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深度学习图像重建在提高胸部CT图像质量的临床应用研究

马光明 吴海波 樊秋菊 于勇 于楠 段海峰

中国医疗设备2025,Vol.40Issue(4):138-143,6.
中国医疗设备2025,Vol.40Issue(4):138-143,6.DOI:10.3969/j.issn.1674-1633.20240625

深度学习图像重建在提高胸部CT图像质量的临床应用研究

Research on the Clinical Application of Deep Learning Image Reconstruction in Improving the Quality of Chest CT Images

马光明 1吴海波 2樊秋菊 1于勇 1于楠 1段海峰1

作者信息

  • 1. 陕西中医药大学附属医院 医学影像科,陕西 咸阳 712000
  • 2. 宁夏中卫市人民医院 脑病科,宁夏 中卫 755000
  • 折叠

摘要

Abstract

Objective To evaluate the effect of deep learning iterative reconstruction(DLIR)algorithm on the quality and noise of chest CT images.Methods The original data of 60 cases of chest CT examination in our hospital were retrospectively selected,and filtered back projection reconstruction(group A),adaptive statistical iterative reconstruction-veo 40%(group B),DLIR-medium(group C)and DLIR-high(group D).The CT values and SD values of lung tissue,aorta,muscle,thoracic vertebrae,and air were measured in four groups,and the signal to noise ratio(SNR)and contrast to noise ratio(CNR)of each tissue were calculated.Two physicians used a double-blind method to subjectively score image noise,artifacts,diagnostic confidence,and overall image quality on a 5-point scale.Results There was no significant difference in the CT values of lung tissue,aorta,muscle,thoracic spine and air between the four groups(P>0.05),but there was a statistically significant difference in noise values(P<0.05),and different reconstruction algorithms had a significant impact on the image noise.There were statistically significant differences in SNR and CNR among the four groups(P<0.05),among which the SNR and CNR of group D were the highest,and those of group A were the lowest.The subjective scores of the two physicians were in good agreement,and the Kappa value ranged from 0.781 to 0.884.There were significant differences in image noise,artifacts,diagnostic confidence,and overall image quality scores among the four groups(P<0.05),the subjective scores of groups C and D were higher than those of groups A and B,and there was no difference in subjective scores between groups C and D(P>0.05).Conclusion The DLIR algorithm can reduce the noise of chest CT images,provide higher image quality,enhance doctors'confidence in diagnosis,and has great potential to reduce radiation dose.

关键词

计算机断层扫描/深度学习重建/图像质量/信噪比/对比噪声比/辐射剂量

Key words

computed tomography(CT)/deep learning reconstruction/image quality/signal to noise ratio(SNR)/contrast to noise ratio(CNR)/radiation dose

分类

医药卫生

引用本文复制引用

马光明,吴海波,樊秋菊,于勇,于楠,段海峰..深度学习图像重建在提高胸部CT图像质量的临床应用研究[J].中国医疗设备,2025,40(4):138-143,6.

基金项目

陕西省教育厅青年创新团队科研计划项目(23JP035 ()

23JP036) ()

咸阳市重点研发计划项目(L2023-ZDYF-SF-048). (L2023-ZDYF-SF-048)

中国医疗设备

1674-1633

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