Patients undergoing a mechanical thrombectomy procedure usually have a multi-detector CT (MDCT) scan before and after the intervention. The image quality of the flat panel detector CT (FDCT) present in the intervention room is generally much lower than that of a MDCT due to significant artifacts. However, using only FDCT images could improve patient management as the patient would not need to be moved to the MDCT room. Several studies have evaluated the potential use of FDCT imaging alone and the time that could be saved by acquiring the images before and/or after the intervention only with the FDCT. This study proposes using a denoising diffusion probabilistic model (DDPM) to improve the image quality of FDCT scans, making them comparable to MDCT scans. Clinicans evaluated FDCT, MDCT, and our model's predictions for diagnostic purposes using a questionnaire. The DDPM eliminated most artifacts and improved anatomical visibility without reducing bleeding detection, provided that the input FDCT image quality is not too low. Our code can be found on github.
翻译:接受机械取栓手术的患者通常在干预前后会进行多排探测器CT(MDCT)扫描。由于存在显著伪影,介入手术室中平板探测器CT(FDCT)的图像质量通常远低于MDCT。然而,仅使用FDCT图像可优化患者管理流程,因为患者无需转移至MDCT扫描室。多项研究评估了单独使用FDCT成像的潜在价值,以及仅通过FDCT在干预前后获取图像可能节省的时间。本研究提出使用去噪扩散概率模型(DDPM)提升FDCT扫描的图像质量,使其达到与MDCT扫描相当的水平。临床医师通过标准化问卷对FDCT、MDCT及本模型预测图像进行了诊断价值评估。实验表明,在输入FDCT图像质量不过低的前提下,DDPM能消除大部分伪影并提升解剖结构可视度,同时不影响出血检测的准确性。相关代码已发布于github平台。