From the Department of Radiology, State Key Laboratory of Complex Severe and Rare Diseases, Peking Union Medical College Hospital, Chinese Academy of Medical Science and Peking Union Medical College, Beijing, China.
From CT Business Unit, Neusoft Medical System Company, Shenyang, China.
Eur J Radiol. 2021 Jun;139:109735. doi: 10.1016/j.ejrad.2021.109735. Epub 2021 Apr 24.
To compare image quality and lesion diagnosis between reduced-dose abdominopelvic unenhanced computed tomography (CT) using deep learning (DL) post-processing and standard-dose CT using iterative reconstruction (IR).
Totally 251 patients underwent two consecutive abdominopelvic unenhanced CT scans of the same range, including standard and reduced doses, respectively. In group A, standard-dose data were reconstructed by (blend 30 %) IR. In group B, reduced-dose data were reconstructed by filtered back projection reconstruction to obtain group B1 images, and post-processed using the DL algorithm (NeuAI denosing, Neusoft medical, Shenyang, China) with 50 % and 100 % weights to obtain group B2 and B3 images, respectively. Then, CT values of the liver, the second lumbar vertebral centrum, the erector spinae and abdominal subcutaneous fat were measured. CT values, noise levels, signal-to-noise ratios (SNRs), contrast-to-noise ratios (CNRs), radiation doses and subjective scores of image quality were compared. Subjective evaluations of low-density liver lesions were compared by diagnostic results from enhanced CT or Magnetic Resonance Imaging.
Groups B3 and B1 showed the lowest and highest noise levels, respectively (P < 0.001). The SNR and CNR in group B3 were highest (P < 0.001). The radiation dose in group B was reduced by 71.5 % on average compared to group A. Subjective scores in groups A and B2 were highest (P < 0.001). Diagnostic sensitivity and confidence for liver metastases in groups A and B2 were highest (P < 0.001).
Reduced-dose abdominopelvic unenhanced CT combined with DL post-processing could ensure image quality and satisfy diagnostic needs.
比较深度学习(DL)后处理的低剂量腹部盆腔平扫 CT 与迭代重建(IR)的标准剂量 CT 的图像质量和病变诊断。
共 251 例患者连续进行两次相同范围的腹部盆腔平扫 CT 扫描,分别为标准剂量和低剂量。在 A 组中,标准剂量数据通过(混合 30%)IR 重建。在 B 组中,通过滤波反投影重建获得 B1 图像,然后使用 DL 算法(中国沈阳的 NeuAI 去噪、东软医疗)以 50%和 100%的权重进行后处理,分别获得 B2 和 B3 图像。然后测量肝脏、第二腰椎中心、竖脊肌和腹部皮下脂肪的 CT 值。比较 CT 值、噪声水平、信噪比(SNR)、对比噪声比(CNR)、辐射剂量和图像质量的主观评分。通过增强 CT 或磁共振成像的诊断结果比较低密度肝病变的主观评估。
B3 组和 B1 组的噪声水平最低和最高(P < 0.001)。B3 组的 SNR 和 CNR 最高(P < 0.001)。与 A 组相比,B 组的辐射剂量平均降低了 71.5%。A 组和 B2 组的主观评分最高(P < 0.001)。A 组和 B2 组肝转移的诊断敏感性和信心最高(P < 0.001)。
低剂量腹部盆腔平扫 CT 联合 DL 后处理可以保证图像质量并满足诊断需求。