一个生成器表现最佳。
所有四种生成器都可以在临床实践中用于实施仅磁共振工作流程,但在大脑中,体密度方法的性能明显最差。