首页> 外文期刊>Japanese journal of radiology >Deep learning-based and hybrid-type iterative reconstructions for CT: comparison of capability for quantitative and qualitative image quality improvements and small vessel evaluation at dynamic CE-abdominal CT with ultra-high and standard resolutions
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Deep learning-based and hybrid-type iterative reconstructions for CT: comparison of capability for quantitative and qualitative image quality improvements and small vessel evaluation at dynamic CE-abdominal CT with ultra-high and standard resolutions

机译:用于CT的深度学习和混合型迭代重建:具有超高和标准分辨率的动态CE腹部CT的定量和定性图像质量改进和小血管评价的能力的比较

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摘要

Purpose To determine the image quality improvement including vascular structures using deep learning reconstruction (DLR) for ultra-high-resolution CT (UHR-CT) and area-detector CT (ADCT) compared to a commercially available hybrid-iterative reconstruction (IR) method. Materials and method Thirty-two patients suspected of renal cell carcinoma underwent dynamic contrast-enhanced (CE) CT using UHR-CT or ADCT systems. CT value and contrast-to-noise ratio (CNR) on each CT dataset were assessed with region of interest (ROI) measurements. For qualitative assessment of improvement for vascular structure visualization, each artery was assessed using a 5-point scale. To determine the utility of DLR, CT values and CNRs were compared among all UHR-CT data by means of ANOVA followed by Bonferroni post hoc test, and same values on ADCT data were also compared between hybrid IR and DLR methods by pairedttest. Results For all arteries except the aorta, the CT value and CNR of the DLR method were significantly higher compared to those of the hybrid-type IR method in both CT systems reconstructed as 512 or 1024 matrixes (p < 0.05). Conclusion DLR has a higher potential to improve the image quality resulting in a more accurate evaluation for vascular structures than hybrid IR for both UHR-CT and ADCT.
机译:目的与市售的混合迭代重建(IR)方法相比,确定超高分辨率CT(UHR-CT)和面积检测器CT(ADCT)使用深度学习重建(DLR)的图像质量改善,包括血管结构。材料与方法32例疑似肾细胞癌患者采用UHR-CT或ADCT系统进行动态增强扫描(CE)。通过感兴趣区域(ROI)测量评估每个CT数据集的CT值和对比噪声比(CNR)。对于血管结构可视化改善的定性评估,使用5分量表对每条动脉进行评估。为了确定DLR的效用,通过方差分析和Bonferroni事后检验对所有UHR-CT数据中的CT值和CNR进行比较,并通过配对试验对混合IR和DLR方法中的ADCT数据中的相同值进行比较。结果在重建为512或1024个矩阵的CT系统中,除主动脉外的所有动脉,DLR方法的CT值和CNR均显著高于混合型IR方法(p<0.05)。结论与UHR-CT和ADCT的混合IR相比,DLR具有更高的潜力来改善图像质量,从而更准确地评估血管结构。

著录项

  • 来源
    《Japanese journal of radiology》 |2021年第2期|共12页
  • 作者单位

    Fujita Hlth Univ Dept Radiol Sch Med 1-98 Dengakugakubo Kutsukake Cho Toyoake Aichi 4701192;

    Fujita Hlth Univ Dept Radiol Sch Med 1-98 Dengakugakubo Kutsukake Cho Toyoake Aichi 4701192;

    Fujita Hlth Univ Dept Radiol Sch Med 1-98 Dengakugakubo Kutsukake Cho Toyoake Aichi 4701192;

    Fujita Hlth Univ Dept Radiol Sch Med 1-98 Dengakugakubo Kutsukake Cho Toyoake Aichi 4701192;

    Canon Med Syst Corp 1385 Shimoishigami Otawara Tochigi 3248550 Japan;

    Canon Med Syst Corp 1385 Shimoishigami Otawara Tochigi 3248550 Japan;

    Canon Med Syst Corp 1385 Shimoishigami Otawara Tochigi 3248550 Japan;

    Fujita Hlth Univ Joint Res Lab Adv Med Imaging Sch Med 1-98 Dengakugakubo Kutsukake Cho Toyoake;

    Fujita Hlth Univ Dept Radiol Sch Med 1-98 Dengakugakubo Kutsukake Cho Toyoake Aichi 4701192;

    Fujita Hlth Univ Dept Radiol Sch Med 1-98 Dengakugakubo Kutsukake Cho Toyoake Aichi 4701192;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 放射医学;
  • 关键词

    Abdomen; Vasculature; CT; Reconstruction; Deep learning;

    机译:腹部;脉管系统;CT;重建;深度学习;

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