Diagnostic Radiology, Hiroshima University, 1-2-3 Kasumi, Minami-ku, Hiroshima, Japan.
Canon Medical Research USA, Inc., Vernon Hills, IL, USA.
Eur Radiol. 2019 Nov;29(11):6163-6171. doi: 10.1007/s00330-019-06170-3. Epub 2019 Apr 11.
Deep learning reconstruction (DLR) is a new reconstruction method; it introduces deep convolutional neural networks into the reconstruction flow. This study was conducted in order to examine the clinical applicability of abdominal ultra-high-resolution CT (U-HRCT) exams reconstructed with a new DLR in comparison to hybrid and model-based iterative reconstruction (hybrid-IR, MBIR).
Our retrospective study included 46 patients seen between December 2017 and April 2018. A radiologist recorded the standard deviation of attenuation in the paraspinal muscle as the image noise and calculated the contrast-to-noise ratio (CNR) for the aorta, portal vein, and liver. The overall image quality was assessed by two other radiologists and graded on a 5-point confidence scale ranging from 1 (unacceptable) to 5 (excellent). The difference between CT images subjected to hybrid-IR, MBIR, and DLR was compared.
The image noise was significantly lower and the CNR was significantly higher on DLR than hybrid-IR and MBIR images (p < 0.01). DLR images received the highest and MBIR images the lowest scores for overall image quality.
DLR improved the quality of abdominal U-HRCT images.
• The potential degradation due to increased noise may prevent implementation of ultra-high-resolution CT in the abdomen. • Image noise and overall image quality for hepatic ultra-high-resolution CT images improved with deep learning reconstruction as compared to hybrid- and model-based iterative reconstruction.
深度学习重建(DLR)是一种新的重建方法;它将深度卷积神经网络引入到重建流程中。本研究旨在考察腹部超高分辨率 CT(U-HRCT)检查中使用新 DLR 重建与混合和基于模型迭代重建(hybrid-IR、MBIR)相比的临床适用性。
我们的回顾性研究纳入了 2017 年 12 月至 2018 年 4 月间的 46 例患者。一位放射科医生记录了椎旁肌肉衰减的标准差作为图像噪声,并计算了主动脉、门静脉和肝脏的对比噪声比(CNR)。另外两位放射科医生对整体图像质量进行评估,并在 1(不可接受)至 5(优秀)的 5 分置信度量表上进行评分。比较了接受混合-IR、MBIR 和 DLR 处理的 CT 图像之间的差异。
与混合-IR 和 MBIR 图像相比,DLR 图像的噪声显著降低,CNR 显著提高(p < 0.01)。DLR 图像的整体图像质量评分最高,而 MBIR 图像的评分最低。
DLR 提高了腹部 U-HRCT 图像的质量。
• 由于噪声增加而导致的潜在劣化可能会阻止腹部超高分辨率 CT 的应用。
• 与混合和基于模型的迭代重建相比,深度学习重建可改善肝超高分辨率 CT 图像的噪声和整体图像质量。