Image quality assessment of pediatric chest and abdomen CT by deep learning reconstruction

被引:27
|
作者
Yoon, Haesung
Kim, Jisoo
Lim, Hyun Ji
Lee, Mi-Jung [1 ]
机构
[1] Yonsei Univ, Severance Hosp, Coll Med, Dept Radiol, 50-1 Yonsei Ro, Seoul 03722, South Korea
关键词
Pediatric; CT; Image quality; Deep learning; Iterative reconstruction; STATISTICAL ITERATIVE RECONSTRUCTION; RADIATION-DOSE REDUCTION; FILTERED BACK-PROJECTION; ABDOMINAL CT; ASIR TECHNIQUE; NOISE;
D O I
10.1186/s12880-021-00677-2
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Background Efforts to reduce the radiation dose have continued steadily, with new reconstruction techniques. Recently, image denoising algorithms using artificial neural networks, termed deep learning reconstruction (DLR), have been applied to CT image reconstruction to overcome the drawbacks of iterative reconstruction (IR). The purpose of our study was to compare the objective and subjective image quality of DLR and IR on pediatric abdomen and chest CT images. Methods This retrospective study included pediatric body CT images from February 2020 to October 2020, performed on 51 patients (34 boys and 17 girls; age 1-18 years). Non-contrast chest CT (n = 16), contrast-enhanced chest CT (n = 12), and contrast-enhanced abdomen CT (n = 23) images were included. Standard 50% adaptive statistical iterative reconstruction V (ASIR-V) images were compared to images with 100% ASIR-V and DLR at medium and high strengths. Attenuation, noise, contrast to noise ratio (CNR), and signal to noise (SNR) measurements were performed. Overall image quality, artifacts, and noise were subjectively assessed by two radiologists using a four-point scale (superior, average, suboptimal, and unacceptable). A phantom scan was performed including the dose range of the clinical images used in our study, and the noise power spectrum (NPS) was calculated. Quantitative and qualitative parameters were compared using repeated-measures analysis of variance (ANOVA) with Bonferroni correction and Wilcoxon signed-rank tests. Results DLR had better CNR and SNR than 50% ASIR-V in both pediatric chest and abdomen CT images. When compared with 50% ASIR-V, high strength DLR was associated with noise reduction in non-contrast chest CT (33.0%), contrast-enhanced chest CT (39.6%), and contrast-enhanced abdomen CT (38.7%) with increases in CNR at 149.1%, 105.8%, and 53.1% respectively. The subjective assessment of overall image quality and the noise was also better on DLR images (p < 0.001). However, there was no significant difference in artifacts between reconstruction methods. From NPS analysis, DLR methods showed a pattern of reducing the magnitude of noise while maintaining the texture. Conclusion Compared with 50% ASIR-V, DLR improved pediatric body CT images with significant noise reduction. However, artifacts were not improved by DLR, regardless of strength.
引用
收藏
页数:11
相关论文
共 50 条
  • [21] Application of deep learning image reconstruction in low-dose chest CT scan
    Wang, Huang
    Li, Lu-Lu
    Shang, Jin
    Song, Jian
    Liu, Bin
    BRITISH JOURNAL OF RADIOLOGY, 2022, 95 (1133):
  • [22] Deep learning image reconstruction to improve accuracy of iodine quantification and image quality in dual-energy CT of the abdomen: a phantom and clinical study
    Fukutomi, Akiyo
    Sofue, Keitaro
    Ueshima, Eisuke
    Negi, Noriyuki
    Ueno, Yoshiko
    Tsujita, Yushi
    Yabe, Shinji
    Yamaguchi, Takeru
    Shimada, Ryuji
    Kusaka, Akiko
    Hori, Masatoshi
    Murakami, Takamichi
    EUROPEAN RADIOLOGY, 2023, 33 (02) : 1388 - 1399
  • [23] Deep learning image reconstruction to improve accuracy of iodine quantification and image quality in dual-energy CT of the abdomen: a phantom and clinical study
    Akiyo Fukutomi
    Keitaro Sofue
    Eisuke Ueshima
    Noriyuki Negi
    Yoshiko Ueno
    Yushi Tsujita
    Shinji Yabe
    Takeru Yamaguchi
    Ryuji Shimada
    Akiko Kusaka
    Masatoshi Hori
    Takamichi Murakami
    European Radiology, 2023, 33 : 1388 - 1399
  • [24] Deep learning reconstruction for contrast-enhanced CT of the upper abdomen: similar image quality with lower radiation dose in direct comparison with iterative reconstruction
    Nam, Ju Gang
    Hong, Jung Hee
    Kim, Da Som
    Oh, Jiseon
    Goo, Jin Mo
    EUROPEAN RADIOLOGY, 2021, 31 (08) : 5533 - 5543
  • [25] Deep learning reconstruction for contrast-enhanced CT of the upper abdomen: similar image quality with lower radiation dose in direct comparison with iterative reconstruction
    Ju Gang Nam
    Jung Hee Hong
    Da Som Kim
    Jiseon Oh
    Jin Mo Goo
    European Radiology, 2021, 31 : 5533 - 5543
  • [26] Model-based iterative reconstruction in pediatric chest CT: assessment of image quality in a prospective study of children with cystic fibrosis
    Mieville, Frederic A.
    Berteloot, Laureline
    Grandjean, Albane
    Ayestaran, Paul
    Gudinchet, Francois
    Schmidt, Sabine
    Brunelle, Francis
    Bochud, Francois O.
    Verdun, Francis R.
    PEDIATRIC RADIOLOGY, 2013, 43 (05) : 558 - 567
  • [27] Model-based iterative reconstruction in pediatric chest CT: assessment of image quality in a prospective study of children with cystic fibrosis
    Frédéric A. Miéville
    Laureline Berteloot
    Albane Grandjean
    Paul Ayestaran
    François Gudinchet
    Sabine Schmidt
    Francis Brunelle
    François O. Bochud
    Francis R. Verdun
    Pediatric Radiology, 2013, 43 : 558 - 567
  • [28] Blind CT Image Quality Assessment via Deep Learning Framework
    Gao, Qi
    Li, Sui
    Zhu, Manman
    Li, Danyang
    Bian, Zhaoying
    Lyu, Qingwen
    Zeng, Dong
    Ma, Jianhua
    2019 IEEE NUCLEAR SCIENCE SYMPOSIUM AND MEDICAL IMAGING CONFERENCE (NSS/MIC), 2019,
  • [29] Deep Learning Image Reconstruction Algorithm for CCTA: Image Quality Assessment and Clinical Application
    Catapano, Federica
    Lisi, Costanza
    Savini, Giovanni
    Olivieri, Marzia
    Figliozzi, Stefano
    Caracciolo, Alessandra
    Monti, Lorenzo
    Francone, Marco
    JOURNAL OF COMPUTER ASSISTED TOMOGRAPHY, 2024, 48 (02) : 217 - 221
  • [30] Pulmonary emphysema quantification at low dose chest CT using Deep Learning image reconstruction
    Ferri, Fabrice
    Bouzerar, Roger
    Auquier, Marianne
    Vial, Jeremie
    Renard, Cedric
    EUROPEAN JOURNAL OF RADIOLOGY, 2022, 152