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深度学习图像重建提高腹部 CT 图像质量:与混合迭代重建的比较。

Deep learning image reconstruction for improvement of image quality of abdominal computed tomography: comparison with hybrid iterative reconstruction.

机构信息

Department of Radiology, Mie University Hospital, 2-174 Edobashi, Tsu, Mie, 514-8507, Japan.

出版信息

Jpn J Radiol. 2021 Jun;39(6):598-604. doi: 10.1007/s11604-021-01089-6. Epub 2021 Jan 15.

DOI:10.1007/s11604-021-01089-6
PMID:33449305
Abstract

PURPOSE

To evaluate the usefulness of the deep learning image reconstruction (DLIR) to enhance the image quality of abdominal CT, compared to iterative reconstruction technique.

METHOD

Pre and post-contrast abdominal CT images in 50 patients were reconstructed with 2 different algorithms: hybrid iterative reconstruction (hybrid IR: ASiR-V 50%) and DLIR (TrueFidelity). Standard deviation of attenuation in normal liver parenchyma was measured as the image noise on pre and post-contrast CT. The contrast-to-noise ratio (CNR) for the aorta, and the signal-to-noise ratio (SNR) of the liver were calculated on post-contrast CT. The overall image quality was graded on a 5-point scale ranging from 1 (poor) to 5 (excellent).

RESULTS

The image noise was significantly decreased by DLIR compared to hybrid-IR [hybrid IR, median 8.3 Hounsfield unit (HU) (interquartile range (IQR) 7.6-9.2 HU); DLIR, median 5.2 HU (IQR 4.6-5.8), P < 0.0001 for post-contrast CT]. The CNR and SNR were significantly improved by DLIR [CNR, median 4.5 (IQR 3.8-5.6) vs 7.3 (IQR 6.2-8.8), P < 0.0001; SNR, median 9.4 (IQR 8.3-10.1) vs 15.0 (IQR 13.2-16.4), P < 0.0001]. The overall image quality score was also higher for DLIR compared to hybrid-IR (hybrid IR 3.1 ± 0.6 vs DLIR 4.6 ± 0.5, P < 0.0001 for post-contrast CT).

CONCLUSIONS

Image noise, overall image quality, CNR and SNR for abdominal CT images are improved with DLIR compared to hybrid IR.

摘要

目的

评估深度学习图像重建(DLIR)在增强腹部 CT 图像质量方面的有效性,与迭代重建技术进行比较。

方法

对 50 例患者的腹部 CT 平扫及增强期图像分别采用 2 种不同的重建算法:混合迭代重建(hybrid IR:ASiR-V 50%)和 DLIR(TrueFidelity)进行重建。在平扫及增强期 CT 上测量正常肝实质的衰减标准差作为图像噪声。计算主动脉的对比噪声比(CNR)和肝脏的信噪比(SNR)。采用 5 分制对总体图像质量进行评分,范围为 1(差)至 5(优)。

结果

与 hybrid-IR 相比,DLIR 显著降低了图像噪声[hybrid IR,中位数 8.3 亨斯菲尔德单位(HU)(四分位间距(IQR)7.6-9.2 HU);DLIR,中位数 5.2 HU(IQR 4.6-5.8),P<0.0001,均用于增强期 CT]。DLIR 还显著提高了 CNR 和 SNR[CNR,中位数 4.5(IQR 3.8-5.6)比 7.3(IQR 6.2-8.8),P<0.0001;SNR,中位数 9.4(IQR 8.3-10.1)比 15.0(IQR 13.2-16.4),P<0.0001]。与 hybrid-IR 相比,DLIR 的总体图像质量评分也更高(hybrid IR 3.1±0.6 比 DLIR 4.6±0.5,P<0.0001,均用于增强期 CT)。

结论

与 hybrid IR 相比,DLIR 可改善腹部 CT 图像的噪声、总体图像质量、CNR 和 SNR。

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