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[基于深度学习重建的超高分辨率CT肺气肿定量分析:与混合迭代重建的比较]

[Quantitative Analysis of Emphysema in Ultra-high-resolution CT by Using Deep Learning Reconstruction: Comparison with Hybrid Iterative Reconstruction].

作者信息

Muramatsu Shun, Sato Kazuhiro

机构信息

Department of Radiology, Ohara General Hospital.

Health Sciences, Tohoku University Graduate School of Medicine.

出版信息

Nihon Hoshasen Gijutsu Gakkai Zasshi. 2020;76(11):1163-1172. doi: 10.6009/jjrt.2020_JSRT_76.11.1163.

Abstract

PURPOSE

The noise generated in ultra-high-resolution computed tomography (U-HRCT) images affects the quantitative analysis of emphysema. In this study, we compared the physical properties of reconstructed images for hybrid iterative reconstruction (HIR) and deep learning reconstruction (DLR), which are reconstruction methods for reducing image noise. Using clinical evaluation, we evaluated the correlation between low attenuation volume (LAV) % obtained by CT and forced expiratory volume in 1 s per forced vital capacity (FEV/FVC) obtained by respiratory function tests.

MATERIALS AND METHODS

CT data obtained by HIR and DLR were used for analysis (matrix size: 1024´1024, slice thickness: 0.25 mm). The physical characteristics were evaluated for the modulation transfer function (MTF) and noise power spectrum (NPS). Display-field of view (D-FOV) was analyzed by varying between 300 mm and 400 mm. The clinical data evaluated the relationship between LAV% and FEV/FVC by Spearman's correlation coefficient.

RESULT

The 10% MTFs were 1.3 cycles/mm (HIR) and 1.3 cycles/mm (DLR) at D-FOV 300 mm, and 1.2 cycles/mm (HIR) and 1.1 cycles/mm (DLR) at D-FOV 400 mm. The NPS had less noise in DLR than HIR in all frequency ranges. The correlation coefficients between LAV% and FEV/FVC were 0.64 and 0.71, respectively, in HIR and DLR.

CONCLUSION

There was no difference in the resolution characteristics of HIR and DLR. DLR had better noise characteristics than HIR. The correlation between LAV% measured by HIR and DLR and FEV/FVC is equivalent. The noise characteristics of the DLR enable the reduction of exposure to emphysema quantitative analysis by CT.

摘要

目的

超高分辨率计算机断层扫描(U-HRCT)图像中产生的噪声会影响肺气肿的定量分析。在本研究中,我们比较了混合迭代重建(HIR)和深度学习重建(DLR)这两种用于减少图像噪声的重建方法所重建图像的物理特性。通过临床评估,我们评估了CT获得的低衰减体积(LAV)%与呼吸功能测试获得的一秒用力呼气量占用力肺活量的百分比(FEV/FVC)之间的相关性。

材料与方法

将通过HIR和DLR获得的CT数据用于分析(矩阵大小:1024×1024,层厚:0.25mm)。对调制传递函数(MTF)和噪声功率谱(NPS)的物理特性进行评估。通过在300mm至400mm之间变化来分析显示视野(D-FOV)。临床数据通过Spearman相关系数评估LAV%与FEV/FVC之间的关系。

结果

在D-FOV为300mm时,10%MTF分别为1.3周期/mm(HIR)和1.3周期/mm(DLR),在D-FOV为400mm时,分别为1.2周期/mm(HIR)和1.1周期/mm(DLR)。在所有频率范围内,DLR的NPS噪声均比HIR少。HIR和DLR中LAV%与FEV/FVC的相关系数分别为0.64和0.71。

结论

HIR和DLR的分辨率特征无差异。DLR的噪声特征优于HIR。HIR和DLR测量的LAV%与FEV/FVC之间的相关性相当。DLR的噪声特征能够减少CT对肺气肿定量分析的曝光。

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