Bocquet Wesley, Bouzerar Roger, François Géraldine, Leleu Antoine, Renard Cédric
Department of Radiology.
Biophysics and Image Processing Unit.
J Thorac Imaging. 2025 May 1;40(3):e0806. doi: 10.1097/RTI.0000000000000806.
To evaluate the accuracy of ultra-low dose (ULD) chest computed tomography (CT), with a radiation exposure equivalent to a 2-view chest x-ray, for pulmonary nodule detection using deep learning image reconstruction (DLIR).
This prospective cross-sectional study included 60 patients referred to our institution for assessment or follow-up of solid pulmonary nodules. All patients underwent low-dose (LD) and ULD chest CT within the same examination session. LD CT data were reconstructed using Adaptive Statistical Iterative Reconstruction-V (ASIR-V), whereas ULD CT data were reconstructed using DLIR and ASIR-V. ULD CT images were reviewed by 2 readers and LD CT images were reviewed by an experienced thoracic radiologist as the reference standard. Quantitative image quality analysis was performed, and the detectability of pulmonary nodules was assessed according to their size and location.
The effective radiation dose for ULD CT and LD CT were 0.13±0.01 and 1.16±0.6 mSv, respectively. Over the whole population, LD CT revealed 733 nodules. At ULD, DLIR images significantly exhibited better image quality than ASIR-V images. The overall sensitivity of DLIR reconstruction for the detection of solid pulmonary nodules from the ULD CT series was 93% and 82% for the 2 readers, with a good to excellent agreement with LD CT (ICC=0.82 and 0.66, respectively). The best sensitivities were observed in the middle lobe (97% and 85%, respectively).
At ULD, DLIR reconstructions, with minimal radiation exposure that could facilitate large-scale screening, allow the detection of pulmonary nodules with high sensitivity in an unrestricted BMI population.
评估超低剂量(ULD)胸部计算机断层扫描(CT)在使用深度学习图像重建(DLIR)检测肺结节方面的准确性,其辐射暴露量相当于两张胸部X光片。
这项前瞻性横断面研究纳入了60例因实性肺结节评估或随访转诊至本机构的患者。所有患者在同一检查时段内接受了低剂量(LD)和ULD胸部CT检查。LD CT数据采用自适应统计迭代重建-V(ASIR-V)进行重建,而ULD CT数据采用DLIR和ASIR-V进行重建。ULD CT图像由两名阅片者进行评估,LD CT图像由一位经验丰富的胸放射科医生作为参考标准进行评估。进行了定量图像质量分析,并根据肺结节的大小和位置评估其可检测性。
ULD CT和LD CT的有效辐射剂量分别为0.13±0.01和1.16±0.6 mSv。在整个人群中,LD CT显示了733个结节。在ULD时,DLIR图像的图像质量明显优于ASIR-V图像。ULD CT系列中,DLIR重建检测实性肺结节的总体敏感度,两位阅片者分别为93%和82%,与LD CT的一致性良好至优秀(ICC分别为0.82和0.66)。中叶的敏感度最高(分别为97%和85%)。
在ULD时,DLIR重建辐射暴露极少,有助于大规模筛查,能够在BMI不受限的人群中高灵敏度地检测肺结节。