Inoue Yusuke, Itoh Hiroyasu, Hata Hirofumi, Miyatake Hiroki, Mitsui Kohei, Uehara Shunichi, Masuda Chisaki
Department of Diagnostic Radiology, Kitasato University School of Medicine, Sagamihara 252-0374, Japan.
Department of Radiology, Kitasato University Hospital, Sagamihara 252-0375, Japan.
Tomography. 2024 Dec 18;10(12):2073-2086. doi: 10.3390/tomography10120147.
We evaluated the noise reduction effects of deep learning reconstruction (DLR) and hybrid iterative reconstruction (HIR) in brain computed tomography (CT).
CT images of a 16 cm dosimetry phantom, a head phantom, and the brains of 11 patients were reconstructed using filtered backprojection (FBP) and various levels of DLR and HIR. The slice thickness was 5, 2.5, 1.25, and 0.625 mm. Phantom imaging was also conducted at various tube currents. The noise reduction ratio was calculated using FBP as the reference. For patient imaging, overall image quality was visually compared between DLR and HIR images that exhibited similar noise reduction ratios.
The noise reduction ratio increased with increasing levels of DLR and HIR in phantom and patient imaging. For DLR, noise reduction was more pronounced with decreasing slice thickness, while such thickness dependence was less evident for HIR. Although the noise reduction effects of DLR were similar between the head phantom and patients, they differed for the dosimetry phantom. Variations between imaging objects were small for HIR. The noise reduction ratio was low at low tube currents for the dosimetry phantom using DLR; otherwise, the influence of the tube current was small. In terms of visual image quality, DLR outperformed HIR in 1.25 mm thick images but not in thicker images.
The degree of noise reduction using DLR depends on the slice thickness, tube current, and imaging object in addition to the level of DLR, which should be considered in the clinical use of DLR. DLR may be particularly beneficial for thin-slice imaging.
我们评估了深度学习重建(DLR)和混合迭代重建(HIR)在脑部计算机断层扫描(CT)中的降噪效果。
使用滤波反投影(FBP)以及不同水平的DLR和HIR对一个16厘米剂量学体模、一个头部体模和11名患者的脑部CT图像进行重建。切片厚度为5、2.5、1.25和0.625毫米。还在不同管电流下进行了体模成像。以FBP为参考计算降噪率。对于患者成像,在具有相似降噪率的DLR和HIR图像之间进行总体图像质量的视觉比较。
在体模和患者成像中,降噪率随DLR和HIR水平的增加而增加。对于DLR,随着切片厚度减小,降噪更明显,而对于HIR,这种厚度依赖性不太明显。尽管DLR在头部体模和患者之间的降噪效果相似,但在剂量学体模中有所不同。HIR在成像对象之间的差异较小。使用DLR时,剂量学体模在低管电流下的降噪率较低;否则,管电流的影响较小。在视觉图像质量方面,DLR在1.25毫米厚的图像中优于HIR,但在更厚的图像中则不然。
除了DLR水平外,使用DLR的降噪程度还取决于切片厚度、管电流和成像对象,这在DLR的临床应用中应予以考虑。DLR可能对薄层成像特别有益。