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低管电压全身 CT 血管造影术联合极低碘对比剂剂量:混合迭代重建与深度学习图像重建算法的比较。

Low-tube-voltage whole-body CT angiography with extremely low iodine dose: a comparison between hybrid-iterative reconstruction and deep-learning image-reconstruction algorithms.

机构信息

Department of Radiology, Gifu University, 1-1 Yanagido, Gifu 501-1194, Japan.

Department of Radiology, Gifu University, 1-1 Yanagido, Gifu 501-1194, Japan.

出版信息

Clin Radiol. 2024 Jun;79(6):e791-e798. doi: 10.1016/j.crad.2024.02.002. Epub 2024 Feb 15.

DOI:10.1016/j.crad.2024.02.002
PMID:38403540
Abstract

AIM

To evaluate arterial enhancement, its depiction, and image quality in low-tube potential whole-body computed tomography (CT) angiography (CTA) with extremely low iodine dose and compare the results with those obtained by hybrid-iterative reconstruction (IR) and deep-learning image-reconstruction (DLIR) methods.

MATERIALS AND METHODS

This prospective study included 34 consecutive participants (27 men; mean age, 74.2 years) who underwent whole-body CTA at 80 kVp for evaluating aortic diseases between January and July 2020. Contrast material (240 mg iodine/ml) with simultaneous administration of its quarter volume of saline, which corresponded to 192 mg iodine/ml, was administered. CT raw data were reconstructed using adaptive statistical IR-Veo of 40% (hybrid-IR), DLIR with medium- (DLIR-M), and high-strength level (DLIR-H). A radiologist measured CT attenuation of the arteries and background noise, and the signal-to-noise ratio (SNR) was then calculated. Two reviewers qualitatively evaluated the arterial depictions and diagnostic acceptability on axial, multiplanar-reformatted (MPR), and volume-rendered (VR) images.

RESULTS

Mean contrast material volume and iodine weight administered were 64.1 ml and 15.4 g, respectively. The SNRs of the arteries were significantly higher in the following order of the DLIR-H, DLIR-M, and hybrid-IR (p<0.001). Depictions of six arteries on axial, three arteries on MPR, and four arteries on VR images were significantly superior in the DLIR-M or hybrid-IR than in the DLIR-H (p≤0.009 for each). Diagnostic acceptability was significantly better in the DLIR-M and DLIR-H than in the hybrid-IR (p<0.001-0.005).

CONCLUSION

DLIR-M showed well-balanced arterial depictions and image quality compared with the hybrid-IR and DLIR-H.

摘要

目的

评估极低碘剂量下低管电压全身体检 CT 血管造影(CTA)中的动脉增强效果、显示效果和图像质量,并与混合迭代重建(IR)和深度学习图像重建(DLIR)方法的结果进行比较。

材料与方法

本前瞻性研究纳入了 2020 年 1 月至 7 月期间因主动脉疾病行 80 kVp 全身 CTA 检查的 34 例连续患者(27 名男性;平均年龄,74.2 岁)。使用 240mgI/ml 对比剂(同时给予四分之一体积的生理盐水,相当于 192mgI/ml)进行注射。使用自适应统计迭代重建-Veo 40%(混合 IR)、中强度(DLIR-M)和高强度(DLIR-H)水平的 DLIR 对 CT 原始数据进行重建。一名放射科医生测量了动脉的 CT 衰减和背景噪声,并计算了信噪比(SNR)。两位审阅者分别对轴位、多平面重建(MPR)和容积再现(VR)图像上的动脉显示和诊断可接受性进行了定性评估。

结果

平均对比剂体积和碘用量分别为 64.1ml 和 15.4g。动脉的 SNR 按以下顺序依次升高:DLIR-H、DLIR-M 和混合 IR(p<0.001)。在轴向、MPR 上的三支动脉和 VR 上的四支动脉的图像上,DLIR-M 或混合 IR 比 DLIR-H 的显示效果明显更好(p≤0.009)。在诊断可接受性方面,DLIR-M 和 DLIR-H 明显优于混合 IR(p<0.001-0.005)。

结论

与混合 IR 相比,DLIR-M 显示出均衡的动脉显示和图像质量。

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