Suppr超能文献

结合深度学习与双能技术的小儿腹部CT降噪方法

Noise reduction approach in pediatric abdominal CT combining deep learning and dual-energy technique.

作者信息

Lee Seunghyun, Choi Young Hun, Cho Yeon Jin, Lee Seul Bi, Cheon Jung-Eun, Kim Woo Sun, Ahn Chul Kyun, Kim Jong Hyo

机构信息

Department of Radiology, Seoul National University Hospital, 101 Daehak-ro, Jongno-gu, Seoul, 03080, Republic of Korea.

Department of Radiology, Seoul National University College of Medicine, 103 Daehak-ro, Jongno-gu, Seoul, 03080, Republic of Korea.

出版信息

Eur Radiol. 2021 Apr;31(4):2218-2226. doi: 10.1007/s00330-020-07349-9. Epub 2020 Oct 8.

Abstract

OBJECTIVES

To evaluate the image quality of low iodine concentration, dual-energy CT (DECT) combined with a deep learning-based noise reduction technique for pediatric abdominal CT, compared with standard iodine concentration single-energy polychromatic CT (SECT).

METHODS

From December 2016 to May 2017, DECT with 300 mg•I/mL contrast medium was performed in 29 pediatric patients (17 boys, 12 girls; age, 2-19 years). The DECT images were reconstructed using a noise-optimized virtual monoenergetic reconstruction image (VMI) with and without a deep learning method. SECT images with 350 mg•I/mL contrast medium, performed within the last 3 months before the DECT, served as reference images. The quantitative and qualitative parameters were compared using paired t tests and Wilcoxon signed-rank tests, and the differences in radiation dose and total iodine administration were assessed.

RESULTS

The linearly blended DECT showed lower attenuation and higher noise than SECT. The 60-keV VMI showed an increase in attenuation and higher noise than SECT. The combined 60-keV VMI plus deep learning images showed low noise, no difference in contrast-to-noise ratios, and overall image quality or diagnostic image quality, but showed a higher signal-to-noise ratio in the liver and lower enhancement of lesions than SECT. The overall image and diagnostic quality of lesions were maintained on the combined noise reduction approach. The CT dose index volume and total iodine administration in DECT were respectively 19.6% and 14.3% lower than those in SECT.

CONCLUSION

Low iodine concentration DECT, combined with deep learning in pediatric abdominal CT, can maintain image quality while reducing the radiation dose and iodine load, compared with standard SECT.

KEY POINTS

• An image noise reduction approach combining deep learning and noise-optimized virtual monoenergetic image reconstruction can maintain image quality while reducing radiation dose and iodine load. • The 60-keV virtual monoenergetic image reconstruction plus deep learning images showed low noise, no difference in contrast-to-noise ratio, and overall image quality, but showed a higher signal-to-noise ratio in the liver and a lower enhancement of lesion than single-energy polychromatic CT. • This combination could offer a 19.6% reduction in radiation dose and a 14.3% reduction in iodine load, in comparison with a control group that underwent single-energy polychromatic CT with the standard protocol.

摘要

目的

评估低碘浓度双能CT(DECT)联合基于深度学习的降噪技术用于儿童腹部CT的图像质量,并与标准碘浓度单能多色CT(SECT)进行比较。

方法

2016年12月至2017年5月,对29例儿科患者(17例男孩,12例女孩;年龄2至19岁)进行了使用300mg•I/mL对比剂的DECT检查。DECT图像采用带和不带深度学习方法的噪声优化虚拟单能重建图像(VMI)进行重建。在DECT检查前3个月内进行的使用350mg•I/mL对比剂的SECT图像用作参考图像。使用配对t检验和Wilcoxon符号秩检验比较定量和定性参数,并评估辐射剂量和总碘用量的差异。

结果

线性混合DECT显示出比SECT更低的衰减和更高的噪声。60keV的VMI显示出比SECT更高的衰减和噪声。60keV的VMI联合深度学习图像显示出低噪声,对比噪声比无差异,整体图像质量或诊断图像质量良好,但肝脏中的信噪比更高,病变强化程度低于SECT。联合降噪方法维持了病变的整体图像和诊断质量。DECT的CT剂量指数容积和总碘用量分别比SECT低19.6%和14.3%。

结论

与标准SECT相比,低碘浓度DECT联合深度学习用于儿童腹部CT时,可在降低辐射剂量和碘负荷的同时维持图像质量。

要点

• 深度学习与噪声优化虚拟单能图像重建相结合的图像降噪方法可在降低辐射剂量和碘负荷的同时维持图像质量。• 60keV虚拟单能图像重建联合深度学习图像显示出低噪声,对比噪声比无差异,整体图像质量良好,但肝脏中的信噪比高于单能多色CT,病变强化程度低于单能多色CT。• 与采用标准方案进行单能多色CT检查的对照组相比,这种联合方法可使辐射剂量降低19.6%,碘负荷降低14.3%。

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验